Next Article in Journal
Predicting User Behaviour Based on the Level of Interactivity Implemented in Blockchain Technologies in Websites and Used Devices
Previous Article in Journal
Sustainable Development and Canada’s Transitioning Energy Systems
 
 
Font Type:
Arial Georgia Verdana
Font Size:
Aa Aa Aa
Line Spacing:
Column Width:
Background:
Article

The Resilient Community: Strengthening People-Centered Disaster Risk Reduction in the Merapi Volcano Community, Java, Indonesia

by
Yosi S. Mutiarni
1,*,
Hitoshi Nakamura
2 and
Yasmin Bhattacharya
2
1
Graduate School of Engineering and Science, Shibaura Institute of Technology, Saitama 337-8570, Japan
2
Department of Planning, Architecture and Environmental Systems, Shibaura Institute of Technology, Saitama 337-8570, Japan
*
Author to whom correspondence should be addressed.
Sustainability 2022, 14(4), 2215; https://doi.org/10.3390/su14042215
Submission received: 29 December 2021 / Revised: 8 February 2022 / Accepted: 9 February 2022 / Published: 15 February 2022

Abstract

:
Local communities generally play a crucial role during a disaster, so their involvement in pre-disaster capacity development may prove beneficial in the face of a disaster threat. Thus, People-Centered Disaster Risk Reduction (PCDRR) programs could enable communities living in disaster-prone areas to become more resilient. This study examines how relationships among individual attributes of the community (and their pre-event Disaster Risk Reduction (DRR) context (risk knowledge, information access, and network and stakeholders) could give insight into how communities can be transformed to make them more resilient in the case of the Merapi Volcano community. Based on data collected through online survey platform by non-probability sampling, this study uses non-parametric goodness fit tests and parametric regression to assess the dependencies between various indicators and find the predictor variables. The findings indicate that the individual attributes of the Merapi Volcano community, as perceived through the pre-event DRR context has led to a better understanding of the function of people exposure to prepare more people-centered preparedness and disaster mitigation. However, since the sub-variables did not show any significance for being predictors, this implies that, even though there is a significant reliance between the pre-event DRR context and the individual attributes, the individual attribute could be regarded more as a modifier than a predictor.

1. Introduction

Even though resilience theory is widely discussed in different disciplines, its use in the context of disasters, climate change, and development is still relatively new [1]. This paper uses the definition for resilience put forth by the United Nations International Strategy for Disaster Reduction (UNISDR) [2]: “The ability of a system, community, or society exposed to hazards to resist, absorb, accommodate, adapt to, transform and recover from the effects of a hazard in a timely and efficient manner, including through the preservation and restoration of its essential basic structures and functions through risk management”. The concept of resilience is linked to community or social risk in a disaster-prone area. This focuses on ensuring the system’s functioning after a shock [3] and understanding that resilience is a process, rather than an outcome, where the roles of community and society become an essential factor, and these can only be embedded in the society through a disaster risk reduction program. Furthermore, since preparedness is the key to reducing potential risk, it must be done beforehand and be well designed and tailored to the needs of people [1,4].
In recent years, disasters have proved to be enormous obstacles to sustained development and progress and a challenge to the well-being of communities worldwide [5]. In 2020 alone, aside from the COVID-19 pandemic, there were 389 recorded disasters, which resulted in 15,080 deaths, 98.4 million people affected, and an economic loss of at least 171.3 billion USD [6]. A disaster is a combination of technical faults and a failure of social systems made up of technical, social, organizational, and institutional factors [7], primarily induced by human activities [1,4,8].
There are 3 domains to understand risk analysis of disaster in society: the environmental changes and shocks, people’s exposure, and prevention and responses systems. Exploring how people cope with the environmental changes and shocks, depending on their capacity and their vulnerability profile, can aid us in understanding about the human side of disaster research [9]. Such exploration could consider a communities’ perception, socio-economic enablement, information, communication, expectation, risk culture, age, gender, and other forms of social differentiation [9]. These social differentiations can lead to a variable range of vulnerability levels, both at individual and community levels. For example, different gender and age groups will face different difficulties and need different emergency aid during an emergency.
As people’s decisions and behaviors at pre-event, during, and post-event situations can dramatically affect the impacts, vulnerability, recovery time, and resilience of individuals and communities [10,11], it is essential for local community living near the hazard to be aware about their risks [12,13]. This belief aligns with the evolution of DRR thinking and policy that has begun to foster public engagement, social capacity, community participation, and individual responsibility [10]. These people-centered approaches are based on the assumption that involving people in risk decisions empowers them, encourages ownership, responsibility, and participation [12,14]. However, convincing individuals to embark on activities that would reduce their vulnerability to natural hazards is difficult, especially in communities that have not recently experienced the impact of natural hazards [13]. In addition to this, there are community who do not want participate in the preparedness activities because they think that they cannot influence the natural process impact, such as a natural hazard [15]. At this point, it is necessary to help the community understand that they could intervene this condition: they can reduce the risk, as well as recover faster and better even after disaster strikes.
Although realizing that an assessment of people’s exposure in the context of disaster risk is essential for local community, assessments are often conducted in the post-disaster context. Considering that DRR is a continuous learning process [16,17,18,19,20,21,22], as well as the importance of reflective responses to deal with more complex and uncertain risks [23], it is essential to see the relationship between people’s exposure and their social attributes in the pre-event context especially in communities which have experienced past disasters. This can facilitate the formulation of more people-centered DRR programs. For example, a program for families with children in primary and secondary school age, or for those with vulnerable family members (children, parents, vulnerable women, and people with disabilities). Consideration of such people-centered approaches to strengthen community disaster resilience can allow to understand how demographic factors can influence the necessary actions at every stage of disaster response at each of the respective levels of the individual, household, and community [3,24,25]. In this regard, several indicators are commonly used to measure the people’s exposure to disaster in society, such as: (1) household structure (household headship, marital status, and type of family); (2) socio-economic status (income, wealth, political power, and education); (3) gender; (4) race and ethnicity; (5) age; (6) tenure; (7) urban or rural; (8) special needs population; (9) employment status; and (10) time spent living in the neighborhood [3,9,24].
The reports and studies on the experiences of the 2010 Merapi Volcano eruption a suggest that individuals’ social profiles determine how they think about the Merapi Volcano [26]. This research tries to understand this point further and explores how the Merapi community understand risk, either through their own experiences with Merapi eruption in 2010, and/or due to the DRR programs held, and contribute towards providing a longitudinal and reflective study from the past. To recommend designing a more people-centered DRR program for the community, this study attempts to reflect the community’s performance through individual attributes of the community (i.e., demographic profile) and pre-event DRR aspects (risk knowledge, information access, and network and stakeholders). This research hypothesizes that different individuals in the community, as indicated by their attributes, understand the disaster risk, access the risk information, and network and stakeholders, to prepare for the possibility of more complex and uncertain disaster risk in the future. This research attempted to investigate which community capability may be able to influence a shift in the approach to living with natural hazards.

2. Study Area

Merapi Volcano (Figure 1) is home to around 1.6 million people, located 25 km north of urban Yogyakarta, Indonesia, [27,28,29,30,31]. Merapi, one of the many stratovolcanoes in Indonesia, has an altitude of 2980 m and has erupted at least 80 times since 1768, the most significant of which (Volcanic Explosivity Index–VEI ≥ 3) were in 1768, 1822, 1849, 1872, 1930–1931, 2010, 2014, and 2018 [32,33]. The earlier eruptions had higher VEIs, but the 20th century eruptions were more frequent [32]. In 2010, there was a large scale explosion of this volcano which caused 367 fatalities, 277 injuries, displaced 410,388 people, 2300 destroyed houses [27], and caused losses of 256.4 million USD [34]. Prior to the 2010 eruption, the people of Merapi depended on nature for their livelihoods: land and rivers, namely the agricultural sector, mining, and community services. After the 2010 eruption, however, different economic sectors emerged, such as trade, restaurants, lodging, and tourism services sectors [26,35,36,37]. The Merapi community was involved in the tourism sector before the 2010 eruption, through concepts, such as the development of community-based tourism as an eco-tourism village, but other activities, such as a lava tour, have also emerged after the eruption 2010 [38].
The zoning system on volcanic risk in Indonesia is instrumental in influencing the level of vulnerability, especially in the case of evacuation during an emergency. There are two zoning on volcanic risk, (1) Spatial zoning which consists of three different levels on the disaster-prone area (DPA): (Disaster Prone Area Zone I (lowest risk), II, and III (highest risk)), as well as (2) time zoning which consist of 4 stages based on the volcano activities: normal active (base), attention (advisory), pre-alarm (watch), and alarm (warning) [26,36,39]. At the 2010 eruption, although this risk zoning system was implemented, the disaster-prone area zone had changed due to changes in the character of Merapi’s activities suddenly. The public were not aware of the changes due to the limited information channels and lack of preparation for emergency conditions at the time, with the effect of which was compounded due to a larger scale of eruption compared to the past [26]. As a result, the pyroclastic flows of up to 13 km from the Merapi’s crater on the 2010 eruption forced people living in a radius of 17–20 km to evacuate. Therefore, this study was conducted in an area within a 20 km radius of the Merapi Volcano (Figure 1). The south area of the volcano has shown rapid urban growth [40], which has influenced the emergence of secondary urban areas, such as Pakem and Tempel, located less than 20 km from Merapi (see A and B in Figure 1).
The DRR program at Merapi is undergoing development and consolidation. Each phase of the disaster management cycle has a corresponding program, as stated in the DRR strategy, such as risk assessment programs, spatial planning reviews, disaster preparedness schools (currently called School Safe Learning (SSL)–Satuan Pendidikan Aman Bencana), Disaster Preparedness Village (DPV), Disaster Resilient Villages (DRV), and River Schools, strengthening the infrastructure sector, strengthening the economic sector. These have been carried out at various levels from provinces to village, through Disaster Management Mandatory Training (DMMT) [39].
Aside from this, several networks and community-based activities have been implemented through Merapi communities, such as the implementation of a sister village, sister school, community-based risk reduction forum (PASAG Merapi), and community-based communication network (JALIN Merapi) [26]. These programs and networks were developed before the 2010 eruption since the communities experienced several recurrent disaster events. For example, the risk reduction forum (PASAG Merapi), was founded after the 1994 eruption.
A decade after a catastrophic volcanic eruption in 2010, the Merapi Volcano community in Java, Indonesia, has been living with a high possibility of recurrent volcanic hazards. On 5 November 2020, the level of volcanic activities of the volcano was raised [41], and, since then, there have been 16 eruptions [42,43], where 836 people from vulnerable group have had to be evacuated [42]. With the geodynamics of volcano being uncertain [44], and the added complexity of the reliance of local communities on the volcanoes, strengthening disaster resilience governance would remain a challenge. Some community members have experienced permanent displacement from their previous neighborhoods because of the 2010 eruption, and some new members from the community have also moved voluntarily after the 2010 eruption due to the urbanization in the south part of Merapi.
Yet, despite the uncertainties surrounding the spatial nature of the next volcanic eruption, due to limited resources, the government has been implementing DMMT as DRR programs only for people living in disaster-prone areas. After the disaster training, the local community who filled the post-training-survey mentioned that they were confused about translating the concept of hazard map into reality [26,45,46,47]. During the 2010 eruption, people were confused when the government evacuation warning was issued based on the proximity (20 km distance) from Merapi, rather than the disaster-prone area identified by the existing hazard map based on the magmatic activity and the volcano morphology. This call had been made to be on the safer side and evacuate more people given that the scale of the 2010 eruption was higher than assumed by the hazard map. However, this resulted in confusion among people who were outside the disaster prone area and considered themselves safe from the risks. This implies that a wider area implementation of DRR programs is necessary to educate the wider community of the risks and prepare for an emergency.
Such awareness would also help the community utilize their networks and cooperate to evacuate themselves and their livestock to their sister villages (a sister village network is a network that connects the villages in Merapi disaster-prone area with buffer villages that are located in the Merapi safe zone [48,49]).

3. Data and Methods

This study used mixed method, using both quantitative research methods (non-parametric and parametric statistics), and the qualitative method

3.1. Survey and Sampling Design

Nonprobability purposive sampling was used in this research to understand Merapi communities’ perspectives on several disaster issues (risk knowledge, information, and DRR program in pre-event). This sampling design helps to explore the phenomena that is happening in the area without generalizing the result for the community. Although this sampling method can lack clarity in the generalizing process and be biased to the population profile [50], it allowed the authors to reach the respondent population for data collection given the specific spatial distribution, time limitation, and several local community procedures for entering the community during the pandemic.
Assuming that Merapi community has a similar land tenure system [51,52,53,54], ethnicity, and race [55], and location in the rural area [26,36,56,57], only seven socio variables of people exposure [3,9,24] are used: gender, age, time spent living in the neighborhood, education, income, daily activity, and household profile (Appendix A Table A1). This survey was conducted among people who either (1) live within 20 km of Merapi, or (2) have experienced the Merapi eruption of 2010, or (3) have been either temporarily or permanently displaced by the 2010 eruption. In addition, the definition of ‘Merapi community’ is taken to be the community living in 20 km proximity from Merapi Volcano. As this research aims to understand the public perception of people’s exposure around Merapi Volcano, this study did not specifically target residents who participated in DMMT who live in all levels of DPAs (see Section 2) since DMMT has been widely conducted in these areas since 2008 [45,46,58]
The survey was conducted using questionnaires through various streams, such as personal social media, public accounts, local influencers, and stakeholders’ networks with whom the researcher previously worked. From a total population of 1.6 million near the Merapi Volcano, this online survey could obtain 215 usable responses through a reach of 476 people who completed an online survey between September and December 2020 on the online survey platform Survey Monkey (Appendix A Table A1, Table 1 and Table 2). Since the online survey cannot ensure the adequate spatial distribution of respondents, nor control who fills the questionnaire, it is acknowledged that the population profile can be biased. However, to reduce the unfit criteria of respondents, we required address information to be filled on the survey. Considering the data saving and the voluntary participation in this research, privacy consent obtained in the online survey provides an explanation on how the data is to be used and saved in the system. With this, the respondents have the choice to fill the survey or not.

3.2. Data Analysis

In this study, the data analysis is conducted in two stages: a non-parametric test and a parametric test (see Figure 2). The non-parametric test was used to see whether the social attributes of the community have dependencies to the implementation and outcome of pre-event DRR context (risk knowledge, information access, and network and stakeholders) in their community. A parametric test was used to see if the individual sub-variables could become the predictor of implementation and outcome of DRR programs based on the significant result from the non-parametric test (the goodness-of-fit test)

3.2.1. Tools

IBM SPSS Statistics for Windows, version 27, was used in this study [59] to perform the descriptive analysis, calculate goodness-of-fit, and multiple regression. No answer (N/A) data has been omitted for the purpose of the statistical analysis.

3.2.2. Descriptive Analysis

The first analysis stage determined the respondents’ attributes: gender, age group, activity, education, time living in their current neighborhood, and monthly income (Table 2). This portion of the survey was voluntary, and not all respondents completed this section; however, the analysis excluded blanks in these fields.
Observed frequencies were also determined from the answers regarding the perceptions in the Merapi Volcano community to several questions related to the implementation of DRR: risk knowledge, information access, and network and stakeholders: (1) where did the community get their information; (2) what information did they receive; (3) how was the information accessed; (4) what experiences did they have of DRR programs and of what type; (5) what advantages did the DRR program have for preparedness; (6) was there a CBDRM organization in their community; (7) did the DRR programs involve all community groups, including the vulnerable and women; (8) could they give an example of the role of women in the DRR programs in the community; (9) and what were their thoughts on collaborating with external stakeholders for disaster-related issues to provide advantages for preparedness? These variables were mainly processed in nominal data types and used to describe community perceptions for disaster-related issues.
Based on these variables, questions (excluding individual attributes) used for the next stage (goodness-of-fit test) require categorical data, such as yes, no, or maybe. These are question numbers 11,12, 14, 15, 16, 17, and 19, shown in Appendix A Table A1.

3.2.3. The Goodness-of-fit Test

The goodness of fit test assesses whether the observations or responses for one variable are associated with or independent of another [60,61,62,63]. This study used the Pearson chi-square test and the Fisher-Freeman-Halton exact test (FET) for analyzing goodness-of-fit. Chi-Square test is the first dependency test, for which some assumptions should be met [60,61,64]: (1) randomness of the sample, (2) independence between observations in each category; and (3) frequency of at least five for each category. If these assumptions cannot be fulfilled, another statistical model, such as FET, should be used for the goodness-of-fit [65]. Since, in this study, assumption (3) mentioned above could not be fulfilled, FET was conducted.
To conduct these tests, a null hypothesis (H0) that there is no relationship between variables, and an alternative hypothesis (Ha) that there is a relationship between variables, was assumed. For example, in the case of representing the relationship between individual attributes (e.g., individual education level) of the community and information accessibility to Merapi Volcano disaster-related information: H0 is that there is no relationship between the education level and access to the information, while Ha is that there is a relationship between education level and access to the information of Merapi Volcano.
The analysis involved a crosstabulation of the individual attribute and community responses to specific questions (DRR cases). IBM SPSS Statistics 27 crosstabulation and chi-square and FET were used to determine the degree of freedom between the community profile and the Merapi Volcano risk information on a 95% degree of confidence level.
To interpret the test results, p-values were calculated, and significant values asymptotically significant in chi-square or exactly significant in FET were compared with the set level of significance, here, 5%. The p-value can also be used to compare with the chi-square table as the standard [61,66].

3.2.4. Multiple Regression for Predictor-Suitability Analysis

Multiple regression is a statistical technique that can analyze the relationship between a dependent or criterion variable and a set of independent or predictor variables. It allows the prediction of one variable from information drawn from other variables [61,67]. In this study, multiple regression has been used to assess which sub-variables on the individual profile become significant predictors to the DRR program in the community, with a 95% degree of confidence level.

3.3. Survey Result

3.3.1. Individual Attributes Survey Result

The respondent attributes survey indicated that women dominated the group of respondents; most were under 54 years old, had been living in the current neighborhood for more than ten years, had high school or higher education, lived in families with one or more children, were either employed, homemakers, or students, and had income under 210.42 USD/month (see Table 1).

3.3.2. Descriptive Statistics Disaster Risk Reduction

Table 2 shows the descriptive summary results of the questions related to the pre-event activity (mitigation and preparedness) conditions related to risk knowledge, information access, and stakeholders and the network of Merapi Volcano communities. The community agrees that they can access the disaster information, prioritize the vulnerable group during and after the emergency, that women are an essential group in the decision making, and understand that collaboration with external stakeholders gives advantages to community preparedness. However, only a small number of the community (less than 20%) state that they have had the experience of the DRR program in recent times, with 59.5% not sure whether they have experienced it or not. Meanwhile, the community response on awareness of CBDRM organization’s existence remains equally distributed among those who know, do not know, and are not sure (35.5%, 37.2%, and 27.4%, respectively).

4. Result and Analysis

4.1. Local Community: Risk Knowledge and Disaster Information Access

The Merapi Volcano community considers the volcano to be the most significant risk, followed by earthquakes, hydrometeorological hazards (climate change and floods), and pandemics, such as COVID-19 (Appendix B Table A2), which is similar to the result from DMMT post-survey that the local community understand Merapi as source of threat [46].
In regard to risk information, most respondents stated that they felt well supplied with information about the Merapi Volcano (63.7%), with 23.7% feeling somewhat unsure (Table 2). The primary sources of information were the mass media and online social media, chat apps, such as WhatsApp, and conservative media sources, such as TV, news portals (online and offline), and radio (Appendix B Table A3). In addition, around 50% of respondents indicated that the Disaster Management Agency (DMA) was their source of information, with the least accessed disaster information coming from schools and insurance companies. The local community in Merapi tended to access the information from trusted sources, such as the local DMA, research center, or local government.
The survey results show the types of information that respondents frequently accessed. The top two are focused on knowledge information regarding the Merapi Volcano status (see HI code on Table 3). The second most accessed type of information dealt with procedures associated with evacuations, and the least accessed knowledge was of folklore and traditional knowledge related to Merapi. Similar to this, a DMMT post-survey also mentioned that the early warning mechanisms are known to more than 70% of the community, while knowledge of the hazard map and risk understanding is only known to 45% [46].
At Merapi, people have experienced recurrent volcanic disasters because of which they acknowledge the risk information provided by the authorities, especially in the context of zoning risk (DPA) to some extent. However, since the perceived risk of the Merapi community is said to be influenced by the three factors of risk knowledge and information, socio-economic, and cultural setting, as explained in Lavigne et al. [37] and Saragih et al. [26], people sometimes ignore the recommendations from the government. People of Merapi understand that eruption is part of a culture, and they perceive eruption as a ‘normal’ event and do not fear it [26,36,37] but, rather, embrace the volcano activity as their part of daily life. This belief resulted in the large casualties of 2010 eruption, as there were people who continued to stay in their neighborhood and rejected the evacuation, even after the evacuation command had been given by the government [26].
The degree of freedom test (Table 4) revealed mixed results: H0 asserted no relationship between individual attributes and access to disaster information, and Ha asserted a relationship between their attributes and access to disaster information. The only variable with a significant value was education; all others (sex, age group, duration of stay, monthly income, daily activity, and household type) showed no significant values. This means that there was no relationship between reliable access to disaster-related information and individuals’ attributes in this community. Members of the community felt that they could easily access Merapi disaster information and performed this action collectively. In addition, following the 2010 eruption, the communities kept tabs on the information related to the Merapi Volcano themselves [68].
The significance of the education variable, indicating an association between education in the population and information accessibility, should be further considered, since there is difference in the percentage profile between the respondents who fill this survey based on their education (primary 12.6%, secondary: 38.1%, and tertiary: 47%) compared to population (never going to school/not graduated from primary: 27.87%, primary: 18.63%, secondary: 42.73%, tertiary: 10.77%) [69,70,71,72,73,74,75,76]. There is a possibility that people with different levels of education would understand the disaster-related information differently due to differences in their comprehension capacity. Thus, there is a possibility that a population with a given education level would require a specific type of communication design to assist their understanding of risk and disaster information.

4.2. Community DRR Program Experience

Respondents were asked whether they had ever participated in a DRR program and the type of programs they felt were most suitable. The results show (Table 5) that disaster-related simulations and training were frequently conducted, but participating in disaster social insurance had the least number of responses.
The crosstabulation of gender and involvement in DRR programs in their communities confirmed the existence of a strong gender bias in DRR participation. The survey results indicated that 75.6% of women had never participated in a DRR program, disaster drills, nor simulations in their community (Appendix C Table A4). However, a post-survey of DMMT participants shows that 42% of women participated in the DMMT program [46]. To some extent, though, both studies show that some women had also taken part in the DRR program in the pre-event context.
Similar to the previous results of the gender variable, among the variables tested, only the duration of stay in the neighborhood showed significant relation to experience with and participation in a DRR program (Table 6, Appendix D Table A6 and Table A7). This relates to the differences in experience between those who had been in their neighborhood for more than 30 years and those who had lived there for less than ten years. These differences could relate to further differences in perception where people who experience recurring exposure may either be more prepared or normalize the threat completely, decreasing their preparedness level in exchange for easier access to livelihood sources [77]. Such a case is evident among the communities in Merapi, where people tend to live in their neighborhoods that ignore the risk zoning system for easier access to livelihood sources. No significant result was found among age, education, monthly income, household type, and DRR program experience, indicating that people from all backgrounds attended the programs (Table 6, Appendix D Table A6 and Table A7).
The survey results indicate that most respondents (84.1%) felt that the current DRR program helped them have better hazard preparedness (Table 2). Only the people activity variable was significant (Table 6, Appendix D Table A6 and Table A7), indicating that the respondents’ occupational status led to differing perceptions of the DRR programs. Since occupation can be related to the access to resources, such as financial and social networks, this could explain different perceived risk of the people as individuals or as a collective. However, no significant result to DRR program perceptions was found for gender, age, time living in the neighborhood, education, monthly income, nor household type.

4.3. Community-based Disaster Risk Management (CBDRM), Community Roles, Networks, and Collaboration

The local community’s perceptions of the DRR program benefits were elicited with the use of several questions which considered their understanding of the current DRR programs, their impression of a community organization focused on disaster risk management, and the involvement of vulnerable groups and women in disaster-related issues (Table 7, Appendix D Table A8, Table A9, Table A10 and Table A11).
The responses regarding DRR specialist community organizations were as follows: 35.3% thought there was a particular DRR organization, 37.2% thought there was no such organization, and the remainder (27.4%) were unsure (Table 2), which indicated that the CBDRM organization was little known in the community. The only variable that showed the relationship between the existence of the CBDRM organization and the community profile was occupation type (Table 7, Appendix D Table A8, Table A9, Table A10 and Table A11). This is related to individuals’ networks during their day-to-day activities. For example, the same understanding might circulate among a circle of students who share activities.
Around two-thirds of respondents said that their community prioritized vulnerable groups, such as the elderly, children, disabled persons, and pregnant women (Table 2), and there was a significant relationship found to education. Other variables, such as sex, age, duration of stay, monthly income, activity, and household type, were insignificant in prioritizing the vulnerable group during emergencies and post-disaster. This indicates that there was no relationship between the variables. However, the Merapi Volcano community prioritized this group after being exposed to the 2010 eruption [68]. When designing the contingency plan of Merapi Eruption, it is mandatory to assess the vulnerable group in the disaster-prone area and secure them during the emergency. In addition to this, the standard operation procedure (SOP) recommends the vulnerable group to be evacuated on the scale of volcanic activity level III, earlier than the other community members [78,79].
There were no significant relationships between the various individual attributes with the questions of the involvement of women’s in DRR programs. This means that the community see that the women took part in DRR activities in the community equally compared to men and see that their role is important (Appendix C Table A4). Women at Merapi community have roles related family wellbeing, such as logistics supply management, children education, psychological, and community’s wellbeing management (Appendix C Table A5). In addition, the community has been practically involved in social insurance managed by the community which only can be used during disaster emergency. This insurance is used when the disaster aid has not yet been received by the community. One women’s group in Magelang, on the west side of Merapi (Nanggrung, Kamongan Village), conducted a Women Welfare Association activity to build awareness for emergencies called nyapu dan nabung (sweeping and saving). Every week, they hold a village clean-up movement, during which time they collect money from each member as social insurance for crisis conditions [80].
Then, to comprehensively understand risk communication and DRR program effects in the Merapi community, respondents were also asked about the local community’s ability to collaborate with outsiders, such as NGOs/NPOs, universities, governments, and volunteers. The results (Appendix D Table A11) indicated that the community respondents agreed that collaboration could better prepare their communities to face risks.

4.4. Predictive Models of Sub-Variables of Individual Profile and DRR Programs

Multiple regression was carried out to investigate whether each sub-variables on the community’s individual profile could predict certain dependent variables. This predictive uses the significant result from the goodness fit test (see Section 4.1, Section 4.2 and Section 4.3) and uses the sub-variables on the individual profile of the community to do the predictors test (Table 8, Appendix E Table A12, Table A13, Table A14, Table A15, Table A16 and Table A17). Using multiple regression analysis on SPSS from IBM, there are six models of this predictor test:
  • Model 1: education level: primary (X1), secondary (X2), and tertiary (X3) to predict the perception of disaster information accessibility scores.
  • Model 2: each gender (male (X1) and female (X2)) to predict the experience of DRR programs.
  • Model 3: duration of staying in the neighborhood (≤10 (X1), 10–≤30 (X2), >30 (X3) years) to predict the experience of DRR programs.
  • Model 4: people’s type of occupation (worker and homemaker–activity type 1 (X1), unemployed and retired–activity type 2 (X2), and students–activity type 3 (X3)) to predict their perception of the advantages of DRR programs for disaster preparedness.
  • Model 5: whether a type of occupation (worker and homemaker–activity type 1 (X1), unemployed and retired–activity type 2 (X2), and students–activity type 3 (X3)) to predict the value of their awareness of CBDRM existence in their neighborhood.
  • Model 6: education level (primary (X1), secondary (X2), and tertiary (X3)) to predict perceptions of the inclusive process during the disaster.
According to model (1), (2), and (3), the predictive test could not show which individual sub-variables is the predictor (Table 8, Appendix E Table A12, Table A13, Table A14, Table A15, Table A16 and Table A17). Model (1) shows that every level in education could access disaster risk information at the same level of easiness. In regard to the DRR program experiences, the results indicate that people at Merapi Volcano could experience the program regardless of their attributes, including gender and the length of time living in a place.
On the other hand, models (4), (5), and (6) could show which sub-variables could be the predictors (Table 8, Appendix E Table A12, Table A13, Table A14, Table A15, Table A16 and Table A17). Model (4) indicates that the group of workers and homemakers significantly contributed as the predictors to perception to advantages of the DRR program to disaster preparedness. However, in model (5), aside from the worker and homemaker group, the student’s group could predict the CBDRM awareness in the Merapi Volcano community. The results from models (4) and (5) could indicate that these groups could contribute to the DRR in the pre-event context because of their access to resources, such as livelihood, which livelihood sustainability is one of the critical aspects of people-centered DRR planning [4]. For the students, who were significant predictors for CBDRM awareness, it may be that the youth organization and similar network systems could be beneficial for DRR programs due to their access to information and resources to prepare for possible disasters. Based on model (6), two sub-variables significantly contribute to the inclusive process of the DRR program: those with primary education and those with secondary education. These predictors could predict the perception of inclusive planning on disaster risk reduction model, both in negative and positive contribution. Furthermore, the education level represents the community’s accessibility to knowledge and information that might assist in recognizing risk and improve network reach.

5. Discussion

This study found that the Merapi Volcano community had varied responses to several indicators related to the relationship between individual attributes of community members related to risk knowledge and information, capacity building activities, and awareness of community-based DRR organization, roles, and network. Regarding risk knowledge and information, accessibility shows that people with different education levels could access the disaster risk information equally, and that the community understands that Merapi has volcano risk. This result contradicts the findings of other research that have found a higher level of formal education to contribute towards a higher level of risk knowledge [81]. However, on the other hand, another research study stated that education does not significantly contribute to the different perceived risks of the community [82,83]. These contradictive statements could be due to several factors: (1) the current respondent group has not represented the population at large (another sample is needed), or (2) there is adequate risk communication within this community (which could be due to the variety in risk communication mediums and content design or due to the frequency of information accessed by the community).
This shows that there is a lack of clarity of the risk knowledge and a complex relationship between the individual attributes and the DRR indicators in this community. Even though, after the eruption of 2010, risk awareness of Merapi Volcano has increased significantly within the community [26,47,68], this study finds that further action is needed for designing people-centered DRR planning in order to strengthen community resilience. The findings indicate that the local community plays an essential role based on their attributes not as primary predictors, but as modifiers. Modifier here is defined as the variables that could change the size of the relationship of control variables, both as static and dynamic modifier [84]. In this research, the modifiers are the individual attributes, which could diversify how the local community perceives risk or could improve the extent of understanding of risk. For example, people who participate in different activities in Merapi have significant dependencies to the DRR activities. However, group based on sub-criteria of activities for their influence on DRR activities could not be measured, possibly because people in Merapi tend to act on collective action at the neighborhood scale, rather than on individual level. This result indicates that the individual attribute could influence the disaster risk reduction program on the community, both as a static and dynamic modifier. This finding supports a similar conclusion that individual attributes of the local community living in the disaster-prone area play a key role in comprehending the dynamic on disaster governance. [9,15,77,82,83].
The result that people in Merapi participated in the DRR program, and had changes in their risk perception after the 2010 eruption, implies that 2010 eruption became a catalyst of transformation for the community and the disaster governance. Aligned with this result, Thomalla et al. mentioned that understanding risk knowledge could help design better intervention to achieve more transformative DRR that is more proactive and agile to the changes [85]. In addition to this, the equal access to disaster risk information, equal participation of women, and equal consideration of vulnerable groups in guideline, policy, and practice, indicate that the disaster governance in Merapi tries to be inclusive in their approach. This approach could be taken a step further [15,85] to accommodate people’s choice to engage in this process [86], rather than restricting it to established disaster-prone areas.
Volcanic eruption which is already difficult to predict because of its geodynamics, has become worse and frequent due to the combined effect of climate change and unplanned developments. This can cause multi-hazard situations and increase the complexity and uncertainty involved in disasters. This study indicates the need for tailor-made activities to support community resilience planning to ensure resiliency in such uncertain situations following a disaster [87]. For example, preparation of different content design and risk information for different age groups and revising the model of DMMT from a community-based disaster risk reduction organization to a more family or neighborhood level oriented organization could allow the program to reach the wider community members and ensure a more multisectoral approach.

6. Conclusions

This study considers the needs of people-centered DRR program design and indicates that understanding people’s exposure could help to strengthen community disaster resilience so that the community has the ability to prepare, respond, and recover after a disaster. It indicates that the level of formal education and gender is not an issue in accessing risk information or for joining DRR program in the community, as shown by the analysis. However, in the context of DRR program, social learning for disaster risk awareness is a crucial factor when designing inclusive DRR programs for the community, which was indicated by the lack of people’s awareness of DMMT and the existence of CBDRM. This learning process could be institutionally embedded as part of the curriculum in formal education (structured curriculum in school) and non-formal education (structured curriculum outside of school), as well as in the informal learning process (unstructured everywhere) [88] in the community (such as through CBDRM), on a smaller scale, such as family or neighborhood scale. Similarly, the study also indicates that people’s daily activities (e.g., occupation) additionally drive the differences present in the perspectives on the organization and networks, the importance of disaster preparedness, and CBDRM organization. Thus, it can be concluded that understanding how the community sees the disaster risk could help to transform their way of living with a recurrent natural hazard.
Further study is needed to see how individual roles and contribution of the local community work in each DRR management cycle to understand which individual attributes work as static modifiers or dynamic modifiers to be able to design a more people centered DRR program for strengthening the community resilience.

Author Contributions

Y.S.M. conducted the data collection, developed the methodology, analysis of results, drafted manuscript and finalized it. H.N. supervised the entire study, provided suggestions on the draft manuscript, and conducted proofreading. Y.B. provided suggestions and review on the draft manuscript and conducted proofreading. All authors have read and agreed to the published version of the manuscript.

Funding

This research received no external funding.

Institutional Review Board Statement

Ethical review and approval were waived for this study, due to the fact that this research design has discussed the perspective/opinion of the members of the community as applied research activity without any intervention to their individual action/behavior, and this research is not about the respondents themselves. This research focused on the policy or programs in their community.

Informed Consent Statement

Informed consent was obtained from all subjects involved in the study.

Data Availability Statement

The data presented in this study are available on request.

Acknowledgments

We would like to thank all the respondents in Merapi Volcano communities who filled the online survey amidst the difficult times of the pandemic.

Conflicts of Interest

The authors declare no conflict of interest.

Appendix A

Online Survey Question List
Table A1. Online survey question list.
Table A1. Online survey question list.
QuestionsPrograms
A. Individual attributes as community members
1.Sex (Gender)(1) Female; (2) Male; (3) Not Stated
2.Age (years)(1) Less than 18; (2) 18–19; (3) 20–24; (4) 25–29; (5) 30–34; (6) 35–39; (7) 40–44; (8) 45–49; (9) 50–54, (10) 55–59; (11) 60–64; (12) 65–69; (13) More than 70
3.Duration of stay in neighborhood (years)(1) <1; (2) 1–3; (3) 3–5; (4) 5–10; (5) 10–15; (6) 15–20; (7) 20–25; (8) 25–30; (9) 30–35; (10) >35
4.Education(1) No education qualification; (2) Elementary School; (3) Junior HS; (4) Senior HS; (5) Professional Certificate/Diploma; (6) University Undergraduate; (7) University postgraduate (Master, Doctoral); (8) Others
5.Monthly income (Million IDR) (1) Do not have fixed monthly income; (2) <3; (3) 3–5; (4) 5–8; (5) 8–10; (6) 10–15; (7) 15–25; (8) 25–35; (9) 35–45; (10) >45
6.Daily activity(1) Employed; (2) Unemployed; (3) Retired; (4) Homemaker (including Housewife); (5) Student; (6) Entrepreneur
7.Household profile(1) Single person HH; (2) Couple without child; (3) Single parent with one child or more; (4) Parents with one child or more; (5) Others
B. Risk knowledge and information
8.What is the possibility that the following hazards could affect life: (1) Hydrometeorological hazard; (2) Earthquake; (3) Volcanic Eruption; (4) Flood; (5) Landslide; (6) Drought; (7) Climate change; (8) Work accident; (9) Household accident; (10) Pandemic; (11) Traffic accident; (12) Crime; (13) Infrastructure failure; (14) Recreational hazard(1) Never; (2) Rarely; (3) Neutral; (4) Possible; (5) Highly Possible
9.Source of information(1) TV; (2) social media; (3) Friends and family; (4) Internet (website); (5) News portal; (6) Local DMA; (7) National DMA; (8) Radio; (9) Community meeting; (10) Local government (aside local DMA); (11) DRR community (12) Workplace; (13) Printed information (billboard, brochure, etc.); (14) Emergency service; (15) School; (16) Insurance company; (17) Others
10.Type of disaster accessed information(1) Recent and updated information of Merapi Volcano; (2) Knowledge about volcanic hazard; (3) Evacuation and emergencies procedure; (4) Evacuation shelter; (5) Evacuation route; (6) EWS—early warning system; (7) Time for evacuation; (8) CBDRM—community-based disaster risk management; (9) Contact and network communication during emergencies; (10) Disaster drill and simulation; (11) Live guidelines in the temporary shelters; (12) Organization of disaster emergency response; (13) Others
11.The accessibility of disaster information(1) Yes; (2) Maybe; (3) No; (4) Do not know
C. Capacity building and future perspective
12.Experience of DRR programs(1) Yes; (2) No; (3) Do not know
13DRR programs participated in(1) Disaster contingency plan making; (2) Disaster training and workshop (3) Disaster drill and simulation; (4) Community disaster camp (school or volunteer); (5) Making community emergency SOP—standard operational procedures; (6) Contributing into disaster evacuation route making and implementation; (7) Building another structural mitigation; (8) DRR campaign, fair, and feast; (9) Community meeting; (10) Livelihood based tourism on disaster-prone area training and capacity building; (11) Livestock management during an emergency; (12) Participating into social insurance for disaster emergency
14.Advantages of DRR program for preparing the community for a possible threat(1) Yes; (2) Maybe; (3) No; (4) Do not know
D. Organization, roles, and network
15.Awareness of CBDRM organization in their neighborhood(1) Yes; (2) No; (3) Do not know
16.Prioritizing the vulnerable group during and after the emergency(1) Yes; (2) No; (3) Do not know
17.The importance of women group on the decision making and DRR (1) Yes; (2) No; (3) Maybe
18.Example of women roles in DRR program(1) Evacuation shelter and routes planning; (2) Well-being management in the shelter (e.g., sanitation availability, cleanliness, health facilities, etc.); (3) The psychological condition of refugees; (4) Children education during the emergency; (5) Logistics and necessities (management) during emergencies; (6) Others
19.Perception that collaborating with external stakeholders would give advantages for community preparedness(1) Yes; (2) No; (3) Maybe

Appendix B

Local Community: Risk Knowledge and Disaster Information Access
Table A2. Respondents’ perceptions of hazard occurrence possibilities.
Table A2. Respondents’ perceptions of hazard occurrence possibilities.
HazardsNeverRarelyNeutralPossibleHighly PossibleTotalWeighted Average
Volcanic Eruption0.81%5.66%4.04%30.19%59.30%3714.42
Earthquake1.35%12.13%1.08%43.94%41.51%3714.12
Hydrometeorological Hazard2.70%14.29%3.50%46.36%33.15%3713.93
Pandemic4.31%11.32%5.12%48.52%30.73%3713.90
Climate Change0.81%12.67%12.67%48.79%25.07%3713.85
Traffic Accident1.89%16.44%8.89%48.25%24.53%3713.77
Infrastructure failure3.50%19.68%10.51%45.55%20.75%3713.60
Recreational hazard5.66%15.63%13.21%47.17%18.33%3713.57
Crime6.47%19.68%10.24%42.59%21.02%3713.52
Work Accident5.12%25.88%9.16%39.08%20.75%3713.44
Household Accident4.04%28.03%11.32%40.43%16.17%3713.37
Flood16.71%19.95%9.43%28.03%25.88%3713.26
Drought11.32%23.45%10.24%43.67%11.32%3713.20
Landslide25.34%28.30%8.63%24.80%12.94%3712.72
Table A3. Source of disaster risk information.
Table A3. Source of disaster risk information.
Source of InformationResponses
TV91.16%268
Social Media87.76%258
Friends or Family78.91%232
Internet (website)73.81%217
News Portal66.33%195
Local DMA57.82%170
National DMA56.46%166
Radio56.12%165
Community Meeting51.02%150
Local Government (aside Local DMA)42.52%125
DRR Community40.82%120
Workplace38.78%114
Printed Information (Billboard, Brochure, etc.)37.07%109
Emergency Service37.07%109
School33.67%99
Insurance Company5.10%15
Others 13
Total Respondents 294

Appendix C

Community-based Disaster Risk Management (CBDRM), Community Roles, Networks, and Collaboration
Table A4. Crosstabulation of gender and experience of participating in the Disaster Risk Reduction (DRR) program.
Table A4. Crosstabulation of gender and experience of participating in the Disaster Risk Reduction (DRR) program.
SexTotal
WomanMan
YesCount17a21b38
Expected Count23.114.938.0
%44.7%55.3%100.0%
NoCount31a10b41
Expected Count24.916.141.0
%75.6%24.4%100.0%
TotalCount483179
Expected Count48.031.079.0
% 60.8%39.2%100.0%
Each subscript letter denotes a subset of sex categories whose column proportions do not differ significantly from each other at the 0.05 level.
Table A5. Activities of women involvement in the Disaster Risk Reduction (DRR) Program.
Table A5. Activities of women involvement in the Disaster Risk Reduction (DRR) Program.
ActivitiesResponses
Logistics and necessities (management) during emergency situations90.1%136
Children education during the emergency70.2%106
The psychological condition of refugees57.6%87
Wellbeing management in shelter (e.g., sanitation availability, cleanliness, health facilities, etc.)53.0%80
Evacuation shelter and routes planning27.8%42
Others11.9%18
Total Respondents 151

Appendix D

The Goodness of Fit Test
Table A6. Degree of freedom test between the individual attributes and the experiences of DRR programs.
Table A6. Degree of freedom test between the individual attributes and the experiences of DRR programs.
VariablesnValuedfAsymptotic Significance (2-Sided)Exact Sig.
(2-Sided)
Test
Sex797.88410.0050.006Chi-square
Age group775.009 0.079Fisher’s exact test
Duration of staying in the neighborhood789.98320.0070.007Chi-square
Education782.850 0.419Fisher’s exact test
Monthly income716.03930.1100.112Chi-square
Activity781.923 0.448Fisher’s exact test
Household types691.993 0.474Fisher’s exact test
Table A7. Degrees of freedom test between the individual attributes and advantages of the DRR program for preparedness.
Table A7. Degrees of freedom test between the individual attributes and advantages of the DRR program for preparedness.
VariablesnValuedfAsymptotic Significance (2-Sided)Exact Sig.
(2-Sided)
Test
Sex463.06710.0800.187Chi-square *
Age group441.747 0.538Fisher’s exact test
Duration of staying in the neighborhood450.851 0.853Fisher’s exact test
Education451.853 0.621Fisher’s exact test
Monthly income441.231 0.867Fisher’s exact test
Activity468.711 0.014Fisher’s exact test
Household types411.589 0.616Fisher’s exact test
* Count in 2 × 2 table.
Table A8. Degree of freedom test between the individual attributes and the existence of a community-based disaster risk management (CBDRM) organization.
Table A8. Degree of freedom test between the individual attributes and the existence of a community-based disaster risk management (CBDRM) organization.
VariablesnValuedfAsymptotic Significance (2-Sided)Exact Sig.
(2-Sided)
Test
Sex1551.03410.3090.323Chi-square
Age group1521.93620.3800.393Chi-square
Duration of staying in the neighborhood1530.05220.9740.979Chi-square
Education1534.43930.2180.222Chi-square
Monthly income1402.91130.4060.411Chi-square
Activity1547.78020.0200.018Chi-square
Household types1292.935 0.258Fisher’s exact test
Table A9. Degree of freedom test between the individual attributes and prioritizing vulnerable groups during disaster emergencies.
Table A9. Degree of freedom test between the individual attributes and prioritizing vulnerable groups during disaster emergencies.
VariablesnValuedfAsymptotic Significance (2-Sided)Exact Sig.
(2-Sided)
Test
Sex2000.11010.7410.747Chi-square
Age group1951.93920.3790.414Chi-square
Duration of staying in the neighborhood1982.58020.2750.276Chi-square
Education1968.05130.0450.044Chi-square
Monthly income1756.72730.0810.081Chi-square
Activity1980.63920.7270.739Chi-square
Household types1624.050 0.120Fisher’s exact test
Table A10. Degree of freedom test between the individual attributes and women’s involvement in disaster and risk management.
Table A10. Degree of freedom test between the individual attributes and women’s involvement in disaster and risk management.
VariablesnValuedfAsymptotic Significance (2-Sided)Exact Sig.
(2-Sided)
Test
Sex1870.99610.3180.361Chi-square *
Age group1824.77120.0920.091Chi-square
Duration of staying in the neighborhood1853.88220.1440.140Chi-square
Education1826.26130.1000.101Chi-square
Monthly income1622.73330.4350.442Chi-square
Activity1862.17920.3360.352Chi-square
Household types1523.252 0.208Fisher’s exact test
* Count in 2 × 2 table.
Table A11. Degree of freedom test between the individual attributes and the impact of collaboration on disaster preparedness and community resilience.
Table A11. Degree of freedom test between the individual attributes and the impact of collaboration on disaster preparedness and community resilience.
VariablesnValuedfAsymptotic Significance (2-Sided)Exact Sig.
(2-Sided)
Test
Sex2101.82610.1770.186Chi-square
Age group2050.21020.9000.924Chi-square
Duration of staying in the neighborhood2080.69220.7080.691Chi-square
Education2051.20920.5460.545Chi-square
Monthly income1841.58030.6640.678Chi-square
Activity2080.76920.6810.687Chi-square
Household types1690.099 1.000Fisher’s exact test

Appendix E

Multiple Regression Analysis
Table A12. Multiple regression result for predictive analysis: education level: primary, secondary, and tertiary significantly predicted perception of disaster information accessibility.
Table A12. Multiple regression result for predictive analysis: education level: primary, secondary, and tertiary significantly predicted perception of disaster information accessibility.
VariablesUnstandardized BCoefficients
SE
Standardized Coefficients Beta (β)tp
(Constant)1.8000.420 4.2900.000
Primary−0.1330.457−0.047−0.2920.771
Secondary−0.2760.432−0.143−0.6380.524
Tertiary−0.0530.430−0.028−0.1220.903
Constant = 1.800, F(3, 209) = 0.891, p = 0.447, R = 0.112, R2 = 0.013.
The final predictive model was:
Disaster information accessibility = 1.800 + (−0.133 × primary education) + (−0.276 × secondary education) + (−0.053 × tertiary education)
Table A13. Multiple regression result for predictive analysis: each gender (male and female) could significantly predict the experience of DRR programs.
Table A13. Multiple regression result for predictive analysis: each gender (male and female) could significantly predict the experience of DRR programs.
VariablesUnstandardized BCoefficients
SE
Standardized Coefficients Beta (β)tp
(Constant)1.7450.088 19.8780.000
Sex Male0.0050.1210.0040.0440.965
Sex Female−0.2300.134−0.168−1.7150.089
Constant = 1.745, F (2, 131) = 1.943, p = 0.147, R = 0.170, R2 = 0.029.
The final predictive model was:
DRR program experience = 1.745 + (0.005 × male) + (−0.230 × female).
Table A14. Multiple regression result for predictive analysis: duration of staying in the neighborhood (≤10, 10–≤30, >30 years) could significantly predict the experience of DRR programs.
Table A14. Multiple regression result for predictive analysis: duration of staying in the neighborhood (≤10, 10–≤30, >30 years) could significantly predict the experience of DRR programs.
VariablesUnstandardized BCoefficients
SE
Standardized Coefficients Beta (β)tp
(Constant)1.6950.056 30.1080.000
Duration of stay 1 (≤10 years)−0.0280.358−0.007−0.0790.937
Duration of stay 2 (10–≤30 years)−0.1950.256−0.067−0.7620.448
Duration of stay 3 (>30 years)0.0190.2380.0070.0810.935
Constant = 1.695, F (3,130) = 0.199, p = 0.897, R = 0.068, R2 = 0.005.
The final predictive model was:
DRR program experience = 1.695 + (−0.028 × ≤ 10 years) + (−0.195 × 10 – ≤30 years) + (0.019 × >30 years).
Table A15. Multiple regression result for predictive analysis: people’s type of occupation (worker, homemaker, unemployed, retired, and student) could significantly predict their perception of the advantages of DRR programs for disaster preparedness.
Table A15. Multiple regression result for predictive analysis: people’s type of occupation (worker, homemaker, unemployed, retired, and student) could significantly predict their perception of the advantages of DRR programs for disaster preparedness.
VariablesUnstandardized BCoefficients
SE
Standardized Coefficients Beta (β)tp
(Constant)1.9300.144 13.4480.000
Activity 1 (workers and homemakers)−0.7440.203−0.367−3.6660.000
Activity 2 (unemployed and retired)1.0700.6810.1561.5710.120
Activity 3 (students)−0.3100.317−0.097−0.9770.331
Constant = 1.930, F(3, 85) = 6.139, p = 0.001, R = 0.422, R2 = 0.178.
The final predictive model was:
Impact of DRR programs on disaster preparedness = 1.930 + (−0.744 × workers and homemakers) + (1.070 × unemployed and retired) + (−0.310 × students).
Table A16. Multiple regression result for predictive analysis: people’s type of occupation (worker, homemaker, unemployed, retired, and student) could significantly predict the value of their awareness of CBDRM existence in their neighborhood.
Table A16. Multiple regression result for predictive analysis: people’s type of occupation (worker, homemaker, unemployed, retired, and student) could significantly predict the value of their awareness of CBDRM existence in their neighborhood.
VariablesUnstandardized BCoefficientsSEStandardized Coefficients Beta (β)tp
(Constant)1.9880.083 24.0230.000
Activity 1 (workers and homemakers)−0.2070.101−0.134−2.0510.041
Activity 2 (unemployed and retired)0.3460.1930.1081.7910.074
Activity 3 (students)0.1400.0520.1702.7050.007
Constant = 1.978, F (3, 290) = 8.579, p = 0.001, R = 0.286, R2 = 0.082.
The final predictive model was:
Impact of CBDRM awareness = 1.988 + (−0.207 × workers and homemakers) + (0.346 × unemployed and retired) + (0.140 × students).
Table A17. Multiple regression result for predictive analysis: level of education (primary, secondary, and tertiary) could significantly predict the perceptions of the inclusive process during disaster.
Table A17. Multiple regression result for predictive analysis: level of education (primary, secondary, and tertiary) could significantly predict the perceptions of the inclusive process during disaster.
VariablesUnstandardized BCoefficients
SE
Standardized Coefficients Beta (β)tp
(Constant)1.7800.096 18.4900.000
Primary−0.5210.193−0.171−2.6940.007
Secondary−0.2740.136−0.140−2.0220.044
Tertiary−0.0080.130−0.004−0.0630.950
Constant = 1.780, F (3, 289) = 3.835, p = 0.010, R = 0.196, R2 = 0.038.
The final predictive model was:
Inclusive process on disaster management = 1.780 + (−0.521 × primary education) + (−0.274 × secondary education) + (−0.008 × tertiary education).

References

  1. Mochizuki, J.; Keating, A.; Liu, W.; Hochrainer-Stigler, S.; Mechler, R. An Overdue Alignment of Risk and Resilience? A Conceptual Contribution to Community Resilience. Disasters 2018, 42, 361–391. [Google Scholar] [CrossRef] [PubMed]
  2. UNISDR. 2009 UNISDR Terminology on Disaster Risk Reduction; UNISDR: Geneva, Switzerland, 2009. [Google Scholar]
  3. Masterson, J.H.; Peacock, W.G.; Van Zandt, S.S.; Grover, H.; Schwarz, L.F.; Cooper, J.T.J. Planning for Community Resilience: A Handbook for Reducing Vulnerability to Disasters; Island Press: Washington, DC, USA, 2014. [Google Scholar]
  4. Kiniger-Passigli, D.; Biondi, A. A People-Centred, Preventive Approach to Disaster Risk. Erud. J. World Acad. Art Sci. 2015, 1, 32–39. [Google Scholar]
  5. Lallement, D.; Loos, S.; McCaughey, J.W.; Budhathoki, N.; Khan, F. Informatics for Equitable Recovery: Supporting Equitable Disaster Recovery through Mapping and Integration of Social Vulnerability into Post-Disaster Impact Assessments; ETH Zurich: Zurich, Switzerland, 2020. [Google Scholar]
  6. 2020: The Non-COVID Year in Disasters; Centre for Research on the Epidemiology of Disasters (CRED): Brussels, Belgium; The UN Office for Disaster Risk Reduction (UNDRR): Brussels, Belgium, 2021.
  7. Turner, B.A. The Organizational and Interorganizational Development of Disasters. Adm. Sci. Q. 1976, 21, 378–397. [Google Scholar] [CrossRef]
  8. Wisner, B.; Blaikie, P.; Cannon, T.; Davis, I. At Risk: Natural Hazards, People’s Vulnerability and Disasters; Psychology Press: Hove, UK, 2004. [Google Scholar]
  9. Collins, A.E.; Manyena, B.; Jayawickrama, J.; Jones, S. Introduction: Hazards, Risks, and Disasters in Society. In Hazards, Risks and Disasters in Society; Elsevier: Amsterdam, The Netherlands, 2015; pp. 1–15. [Google Scholar]
  10. Rufat, S.; Fekete, A.; Armaş, I.; Hartmann, T.; Kuhlicke, C.; Prior, T.; Thaler, T.; Wisner, B. Swimming Alone? Why Linking Flood Risk Perception and Behavior Requires More than “It’s the Individual, Stupid”. Wiley Interdiscip. Rev. Water 2020, 7, e1462. [Google Scholar] [CrossRef]
  11. Collins, A.E.; Jayawickrama, J.; Jones, S.; Manyena, B. Conclusion: Hazards, Risks, and Disasters in Society. In Hazards, Risks and Disasters in Society; Elsevier: Amsterdam, The Netherlands, 2015; pp. 391–396. [Google Scholar]
  12. Joseph, J.K.; Anand, D.; Prajeesh, P.; Zacharias, A.; Varghese, A.G.; Pradeepkumar, A.P.; Baiju, K.R. Community Resilience Mechanism in an Unexpected Extreme Weather Event: An Analysis of the Kerala Floods of 2018, India. Int. J. Disaster Risk Reduct. 2020, 49, 101741. [Google Scholar] [CrossRef]
  13. Odiase, O.; Wilkinson, S.; Neef, A. Risk of a Disaster: Risk Knowledge, Interpretation and Resilience. Jàmbá J. Disaster Risk Stud. 2020, 12, 1–9. [Google Scholar] [CrossRef] [PubMed]
  14. Scolobig, A.; Prior, T.; Schroter, D.; Jorin, J.; Patt, A. Towards People-Centred Approaches for Effective Disaster Risk Management: Balancing Rhetoric with Reality. Int. J. Disaster Risk Reduct. 2015, 12, 202–212. [Google Scholar] [CrossRef]
  15. Paton, D.; Buergelt, P. Risk, Transformation and Adaptation: Ideas for Reframing Approaches to Disaster Risk Reduction. Int. J. Environ. Res. Public Health 2019, 16, 2594. [Google Scholar] [CrossRef] [Green Version]
  16. Preston, J.; Chadderton, C.; Kitagawa, K.; Edmonds, C. Community Response in Disasters: An Ecological Learning Framework. Int. J. Lifelong Educ. 2015, 34, 727–753. [Google Scholar] [CrossRef] [Green Version]
  17. Samaddar, S.; Choi, J.; Misra, B.A.; Tatano, H. Insights on Social Learning and Collaborative Action Plan Development for Disaster Risk Reduction: Practicing Yonmenkaigi System Method (YSM) in Flood-Prone Mumbai. Nat. Hazards 2015, 75, 1531–1554. [Google Scholar] [CrossRef]
  18. Murti, R.; Mathez-Stiefel, S. Social Learning Approaches for Ecosystem-Based Disaster Risk Reduction. Int. J. Disaster Risk Reduct. 2019, 33, 433–440. [Google Scholar] [CrossRef]
  19. Thapa, A. A Collaborative Approach for Disaster Risk Reduction: Mapping Social Learning with Mistawasis Nehiyawak; University of Saskatchewan: Saskatoon, SK, Canada, 2020. [Google Scholar]
  20. Kitagawa, K. Situating Preparedness Education within Public Pedagogy. Pedagog. Cult. Soc. 2017, 25, 1–13. [Google Scholar] [CrossRef] [Green Version]
  21. Kitagawa, K. Disaster Risk Reduction Activities as Learning. Nat. Hazards 2021, 105, 3099–3118. [Google Scholar] [CrossRef]
  22. Kitagawa, K. Questioning “integrated” Disaster Risk Reduction and “All of Society” Engagement: Can “Preparedness Pedagogy” Help? Comp. J. Comp. Int. Educ. 2019, 49, 851–867. [Google Scholar] [CrossRef] [Green Version]
  23. Ray-Bennett, N.S.; Masys, A.; Shiroshita, H.; Jackson, P. Reactive to Proactive to Reflective Disaster Responses: Introducing Critical Reflective Practices in Disaster Risk Reduction. In Hazards, Risks and Disasters in Society; Elsevier: Amsterdam, The Netherlands, 2015; pp. 99–117. [Google Scholar]
  24. Witvorapong, N.; Muttarak, R.; Pothisiri, W. Social Participation and Disaster Risk Reduction Behaviors in Tsunami Prone Areas. PLoS ONE 2015, 10, e0130862. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  25. Sadeka, S.; Mohamad, M.S.; Sarkar, M.S.K.; Al-Amin, A.Q. Conceptual Framework and Linkage Between Social Capital and Disaster Preparedness: A Case of Orang Asli Families in Malaysia. Soc. Indic. Res. 2020, 150, 479–499. [Google Scholar] [CrossRef]
  26. Saragih, B.; Ni’am, L.; Sirimorok, N.; Yunifa, P.; Abdullah, S. Asmaradana Merapi: Narasi Ketangguhan Orang-Orang Merapi; Sirimorok, N., Ed.; Badan Nasional Penanggulangan Bencana (BNPB): Jakarta, Indonesia, 2014. [Google Scholar]
  27. Surono, M.; Jousset, P.; Pallister, J.; Boichu, M.; Fabrizia, M.; Budisantoso, A.; Rodriguez, F.C.; Andreastuti, S.; Prata, F.; Schneider, D.; et al. The 2010 Explosive Eruption of Java’ s Merapi Volcano—A ‘100-Year’ Event To Cite This Version: HAL Id: Insu-00723412. J. Volcanol. Geotherm. Res. 2012, 241, 121–135. [Google Scholar] [CrossRef] [Green Version]
  28. BPS—Statistics of DI Yogyakarta Prov. Yogyakarta in Figure 2020; BPS—Statistics of DI Yogyakarta Prov.: Yogyakarta, Indonesia, 2020; Available online: https://yogyakarta.bps.go.id/publication/2020/04/27/f05ad6d5e9b43de46673d003/provinsi-di-yogyakarta-dalam-angka-2020.html (accessed on 22 February 2021).
  29. BPS—Statistics of Yogyakarta Municipality. Yogyakarta Municipality in Figure 2020; BPS—Statistics of Yogyakarta Municipality: Yogyakarta, Indonesia, 2020; Available online: https://jogjakota.bps.go.id/publication/2020/04/27/2a6bb713d16b766c86776231/kota-yogyakarta-dalam-angka-2020.html (accessed on 22 February 2021).
  30. BPS—Statistics of Magelang Regency. Magelang Regency in Figure 2020; BPS—Statistics of Magelang Regency: Magelang, Jawa Tengah, Indonesia, 2020; Available online: https://magelangkab.bps.go.id/publication/2020/04/27/0e5f89ea3d81aaa61f44896f/kabupaten-magelang-dalam-angka-2020.html (accessed on 22 February 2021).
  31. BPS—Statistics of Sleman Regency. Sleman Regency in Figure 2020; BPS—Statistics of Sleman Regency: Sleman, Indonesia, 2020; Available online: https://slemankab.bps.go.id/publication/2020/04/27/16714e3d5593acef2ff33d45/kabupaten-sleman-dalam-angka-2020.html (accessed on 22 August 2020).
  32. Newhall, C.G.; Bronto, S.; Alloway, B.; Banks, N.G.; Bahar, I.; Del Marmol, M.A.; Hadisantono, R.D.; Holcomb, R.T.; McGeehin, J.; Miksic, J.N. 10,000 Years of Explosive Eruptions of Merapi Volcano, Central Java: Archaeological and Modern Implications. J. Volcanol. Geotherm. Res. 2000, 100, 9–50. [Google Scholar] [CrossRef]
  33. Global Volcanism Program. Merapi (263250) in Volcanoes of the World, v. 4.10.4; Global Volcanism Program: Washington, DC, USA. Available online: https://volcano.si.edu/volcano.cfm?vn=263250 (accessed on 27 January 2022).
  34. National Disaster Management Agency of Indonesia. Action Plan for Rehabilitation and Reconstruction for Merapi Volcano Eruption Post-Disaster in DI. Yogyakarta and Jawa Tengah 2011–2013; National Disaster Management Agency of Indonesia: Jakarta, Indonesia, 2011. [Google Scholar]
  35. Sikoki, B.; Nugroho, J.E.; Widanto, F.A.S.; Umam, N.; Sakti, E.; Kawuryan, I.S.S.; Purwanto, E.; Yugyasmono; Fatimah, D.; Suriastini, N.W.; et al. Merapi: Pemulihan Penghidupan Warga Pasca Letusan 2010, Laporan Studi Longitudinal; Ma’arif, S., Sulistianto, B., Prasodjo, S.B., Muhammad, L., Andriono, R., Bayudono, Paripurno, E.T., Topatimasan, R., Eds.; Badan Nasional Penanggulangan Bencana (BNPB): Jakarta, Indonesia, 2013; Available online: https://insistpress.com/katalog/merapi-pemulihan-penghidupan-warga-pasca-letusan-2010-laporan-survei-longitudinal/ (accessed on 24 July 2021).
  36. Lavigne, F.; Morin, J.; Surono, M. Atlas of Merapi Volcano; Laboratoire de Geographie Physique: Meudon, France, 2015. [Google Scholar]
  37. Lavigne, F.; De Coster, B.; Juvin, N.; Flohic, F.; Gaillard, J.C.; Texier, P.; Morin, J.; Sartohadi, J. People’s Behaviour in the Face of Volcanic Hazards: Perspectives from Javanese Communities, Indonesia. J. Volcanol. Geotherm. Res. 2008, 172, 273–287. [Google Scholar] [CrossRef]
  38. Rindrasih, E. Under the Volcano: Responses of a Community-Based Tourism Village to the 2010 Eruption of Mount Merapi, Indonesia. Sustainability 2018, 10, 1620. [Google Scholar] [CrossRef] [Green Version]
  39. Yogyakarta, G. Governor of Yogyakarta Regulation No 62/2020 on Merapi Volcano Eruption Contingency Plan on Province Level; Government of DI Yogyakarta Province: Yogyakarta, Indonesia, 2020; Available online: http://www.birohukum.jogjaprov.go.id/produk_hukum_preview.php?id=15727 (accessed on 26 November 2021).
  40. Subkhi, W.B.; Mardiansjah, F.H. Pertumbuhan Dan Perkembangan Kawasan Perkotaan Di Kabupaten: Studi Kasus Kabupaten Sleman, Daerah Istimewa Yogyakarta. J. Wil. Lingkung. 2019, 7, 105–120. [Google Scholar] [CrossRef]
  41. SIARAN PERS Peningkatan Status Aktivitas Gunung Merapi dari “Waspada (Level II) ke Siaga (Level III)”. In Government Publication Number 523/45/BGV.KG/2020; Geology Berau of Ministry of Energy and Mineral Resources: Yogyakarta, Indonesia, 2020; Available online: https://www.jogjaprov.go.id/pengumuman/detail/132-siaran-pers-peningkatan-status-aktivitas-gunung-merapi-dari-waspada-level-ii-ke-siaga-level-iii (accessed on 27 December 2021).
  42. Roychani, M. Infografis Kejadian Bencana Kabupaten Magelang 2020 (1 Januari 2020–31 Desember 2020). BPBD Magelang: Magelang, Jawa Tengah, Indonesia. 2021. Available online: https://bpbd.magelangkab.go.id/home/detail/infografis-kejadian-bencana-kabupaten-magelang-2020---1-januari-2020-–-31-desember-2020-/562# (accessed on 27 December 2021).
  43. BPBD Magelang. Available online: http://sikk.bpbdmagelang.id/ (accessed on 27 December 2021).
  44. Eslamian, S.; Eslamian, F.A. Handbook of Disaster Risk Reduction for Resilience: New Frameworks for Building Resilience to Disasters; Springer: Berlin/Heidelberg, Germany, 2021. [Google Scholar]
  45. Sayudi, D.S. WLPB (Wajib Latih Penanggulangan Bencana) Dulu dan Di Masa New Normal: Dengan Studi Kasus, G. Merap. Presented at the Sosial Humaniora Seminar “Narasi Ketangguhan Warga Merapi”, part of Commererating of 10 years after 2010 Merapi Eruption: “Dasawarsa Merapi 2010: Refleksi Merapi 2010 untuk Mitigasi di Masa Pandemi”, Yogykarta, Indonesia, 20 October–4 November 2020. [Google Scholar]
  46. Subandriyo; Sayudi, D.S. Community Perception Survey as Evaluation of Disaster Management Training Programs in Disaster-Prone Areas of Mt. Merapi; The Center for Investigation and Development of Geological Disaster Technology (BPPTKG): Yogyakarta, Indonesia, Unpublished work, last saved 31 May 2019. Microsoft Word File.
  47. Mei, E.T.W.; Lavigne, F.; Picquout, A.; de Bélizal, E.; Brunstein, D.; Grancher, D.; Sartohadi, J.; Cholik, N.; Vidal, C. Lessons Learned from the 2010 Evacuations at Merapi Volcano. J. Volcanol. Geotherm. Res. 2013, 261, 348–365. [Google Scholar] [CrossRef]
  48. Elysia, V.; Wihadanto, A. The Sister Village Program: Promoting Community Resilience after Merapi Eruption. Indones. J. Plan. Dev. 2018, 3, 32–43. [Google Scholar] [CrossRef]
  49. Badan Nasional Penanggulangan Bencana (BNPB) Indonesia. The Sister Village Program: Submission of The Government of Indonesia to High-Level Panel on Internal Displacement; The Permanent Mission of the Republic Indonesia to United Nations, WTO and Other International Organizations: Geneva, Switzerland, 2020; Available online: https://www.un.org/internal-displacement-panel/sites/www.un.org.internal-displacement-panel/files/indonesias_submission.pdf (accessed on 28 January 2022).
  50. Jager, J.; Putnick, D.L.; Bornstein, M.H., II. More than Just Convenient: The Scientific Merits of Homogeneous Convenience Samples. Monogr. Soc. Res. Child Dev. 2017, 82, 13–30. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  51. Pelupessy, D.C. Relocation: Sense of Community, Connection to Place, and the Role of Culture Following a Volcanic Eruption; Victoria University: Melbourne, Australia, 2016. [Google Scholar]
  52. Rahayu, L.; Febriani, D. The Efficiency of Red Chili Farming In Merapi Eruption Area, Yogyakarta, Indonesia. In E3S Web of Conferences; EDP Sciences: Les Ulis, France, 2021; Volume 232, p. 1023. [Google Scholar]
  53. Rahman, B.; Van den Broeck, P.; Parra, C. Post-Disaster Recovery as Socio-Ecological and Socio-Political Construction: Responses to the 2010 Merapi Eruption as a Case Study. In Proceeding of the 8th International Conference on Building Resilience (ICBR), Lisbon, Portugal, 14 November 2018–16 November 2018; pp. 86–91. Available online: https://3a5cb13e-4d06-41e6-9768-4b9fc2524ae2.filesusr.com/ugd/954133_6963cb668f4949a0bf7429d66a63c105.pdf (accessed on 20 May 2021).
  54. Prabowo, H.L. Region Based Development of Land Consolidation Through Land Consolidation Village. Proceeding of International Conference: Land Consolidation as an Instrument to Support Sustainable Spatial Planning National Land College, 2017, Yogyakarta, Indonesia, 16 November 2017; STPN Press Team, Ed.; National Land College: Yogyakarta, Indonesia; STPN Press: Yogyakarta, Indonesia, 2017; pp. 83–95. Available online: http://pppm.stpn.ac.id/sdm_downloads/proceeding-international-conference-land-consolidation-as-an-instrument-to-support-sustainable-spatial-planning (accessed on 24 December 2021).
  55. Pitoyo, A.J.; Triwahyudi, H. Dinamika Perkembangan Etnis Di Indonesia Dalam Konteks Persatuan Negara. Populasi 2017, 25, 64–81. [Google Scholar] [CrossRef] [Green Version]
  56. Rozaki, Z.; Rahmawati, N.; Wijaya, O.; Khoir, I.A.; Senge, M.; Kamarudin, M.F. Perception of Agroforestry Adopter and Non-Adopter on Volcano Risk and Hazard: A Case in Mt. Merapi, Java, Indonesia. Biodiversitas J. Biol. Divers. 2021, 22, 3829–3837. [Google Scholar] [CrossRef]
  57. Ikhsan, J. Study on Integrated Sediment Management in an Active Volcanic Basin. Ph.D. Thesis, Kyoto University, Kyoto, Japan, September 2010. [Google Scholar]
  58. Subandriyo. Penyebaran Informasi Kebencanaan G. Merapi 2010 Dan Masa Pandemi [Dissemination Disaster Information of Merapi Volcano 2010 and the Pandemic]. Presented at Seminar Manajemen Penanggulangan Bencana dan Sistem Peringatan Dini “Praktik Baik dari Merapi” [Disaster Management and Early Warning System “Best Practices from Merapi”], part of Commererating of 10 years after 2010 Merapi Eruption: “Dasawarsa Merapi 2010: Refleksi Merapi 2010 untuk Mitigasi di Masa Pandemi” [“A Decade of Merapi 2010: 2010 Merapi Reflection for Mitigation in the Pandemic”], Yogykarta, Indonesia, 20 October–4 November 2020. [Google Scholar]
  59. IBM Corp. IBM SPSS Statistics for Windows, Version 27.0; IBM Corp: Armonk, NY, USA, 2020. [Google Scholar]
  60. Kraska-Miller, M. Nonparametric Statistics for Social and Behavioral Sciences; CRC Press: Boca Raton, FL, USA, 2013. [Google Scholar]
  61. Ho, R. Handbook of Univariate and Multivariate Data Analysis with IBM SPSS; CRC Press: Boca Raton, FL, USA, 2013. [Google Scholar]
  62. Tarling, R. Statistical Modelling for Social Researchers: Principles and Practice; Routledge: Abingdon-on-Thames, Oxfordshire, UK, 2008. [Google Scholar]
  63. Howell, D.C. Chi-Square Test: Analysis of Contingency Tables BT. International Encyclopedia of Statistical Science; Lovric, M., Ed.; Springer: Berlin/Heidelberg, Germany, 2011; pp. 250–252. [Google Scholar] [CrossRef]
  64. Stockemer, D.; Stockemer, G. Quantitative Methods for the Social Sciences; Springer: Berlin/Heidelberg, Germany, 2019. [Google Scholar]
  65. Shan, G.; Gerstenberger, S. Fisher’s Exact Approach for Post Hoc Analysis of a Chi-Squared Test. PLoS ONE 2017, 12, e0188709. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  66. Budiastuti, D.; Bandur, A. Validitas Dan Reabilitas Penelitian [Validity and Realiabilty in Research]; Mitra Wacana Media: Jakarta, Indonesia, 2018. [Google Scholar]
  67. Wagner, W.E., III. Using IBM® SPSS® Statistics for Research Methods and Social Science Statistics; Sage Publications: Thousand Oaks, CA, USA, 2019. [Google Scholar]
  68. Wardyaningrum, D. Perubahan Komunikasi Masyarakat Dalam Inovasi Mitigasi Bencana Di Wilayah Rawan Bencana Gunung Merapi. J. Aspikom 2014, 2, 179–197. [Google Scholar] [CrossRef] [Green Version]
  69. Biro Tata Pemerintahan Setda DIY. Population of DIY. Biro Tata Pemerintahan Setda DIY: Yogyakarta, Indonesia. 2022. Available online: https://kependudukan.jogjaprov.go.id/ (accessed on 27 January 2022).
  70. BPS—Statistics of Magelang Regency. Candimulyo Subdistrict in Figure 2020; BPS—Statistics of Magelang Regency: Magelang, Jawa Tengah, Indonesia, 2020; Available online: https://magelangkab.bps.go.id/publication/2020/09/28/f1999594678cef972a749362/kecamatan-candimulyo-dalam-angka-2020.html (accessed on 14 January 2022).
  71. BPS—Statistics of Magelang Regency, Mungkid Subdistrict in Figure 2020; BPS—Statistics of Magelang Regency: Magelang, Jawa Tengah, Indonesia. 2020. Available online: https://magelangkab.bps.go.id/publication/2020/09/28/172d5152e2b8ea719a26b994/kecamatan-mungkid-dalam-angka-2020.html (accessed on 14 January 2022).
  72. BPS—Statistics of Magelang Regency. Sawangan Subdistrict in Figure 2020; BPS—Statistics of Magelang Regency: Magelang, Jawa Tengah, Indonesia, 2020; Available online: https://magelangkab.bps.go.id/publication/2020/09/28/b2487f26c6ca2a3e348ef50a/kecamatan-sawangan-dalam-angka-2020.html (accessed on 14 January 2022).
  73. BPS—Statistics of Magelang Regency, Dukun Subdistrict in Figure 2020; BPS—Statistics of Magelang Regency: Magelang, Jawa Tengah, Indonesia. 2020. Available online: https://magelangkab.bps.go.id/publication/2020/09/28/79e551001de0abbb65420a15/kecamatan-dukun-dalam-angka-2020.html (accessed on 14 January 2022).
  74. BPS—Statistics of Magelang Regency, Srumbung Subdistrict in Figure 2020; BPS—Statistics of Magelang Regency: Magelang, Jawa Tengah, Indonesia. 2020. Available online: https://magelangkab.bps.go.id/publication/2020/09/28/1eff4651a5d597c7fa2bdfff/kecamatan-srumbung-dalam-angka-2020.html (accessed on 14 January 2022).
  75. BPS—Statistics of Magelang Regency, Salam Subdistrict in Figure 2020; BPS—Statistics of Magelang Regency: Magelang, Jawa Tengah, Indonesia. 2020. Available online: https://magelangkab.bps.go.id/publication/2020/09/28/e88339e572ce967998cdcd88/kecamatan-salam-dalam-angka-2020.html (accessed on 14 January 2022).
  76. BPS—Statistics of Magelang Regency, Muntilan Subdistrict in Figure 2020; BPS—Statistics of Magelang Regency: Magelang, Jawa Tengah, Indonesia. 2020. Available online: https://magelangkab.bps.go.id/publication/2020/09/28/736c3f94d064a57762a73e2f/kecamatan-muntilan-dalam-angka-2020.html (accessed on 14 January 2022).
  77. Krüger, F.; Bankoff, G.; Cannon, T.; Orlowski, B.; Schipper, E.L.F. Cultures and Disasters: Understanding Cultural Framings in Disaster Risk Reduction; Routledge: Abingdon-on-Thames, Oxfordshire, UK, 2015. [Google Scholar]
  78. BPBD Sleman. Rencana Kontingensi Erupsi Gunungapi Merapi Kabupaten Sleman Tahun 2020 [Merapi Volcano Eruption Contingency Plan of Sleman Regency 2020]; BPBD Sleman: Sleman, DI Yogyakarta, Indonesia, 2020. [Google Scholar]
  79. BPBD Magelang. Dokumen Rencana Kontingensi Erupsi Gunung Merapi Kabupaten Magelang Tahun 2020/2022 [Document of Merapi Volcano Eruption Contingency Plan Magelang Regency 2020/2022]; BPBD Magelang: Magelang, Jawa Tengah, Indonesia, 2020. [Google Scholar]
  80. Wahyu Hidayat. Tradisi “Pecah Celengan” Perempuan Merapi Hadapi COVID-19. Available online: https://magelangkab.go.id/home/detail/tradisi-pecah-celengan-perempuan-merapi-hadapi-covid-19/3466 (accessed on 5 March 2021).
  81. Muttarak, R.; Lutz, W. Is Education a Key to Reducing Vulnerability to Natural Disasters and Hence Unavoidable Climate Change? Ecol. Soc. 2014, 19, 42. [Google Scholar] [CrossRef] [Green Version]
  82. Wachinger, G.; Renn, O.; Begg, C.; Kuhlicke, C. The Risk Perception Paradox-Implications for Governance and Communication of Natural Hazards. Risk Anal. 2013, 33, 1049–1065. [Google Scholar] [CrossRef] [PubMed]
  83. Marchezini, V. “What Is a Sociologist Doing Here?” An Unconventional People-Centered Approach to Improve Warning Implementation in the Sendai Framework for Disaster Risk Reduction. Int. J. Disaster Risk Sci. 2020, 11, 218–229. [Google Scholar] [CrossRef] [Green Version]
  84. Aneshensel, C.S. Theory-Based Data Analysis for the Social Sciences; Sage Publications: Thousand Oaks, CA, USA, 2012. [Google Scholar]
  85. Thomalla, F.; Boyland, M.; Johnson, K.; Ensor, J.; Tuhkanen, H.; Gerger Swartling, A.; Han, G.; Forrester, J.; Wahl, D. Transforming Development and Disaster Risk. Sustainability 2018, 10, 1458. [Google Scholar] [CrossRef] [Green Version]
  86. Manyena, B.; Machingura, F.; O’Keefe, P. Disaster Resilience Integrated Framework for Transformation (DRIFT): A New Approach to Theorising and Operationalising Resilience. World Dev. 2019, 123, 104587. [Google Scholar] [CrossRef]
  87. Stanganelli, M. A People-Centred Approach to Disaster Risk Reduction. In SMC Sustainable Mediterranean Construction—Special Issue Landscape at Risk; Liguori Editore: Napoli, Italy, 2020. [Google Scholar]
  88. Eshach, H. Bridging In-School and out-of-School Learning: Formal, Non-Formal, and Informal Education. J. Sci. Educ. Technol. 2007, 16, 171–190. [Google Scholar] [CrossRef]
Figure 1. Merapi Volcano community area map.
Figure 1. Merapi Volcano community area map.
Sustainability 14 02215 g001
Figure 2. Data analysis flowchart.
Figure 2. Data analysis flowchart.
Sustainability 14 02215 g002
Table 1. Individual attributes of respondent profiles.
Table 1. Individual attributes of respondent profiles.
DescriptionObserved FrequenciesPercentage (%)
Sex
Female13964.7
Male7434.4
Not stated20.9
Age–A (years)
A ≤ 244721.9
25 < A ≤ 5414266.0
54 < A 219.8
No answer (N/A)52.3
D ≤ 105525.6
10 < D ≤ 309544.2
30 < 306329.3
No answer (N/A)20.9
Education
Primary2712.6
Secondary8238.1
Tertiary10147.0
No answer (N/A)52.3
Monthly income–I (USD) 1
Do not have fixed monthly income6530.2
I ≤ 210.426731.2
210.43 < I ≤ 350.703516.3
350.71 < I2210.2
No answer (N/A)2612.1
Daily life activity
Work and homemakers16375.8
Unemployed and retirement188.4
Students3214.9
No answer (N/A)20.9
Household profile
Single person HH188.4
Couple without child83.7
Parent with one child or more14667.9
No answer (N/A)4320.0
1 1 USD = 14,257.199 IDR (1 March 2021).
Table 2. Descriptive statistics on disaster risk reduction variables.
Table 2. Descriptive statistics on disaster risk reduction variables.
DescriptionObserved FrequenciesPercentage (%)
The accessibility of disaster information
Yes13763.7
No209.3
Maybe5123.7
Do not know73.3
Awareness of Community based Disaster Risk Management (CBDRM) Organization existence in the community
Yes7635.3
No8037.2
Maybe5927.4
Experience with DRR program(s)
Yes3817.7
No4119.1
Maybe83.7
No answer (N/A) 12859.5
Advantages of DRR program for preparing the community for a possible threat
Yes4018.6
No00
Maybe62.8
No answer (N/A)16978.6
Prioritizing the vulnerable group during and after the emergency
Yes14366.5
No136.0
Maybe5927.4
The importance of women group on the decision making and DRR
Yes10247.4
No2612.1
Maybe8740.5
Perception for collaborating with external stakeholders would give advantages for community preparedness
Yes17681.9
No31.4
Maybe3616.7
Table 3. Disaster topics of information accessed by the community.
Table 3. Disaster topics of information accessed by the community.
Group of TopicsTopicsResponses
HIHazard informationRecent and updated information on Merapi Volcano93.5%275
HIHazard informationKnowledge about volcanic hazard85.0%250
EEmergenciesEvacuation and emergencies procedure73.8%217
EEmergenciesEvacuation shelter72.1%212
EEmergenciesEvacuation route71.4%210
EEmergenciesEWS—early warning system69.7%205
EEmergenciesTime for evacuation58.2%171
MMitigationCBDRM—community-based disaster risk management51.7%152
EEmergenciesContact and network communication during emergencies48.0%141
pPreparednessDisaster drill and simulation44.6%131
EEmergenciesLive guidelines in the temporary shelters42.9%126
EEmergenciesOrganization of disaster emergency response42.5%125
HIHazard informationFolklore and traditional knowledge disaster-related36.1%106
Total Respondent294
Table 4. Degree of freedom test between the individual attributes and information accessibility to Merapi Volcano disaster-related information.
Table 4. Degree of freedom test between the individual attributes and information accessibility to Merapi Volcano disaster-related information.
VariablesnValuedfAsymptotic Significance (2-Sided)Exact Sig.
(2-Sided)
Test
Sex2070.74220.6900.685Chi-square
Age group2052.50040.6450.657Chi-square
Duration of staying in the neighborhood2072.03540.7290.737Chi-square
Education20412.67360.0490.047Chi-square
Monthly income1836.57860.3620.366Chi-square
Activity2077.762 0.084Fisher’s exact test
Household types1685.450 0.187Fisher’s exact test
Table 5. Type of DRR programs in the Merapi Volcano community.
Table 5. Type of DRR programs in the Merapi Volcano community.
Categories of TopicsProgramsResponses
ARAwareness-raisingDisaster drill and simulation67.90%55
MPMitigation and preparednessDisaster training and workshop50.62%41
MPMitigation and preparednessCommunity meeting40.74%33
MPMitigation and preparednessDisaster contingency plan-making34.57%28
MPMitigation and preparednessContributing to disaster evacuation route making and implementation34.57%28
MPMitigation and preparednessMaking community emergency SOP33.33%27
ARAwareness-raisingCommunity disaster camp (school or volunteer)32.10%26
MPMitigation and preparednessBuilding another structural mitigation27.16%22
ARAwareness-raisingDRR campaign, fair, and feast23.46%19
LSLivelihood securingLivelihood based tourism on disaster-prone area training and capacity building16.05%13
LSLivelihood securingLivestock management during emergency13.58%11
LSLivelihood securingParticipating in social insurance for disaster emergencies 11.11%9
Total Respondent81
Table 6. Degree of freedom test between the individual attributes, the experiences of DRR programs 2, and advantages of DRR program for preparedness 3.
Table 6. Degree of freedom test between the individual attributes, the experiences of DRR programs 2, and advantages of DRR program for preparedness 3.
VariablesCasenValuedfAsymptotic Significance (2-Sided)Exact Sig.
(2-Sided)
Test
Sex 2797.88410.0050.006Chi-square
3463.06710.0800.187Chi-square *
Age group2775.009 0.079Fisher’s exact test
3441.747 0.538Fisher’s exact test
Duration of staying in the neighborhood2789.98320.0070.007Chi-square
3450.851 0.853Fisher’s exact test
Education2782.850 0.419Fisher’s exact test
3451.853 0.621Fisher’s exact test
Monthly income2716.03930.1100.112Chi-square
3441.231 0.867Fisher’s exact test
Activity2781.923 0.448Fisher’s exact test
3468.711 0.014Fisher’s exact test
Household types2691.993 0.474Fisher’s exact test
3411.589 0.616Fisher’s exact test
* Count in 2 × 2 table. 2 Case 2: the experiences of DRR programs. 3 Case 3: advantages of DRR program for preparedness.
Table 7. Degree of freedom test between the individual attributes, the existence of community-based disaster risk management (CBDRM) organization 4, prioritizing vulnerable groups during disaster emergencies 5, women’s involvement in disaster and risk management 6, and the impact of collaboration on disaster preparedness and community resilience 7.
Table 7. Degree of freedom test between the individual attributes, the existence of community-based disaster risk management (CBDRM) organization 4, prioritizing vulnerable groups during disaster emergencies 5, women’s involvement in disaster and risk management 6, and the impact of collaboration on disaster preparedness and community resilience 7.
VariablesCasenValuedfAsymptotic Significance (2-Sided)Exact Sig.
(2-Sided)
Test
Sex41551.03410.3090.323Chi-square
52000.11010.7410.747Chi-square
61870.99610.3180.361Chi-square *
72101.82610.1770.186Chi-square
Age group41521.93620.3800.393Chi-square
51951.93920.3790.414Chi-square
61824.77120.0920.091Chi-square
72050.21020.9000.924Chi-square
Duration of staying in the neighborhood41530.05220.9740.979Chi-square
51982.58020.2750.276Chi-square
61853.88220.1440.140Chi-square
72080.69220.7080.691Chi-square
Education41534.43930.2180.222Chi-square
51968.05130.0450.044Chi-square
61826.26130.1000.101Chi-square
72051.20920.5460.545Chi-square
Monthly income41402.91130.4060.411Chi-square
51756.72730.0810.081Chi-square
61622.73330.4350.442Chi-square
71841.58030.6640.678Chi-square
Activity41547.78020.0200.018Chi-square
51980.63920.7270.739Chi-square
61862.17920.3360.352Chi-square
72080.76920.6810.687Chi-square
Household types41292.935 0.258Fisher’s exact test
51624.050 0.120Fisher’s exact test
61523.252 0.208Fisher’s exact test
7169.099 1.000Fisher’s exact test
* Count in 2 x 2 table. 4 Case 4: the existence of community-based disaster risk management (CBDRM) organization. 5 Case 5: prioritizing vulnerable groups during disaster emergencies. 6 Case 6: women’s involvement in disaster and risk management. 7 Case 7: the impact of collaboration on disaster preparedness and community resilience.
Table 8. Predictive model of sub–variables of individual profile and DRR programs.
Table 8. Predictive model of sub–variables of individual profile and DRR programs.
DescriptionModel 1Model 2Model 3Model 4Model 5Model 6
R0.1120.1700.0680.4220.2860.196
R20.0130.0290.0050.1780.0820.038
FF (3, 209) = 0.891F (2, 131) = 1.943F (3, 130) = 0.199F (3, 85) = 6.139F (3, 290) = 8.579F (3, 289) = 3.835
p0.4470.1470.8970.0010.0010.010
Unstandardized BC1.8001.7451.6951.9301.9881.780
X1−0.1330.005−0.028−0.744−0.207−0.521
X2−0.276−0.230−0.1951.0700.346−0.274
X3−0.053-0.019−0.3100.140−0.008
Coefficients SEC0.4200.0880.0560.1440.0830.096
X10.4570.1210.3580.2030.1010.193
X20.4320.1340.2560.6810.1930.136
X30.430-0.2380.3170.0520.130
Standardized Coefficients Beta (β)C
X1−0.0470.004−0.007−0.367−0.134−0.171
X2−0.143−0.168−0.0670.1560.108−0.140
X3−0.028-0.007−0.0970.170−0.004
tC4.29019.87830.10813.44824.02318.490
X1−0.2920.044−0.079−3.666−2.051−2.694
X2−0.638−1.715−0.7621.5711.791−2.022
X3−0.122-0.081−0.9772.705−0.063
pC0.0000.0000.0000.0000.0000.000
X10.7710.9650.9370.0000.0410.007
X20.5240.0890.4480.1200.0740.044
X30.903-0.9350.3310.0070.950
ResultsPredictors: (Constant), Tertiary, Primary, SecondaryPredictors: (Constant), Sex Female, Sex MalePredictors: (Constant), duration of stay 3 (>30 years), duration of stay 1 (≤10 years), duration of stay 2(10–≤30 years)Predictors: (Constant), Activity 3 (students),
Activity 2 (unemployed and retired), Activity 1 (workers and homemakers)
Predictors: (Constant), Activity 3 (students),
Activity 2 (unemployed and retired), Activity 1 (workers and homemakers)
Predictors: (Constant), Tertiary, Primary, Secondary
Interpretationweak, not significantly contributed to predicting modelweak, not significantly contributed to predicting modelweak, not significantly contributed to predicting modelthe medium could predict to model with X1 has a significant contribution to the modelweak, could predict to model with X1 and X3 have a significant contribution to the modelweak, could predict to model with X1 and X2 have a significant contribution to the model
Significant predictors ---X1: workers and homemakersX1: workers and homemakers.
X3: students
X1: primary
X2: secondary
Publisher’s Note: MDPI stays neutral with regard to jurisdictional claims in published maps and institutional affiliations.

Share and Cite

MDPI and ACS Style

Mutiarni, Y.S.; Nakamura, H.; Bhattacharya, Y. The Resilient Community: Strengthening People-Centered Disaster Risk Reduction in the Merapi Volcano Community, Java, Indonesia. Sustainability 2022, 14, 2215. https://doi.org/10.3390/su14042215

AMA Style

Mutiarni YS, Nakamura H, Bhattacharya Y. The Resilient Community: Strengthening People-Centered Disaster Risk Reduction in the Merapi Volcano Community, Java, Indonesia. Sustainability. 2022; 14(4):2215. https://doi.org/10.3390/su14042215

Chicago/Turabian Style

Mutiarni, Yosi S., Hitoshi Nakamura, and Yasmin Bhattacharya. 2022. "The Resilient Community: Strengthening People-Centered Disaster Risk Reduction in the Merapi Volcano Community, Java, Indonesia" Sustainability 14, no. 4: 2215. https://doi.org/10.3390/su14042215

APA Style

Mutiarni, Y. S., Nakamura, H., & Bhattacharya, Y. (2022). The Resilient Community: Strengthening People-Centered Disaster Risk Reduction in the Merapi Volcano Community, Java, Indonesia. Sustainability, 14(4), 2215. https://doi.org/10.3390/su14042215

Note that from the first issue of 2016, this journal uses article numbers instead of page numbers. See further details here.

Article Metrics

Back to TopTop