Impact of Factors That Predict Adoption of Geomonitoring Systems for Landslide Management
Abstract
:1. Introduction
2. Theoretical Framework and Literature Review
- ✓
- The development of an early warning system for the occurrence of natural disasters, and a system in internet technology intended for the management of information on the evolution of disruptive factors;
- ✓
- The development of an expert system for risk management;
- ✓
- The development of pilot systems for managing and disseminating information regarding the population’s safety.
- Focus: TPB and TRA models focus on the behavior of individuals, the diffusion of innovation theory focuses on the different stages of technology adoption, while UTAUT and TAM models focus on the acceptance and use of technology.
- Variables: TPB and TRA models consider three variables: attitude, subjective norm, and perceived behavioral control. The TAM model considers two variables: perceived usefulness and perceived ease of use, while UTAUT has some distinctive features, but also some advantages. UTAUT is a comprehensive model that explores several factors influencing user adoption of technology, including performance expectancy, effort expectancy, social influence, as well as facilitating conditions.
- Individual vs. social factors: TPB and TRA models primarily focus on individual factors while UTAUT and TAM models also integrate social factors such as social influence and facilitating conditions
- Complex moderating and mediating effects: UTAUT is known for the complex moderating effects arising from the interplay of its four core constructs. It is difficult to predict the behavior of end users without considering factors related to the technology, the organization, and the social context in which the user is situated.
- Applicability: TPB and TRA models can be applied to a wide range of behaviors, including technology-based behaviors. UTAUT and TAM models are more specifically targeted toward understanding the adoption and use of technology.
- Contextual differences: TAM is more suitable for investigating user acceptance of technology in a controlled environment, while UTAUT is more appropriate for examining technology adoption in a real-world context.
3. Materials and Methods
3.1. Overview of the Case Study
3.2. Development of the Integrated GeoSES Monitoring System
3.3. Research Model and Development of Research Hypotheses
- Performance Expectancy (PE)
- Perceived Effort of Use (PEU)
- Informational Characteristics Requirement (IRC)
- Education in Disaster Risk Reduction (EDRR)
- Use of the GeoSES monitoring system (GMSU)
Construct | References |
---|---|
Performance expectancy (PE) | [48,49,50,51] |
Perceived effort of use (PEU) | [52,53,54,55] |
Informational characteristics requirement (IRC) | [24,25,26,27,28] |
Education in disaster risk reduction (EDRR) | [41,43,57,58] |
Intention of use (IU) | [59,60,61,62,63] |
Use of the GeoSES monitoring system (GMSU) | [41,43,44,64,65] |
3.4. Analysis of the Model
- ✓
- Higher-quality data: because experts are often highly knowledgeable and experienced in their field, they are likely to provide more accurate and reliable data;
- ✓
- Time efficiency: expert sampling can be more efficient than other sampling methods because it allows researchers to quickly identify and target people who have specialized knowledge and experience;
- ✓
- Cost savings: if experts are local or can be reached remotely, then the costs associated with travel and site visits can be minimized;
- ✓
- Reduced sample size: expert sampling can be especially useful when dealing with limited resources because it allows researchers to obtain a smaller sample size than other methods without sacrificing quality.
3.4.1. Measurement Scales
3.4.2. Testing for Reliability and Validity
3.4.3. Correlations
3.4.4. Evaluation of Reflective Structures-Discriminate Validity of Measurement Model
3.5. Results of Structural Modeling
4. Discussion
- Formulation of questions: biased questions can lead to biased answers. The evaluation of question formulation involves checking whether the questions were phrased in an objective and non-leading manner. All possible interpretations of questions should be considered to ensure that the questions are clear and straightforward.
- Choice of targeted group: another source of bias in expert sampling is the choice of the targeted group. It is essential to evaluate who is chosen as an expert and whether they represent the diversity of opinions in the population being studied. An adverse group of experts can help eliminate bias due to individual opinions or experiences.
- Answers: biased answers can also lead to biased results. Identification and evaluation of possible sources of bias in the answers are critical. Evaluating the answers involves ensuring that the experts understand the questions, that their answers are objective and unbiased, and that they have the necessary knowledge and expertise to provide informed opinions.
Theoretical and Practical Implications of the Study
5. Conclusions
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Performance Expectancy (PE-4 Items) |
PE1—The GeoSES monitoring system enhances the precision and responsiveness of emergency management teams |
PE2—In the phase of disaster response, the GeoSES monitoring system can enhance efficacy and efficiency. PE3—The authorities and rescue organizations will find the GeoSES monitoring system valuable. PE4—The GeoSES monitoring system helps increase the efficiency of emergency management teams. |
Perceived Effort of Use (PEU-3 items) |
PEU1—The monitoring system for GeoSES is user-friendly. PEU2—The GeoSES monitoring system’s data improve effective knowledge acquisition. PEU3—Your communications with the GeoSES monitoring system will be straightforward and easily understood. |
Information Requirement Characteristics (IRC-4 items) |
IRC1—Information provided by GeoSES monitoring system can be used for the prediction of real-time disaster information. IRC2—Integrated information can be accessed from GeoSES project participants through the WebGIS platform. IRC3—Better decisions can be made by accessing GeoSES WebGIS portal. IRC4—Information provided by GeoSES monitoring can be analyzed by large groups of users. |
Education in Disaster Risk Reduction (EDRR-3 items) |
EDRR 1—The GeoSES monitoring system is relevant to disaster risk knowledge involving rescue operation. EDRR 2—The GeoSES monitoring system is important for disaster risk knowledge as a partially/fully disaster management organization. EDRR 3—The GeoSES monitoring system is appropriate for disaster risk knowledge due to its outputs like hazard risk maps. |
Intention of Use (IU-3 items) |
IU1—It is prudent to adopt the GeoSES monitoring system for landslide disaster risk. IU2—Our organization is aided by the GeoSES monitoring system in terms of saving lives and property. IU3—GeoSES monitoring system is an effective disaster mitigation tool for our community. |
GeoSES Monitoring System Use (GMSU-3 items) |
GMSU 1—Using the GeoSES monitoring system helps us in making decisions. GMSU 2—If we obtain the GeoSES monitoring system, we will use it to plan rescue efforts. GMSU 3—Using the GeoSES monitoring system enables us to strengthen interaction with all stakeholders in the cross-border region to prevent emergency scenarios. |
Constructs | Cronbach’s α | Composite Reliability (CR) | Average Variance Extracted (AVE) |
---|---|---|---|
IU | 0.776 | 0.774 | 0.707 |
PE | 0.857 | 0.860 | 0.721 |
EDRR | 0.577 | 0.756 | 0.698 |
PEU | 0.854 | 0.844 | 0.732 |
IRC | 0.925 | 0.912 | 0.894 |
GMSU | 0.761 | 0.745 | 0.683 |
IU | PE | EDRR | PEU | IRC | GMSU | |
---|---|---|---|---|---|---|
IU | 0.818 | |||||
PE | 0.405 | 0.847 | ||||
EDRR | 0.471 | 0.478 | 0.839 | |||
PEU | 0.437 | 0.428 | 0.321 | 0.785 | ||
IRC | 0.365 | 0.242 | 0.239 | 0.423 | 0.817 | |
GMSU | 0.469 | 0.296 | 0.475 | 0.299 | 0.462 | 0.785 |
IU | PU | EDRR | PEU | IRC | GMSU | |
---|---|---|---|---|---|---|
IU1 | 0.747 | |||||
IU2 | 0.723 | |||||
IU3 | 0.744 | |||||
PE1 | 0.811 | |||||
PE2 | 0.799 | |||||
PE3 | 0.802 | |||||
PE4 | 0.771 | |||||
EDRR1 | 0.731 | |||||
EDRR2 | 0.729 | |||||
EDRR3 | 0.718 | |||||
PEU 1 | 0.788 | |||||
PEU 2 | 0.879 | |||||
PEU 3 | 0.882 | |||||
IRC 1 | 0.815 | |||||
IRC 2 | 0.843 | |||||
IRC 3 | 0.832 | |||||
IRC 4 | 0.811 | |||||
GMSU1 | 0.938 | |||||
GMSU 2 | 0.940 | |||||
GMSU 3 | 0.921 |
IU | PE | EDRR | PEU | PEIC | GMSU | |
---|---|---|---|---|---|---|
IU | 0.719 | |||||
PE | 0.598 | 0.836 | ||||
EDRR | 0.481 | 0.478 | 0.726 | |||
PEU | 0.497 | 0.488 | 0.353 | 0.835 | ||
PEIC | 0.365 | 0.232 | 0.249 | 0.323 | 0.801 | |
GMSU | 0.469 | 0.276 | 0.355 | 0.283 | 0.369 | 0.798 |
Hypothesis | Relationship | Path Coef. b | Standard Deviation (STDEV) | T-Statistics | p Values | Hypothesis Status |
---|---|---|---|---|---|---|
H1 | PE -> IU | 0.363 | 0.044 | 5230 | 0.000 | Supported |
H1 | PEU -> IU | 0.310 | 0.035 | 10.273 | 0.000 | Supported |
H3 | IRC -> IU | 0.384 | 0.022 | 5830 | 0.000 | Supported |
H4 | EDRR > GMSU | 0.351 | 0.038 | 5.361 | 0.000 | Supported |
H5 | IU > GMSU | 0.375 | 0.042 | 8332 | 0.000 | Supported |
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Rădulescu, A.T.; Rădulescu, C.M.; Kablak, N.; Reity, O.K.; Rădulescu, G.M.T. Impact of Factors That Predict Adoption of Geomonitoring Systems for Landslide Management. Land 2023, 12, 752. https://doi.org/10.3390/land12040752
Rădulescu AT, Rădulescu CM, Kablak N, Reity OK, Rădulescu GMT. Impact of Factors That Predict Adoption of Geomonitoring Systems for Landslide Management. Land. 2023; 12(4):752. https://doi.org/10.3390/land12040752
Chicago/Turabian StyleRădulescu, Adrian T., Corina M. Rădulescu, Nataliya Kablak, Oleksandr K. Reity, and Gheorghe M. T. Rădulescu. 2023. "Impact of Factors That Predict Adoption of Geomonitoring Systems for Landslide Management" Land 12, no. 4: 752. https://doi.org/10.3390/land12040752
APA StyleRădulescu, A. T., Rădulescu, C. M., Kablak, N., Reity, O. K., & Rădulescu, G. M. T. (2023). Impact of Factors That Predict Adoption of Geomonitoring Systems for Landslide Management. Land, 12(4), 752. https://doi.org/10.3390/land12040752