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Article

Evaluating the Significance of Criteria Contributing to Decision-Making on Brownfield Land Redevelopment Strategies in Urban Areas

by
Marija Burinskienė
1,*,
Vytautas Bielinskas
1,†,
Askoldas Podviezko
2,†,
Virginija Gurskienė
4 and
Vida Maliene
3,4,*
1
Department of Urban Engineering, Vilnius Gediminas Technical University, Sauletekio ave. 11, LT-10223 Vilnius, Lithuania
2
Institute of Economics, Mykolas Romeris University, Ateities g. 20, LT-08303 Vilnius, Lithuania
3
Department of the Built Environment, Faculty of Engineering and Technology, Liverpool John Moores University, Liverpool L3 3AF, UK
4
Institute of Land Management and Geomatics, Faculty of Water and Land Management, Aleksandras Stulginskis University, Studentu 11, Akademija, LT-53361 Kaunas distr., Lithuania
*
Authors to whom correspondence should be addressed.
These authors contributed equally to this work.
Sustainability 2017, 9(5), 759; https://doi.org/10.3390/su9050759
Submission received: 3 March 2017 / Revised: 28 April 2017 / Accepted: 1 May 2017 / Published: 6 May 2017
(This article belongs to the Section Sustainable Urban and Rural Development)

Abstract

:
Brownfield land is one of the least exploited resources for urban development in a number of Eastern European countries. Establishing a rational strategy for redeveloping brownfields is an unambiguously complex task that requires considering a number of different economic, social, physical and environmental factors. The strategic decision-making has a long term impact on the quality of life, ecological balance and urban structure. Therefore, the paper is aimed at developing a comprehensive set of criteria that contribute to the redevelopment of brownfield land in urban areas. It focuses on six main development strategies that embrace creating residential, green, commercial, recreational activity and industrial areas or leaving land as a reserve. Geographic information system (GIS) tools are employed to collect the spatial information, obtain the initial set of criteria and derive the statistical data. Expert’s evaluations along with a statistical method of gauging the level of concordance of their opinion combined with Delphi method are used for determining significance of criteria within economic, social, physical (urbanistic) and environmental criteria groups. This study establishes the most significant criteria for implementing different scenarios of the brownfield land redevelopment in Vilnius, Lithuania. Developed framework will support the decision-making process in the brownfield land redevelopment aiding a sustainable urban planning.

1. Introduction

The reclamation of brownfield land, including old industrial and commercial areas, remains one of the priorities set by the EU policy aimed at gradually increasing density of population in urban areas. It has been estimated that approximately 500,000 hectares of brownfields suitable for reclamation were in Europe in 2005. Today, a large proportion of the brownfield land is still available for regeneration. It can be utilized for raising the economic attractiveness of cities to new investment, preserving urban identity, improving social climate and developing the prevention of natural elements in the city.
The brownfields can be defined as a land that has previously been developed, but is not in current use [1]. Derelict (abandoned) and vacant (not occupied) land can also be classified as the brownfield land. However, it should be noted that the definitions of the brownfield land vary significantly in various countries and are shaped by deindustrialization, urbanization, high density of population or other socio-economic factors [2]. Brownfields are also described as a territory that is affected by the previous use or the impact of the surrounding land and becomes unused or useless without further intervention [3]. Brownfield land provides a possibility of using free space and potential for additional urban development considering changes in the needs of the population [4]. Regeneration is the most commonly used way to exploit the potential of brownfields [5,6,7].
The research on brownfields provides a number of excellent examples of how such areas can be reclaimed thus achieving a new quality of the environment [8,9,10,11,12]. The reclamation of brownfields in Europe has been pursued through the effective integration of the concept of sustainable development into the EU projects such as Regeneration of European Sites in Cities and Urban Environments (RESCUE) [13,14] and Concerted Action on Brownfield and Economic Regeneration Network (CABERNET) [15]. The projects have been aimed at simplifying the procedure for new practical solutions seeking a sustainable development of the brownfield land. Notably, a public–private partnership (PPP) model has been increasingly successful for implementing projects on the redevelopment of brownfields [16,17,18]. A regeneration project in coastal area of Liverpool, UK, provides an excellent example of the partnership between public and private sectors [9,19]. In 2005, the EU and UK together with the private sector have paid a total of 560 million Euros for the redevelopment of the Waterfront area situated in the city. On the principle of the PPP, business and leisure complexes consisting of mixed-use areas have been built in brownfields and unused territories. About 2500 new jobs and an environmental aesthetic image have been created. Some of the old buildings have been renovated thus preserving the cultural heritage and city’s identity. A flood protection system has also been installed. The adoption of various environment-friendly solutions has resulted in a significantly decreased need for water, as well as a reduced air and water pollution in the Waterfront area of Liverpool.
The regeneration of territories and redevelopment of the brownfield land are progressively running through sustainable development and should integrally solve social, economic and environmental issues as well the problems of the physical environment [20,21,22,23]. However, the imbalance between the volumes of urban development objects and brownfields remains high, particularly, in many countries of the Eastern Europe [24,25,26]. After dissolution of Soviet bloc, Eastern European countries have experienced a sudden transition from central planning to the decentralized regulation of the market economy [27,28]. The need to reclaim unused urban brownfields, including military, industrial, and commercial buildings that do not perform their primary function, has significantly increased due to intensive economic processes, growing number of the population in big cities and the implementation of sustainable development policy [29,30,31,32]. However, due to a tight financial situation, the problem of brownfields in some Eastern European countries still remains a serious challenge. For example, in Czech Republic and Slovakia, the ongoing redevelopment processes of brownfields take place only in high-priority inner urban areas [24]. Moreover, many post-Soviet countries require methodology and strategies for brownfields redevelopment.
The paper is aimed at establishing the framework for supporting decision-making processes in the brownfield land redevelopment. The research was performed using data acquired in twenty districts (neighborhoods) of Vilnius, the capital city of Lithuania. It allowed determining the most significant criteria contributing to decision-making on brownfield land redevelopment strategies in urban areas. The obtained results will facilitate the decision-making process in the brownfield land redevelopment and assist the urban planning.

2. Methodology

2.1. Hierarchical System of Criteria

To determine the most significant criteria for implementing different scenarios of the brownfield land redevelopment, a comprehensive set of 152 criteria was established through the literature review [33,34,35,36,37,38,39,40]. As described previously [41], this initial set of criteria was used to develop the hierarchical system including economic, social, physical (urbanistic) and environmental criteria groups.
A hierarchical system of criteria used in this study allowed the following: (1) overcoming difficulties arising from using a sufficiently large set of criteria for multi-criteria analysis; (2) reducing the complexity and bias in eliciting weights of importance of criteria by experts; and (3) exploiting the flexibility and convenience of the tool of hierarchical structures.
Moreover, there are a number of other prominent features of hierarchical systems, which provide advantage whenever complexity is involved [42,43,44,45,46,47,48,49,50,51,52]. Hierarchical systems are built in blocks, which imply a faster speed of creating them. Higher levels of hierarchy have influence on the lower ones. Hierarchies are flexible, which means they can be modified in the creation process [53]. There are no formalized methods for building a hierarchical system. Usually, it is built using tradition, intuition, or structures of databases [54]. Hierarchical system can be deduced using literature or communication with experts of the related field [53].
In this study, an expert’s ranking in combination with a multiple criteria decision making (MCDM) method [41] was used to identify a final set of criteria.

2.2. Data Collection

The GIS technology was used to capture and digitize spatial data obtained for brownfield land in twenty districts of Vilnius city, as well as to combine and link up various data, including economic, social, physical and environmental indicators as described previously [55]. GIS data were then used for evaluation of each criterion from the final set of 18 criteria. As a result, a data set of 360 different multi-dimensional indicators was established. These indicators were then used for establishing criteria relative weights.

2.3. Relative Weights of Criteria

The task of establishing relative weights of criteria is a compulsory stage of any multiple criteria analysis. There are several approaches how to estimate weights of criteria by eliciting opinions from experts. The simplest and easiest to understand for experts would be using Likert scale of an appropriate number of grades. This approach unfortunately would hardly satisfy natural precision prerequisite, as vague weights would correspond to each grade [56]. At the other extreme, popular worldwide AHP (Analytic Hierarchy Process) method proposed by Saaty can be used. The latter method uses the 9-point scale, in which usually only 5 grades in fact are used [57]. In the study, having a relatively large number of criteria, this would be a serious limitation [58]. In addition, the AHP method can only be used by experts familiar with this method. Such method as UTA [59] attempts to resemble decision-maker’s global preferences omitting the stage of obtaining weights. It requires from each expert not only the evaluation of utilities induced by each value of each criterion, but also the estimation of differences between utilities of different projects. Its upgraded version UTASTAR uses group decision-support aggregation-disaggregation procedures for obtaining estimates of decision-makers’ preferences. It is a multiple stage, complicated process of reciprocal communication with experts, which again is a serious limitation in the case, when experts are chosen from the field other than operational research. Taking all above into consideration, a more favorable Delphi technique was chosen for working with a group of experts aiming to obtain consistent estimations [60].
In present study, the multiple criteria analysis was aimed at determining the most suitable redevelopment scenario Ti for each urban brownfield land. Therefore, relative weights of criteria were established for every brownfields redevelopment scenario T1-6 by using expert opinions as described previously [41]. The experts were chosen by following strict selection criteria, requiring that each expert met at least one of the following requirements: (1) have three years of experience in spatial planning, economic, environmental protection, sociology and real estate management; (2) have three years of experience in the field of architecture and at least two designed and implemented projects; and/or (3) have three years of experience in policy making with respect to urban development, spatial planning and real estate market.
In total, twelve experts agreed to participate in the survey. Relative weights of criteria were determined within each group including economic, social, urbanistic and environmental. The maximum number of criteria per criteria group was five, making the task more feasible, since a smaller number of criteria required be comparing and evaluating by the expert. Experts were asked to fill in created proprietary forms in which they were required to state weights of criteria in percent. Overall, 12 experts have responded.

2.4. Non-Parametric Statistical Analysis

In order to assess agreement among experts in respect to criteria weights, the theory of Kendall was applied [61]. Initially, the magnitudes of criteria weights were ranked. Since each brownfields regeneration scenario is perceived in a different way, weights of the criteria were determined considering each scenario T1–T6 separately. Such ranks were denoted as eik, where i = 1, 2, ..., m is the index of criteria (in our case, m is equal to 4 or 5) while k = 1, 2, ..., r is the index of denoting experts (where r is the number of responded experts, 12 in our case). Kendall’s W was used in the chi-squared test statistics for gauging the level of concordance, which depends on the sum of squared deviations of all ranks eik by all experts.
e i = k = 1 r e i k
From the mean of such sums
e ¯ = i = 1 m e i m
Consequently, Kendall’s W equals the ratio between the sum S mentioned above, calculated by Formula (3), and its largest deviation, denoted by Smax, calculated by Formula (4). The latter sum is observed in the case of the absolute concordance of expert opinions in terms of ranks of importance of criteria.
S = i = 1 m ( e i e ¯ ) 2
S max = r 2 × m × ( m 2 1 ) 12
Consequently,
W = S S max = 12 S r 2 × m × ( m 2 1 )
Chi-squared test statistics for this variable is
χ 2 = W × r × ( m 1 ) = 12 × S r × m × ( m + 1 )
The number of degrees of freedom υ = m − 1. For the test statistics, the level of significance α = 0.05 was chosen. Next, equal ranks within 6 sets of criteria were found. There were only two equal ranks at most. For the cases when ranks were equal, the following adjustment of the coefficient of concordance was applied [61].
W = 12 × S r 2 × m × ( m 2 1 ) r × ϕ ( t ϕ 3 t ϕ )
where φ denotes the sets of equal ranks, and tφ denotes the number of equal ranks within a set within φ.
Averages of weights elicited from experts, which were found to be concordant, were used in the followed analyses. The overall methodology pipeline is shown in Figure 1.

3. Results

3.1. Brownfield Land Redevelopment Scenarios

In order to build a framework that can support the decision-making on the brownfield land redevelopment in urban areas and to assist urban planning and development, this study aimed to establish what criteria are the most significant for redevelopment of brownfield land into the urban land of a different use. Whereas a number of models involving different types of the urban land use have been described previously [62,63], the following six scenarios can be distinguished for the redevelopment of brownfield land in urban areas (Figure 2a):
  • redevelopment to a green area (T1);
  • redevelopment to a commercial area (T2);
  • redevelopment to a recreational area (T3);
  • redevelopment to an industrial area (T4);
  • redevelopment to a residential area (T5); and
  • leaving land as a city reserve (T6).
The brownfield land redevelopment scenarios Ti were considered for twenty districts of Vilnius city (Figure 2b) [64]. Resulting scenarios may reflect the character of the urban area and the possible potential of the locality. Such brownfield land redevelopment opportunities can then be successfully used for developing partnerships between public and private capital applying the PPP principle [65].

3.2. Development of the Hierarchical System of Criteria: Case Study of Vilnius City

In order to determine the most suitable redevelopment scenario for each urban brownfield land, weights of criteria have to be evaluated for each scenario Ti establishing the most significant criteria. Therefore, an initial set of 152 criteria was established as described in Methodology. To reduce complexity, the study was confined to 48 criteria (selected set of criteria), and only the 18 highest ranked criteria (final set of criteria) (Figure 3) were used for further analyses.
The GIS data collected in Lithuania showed that the capital city, Vilnius, contains a brownfield land area of 10.9 km2 (Figure 4), the major part of which (83%) is a vacant land. Twenty districts of Vilnius city, identified as important for redevelopment of brownfield land, were selected for case study. With the help of GIS technology, the data set of 360 different multi-dimensional indicators was created for 20 districts of the city providing data platform for the multiple criteria evaluation. All investigated indicators were attributed to a certain group of criteria Cj as in Figure 3. In the final set of criteria, each criteria group comprises of up to five criteria as follows: {E1, …, E4} ∈ C1; {U1, …, U5} ∈ C2; {S1, …, S5} ∈ C3; {N1, …, N4} ∈ C4. Altogether, they form list of criteria (Table 1) used for further expert evaluation and establishing the most significant criteria.

3.3. Establishing the Weights of Criteria

Most important criteria (Table 1) of different groups allow comprising facets that can influence the choice of scenario for brownfield land redevelopment from different perspectives. In this study, the mathematical model described below was used for deriving weights of 18 key criteria. This is a compulsory initial step required for applying multiple criteria evaluation.
As described in the Methodology, the relative weights of criteria were established using the Delphi technique involving a group of experts.
In order to establish the level of concordance of expert opinions for each scenario T1T6 within all groups C1C4 of criteria, calculations of the Kendall’s W along with the Chi-squared test statistics, were performed for sets of criteria within the groups and criteria groups (Table 2).
In the six sets of responses, the expert opinions appeared to be non-concordant (Table 2). The most divergent cases were presented to the same experts along with a summary of the results elicited from the group of experts, by following the Delphi method recommendations [66,67]. Therefore, the adjusted relative weights of criteria, as a remedy to the discrepancies in the expert opinion, were determined (Table 3, Table 4, Table 5, Table 6, Table 7 and Table 8).
Following the first round of Delphi-adjustment only, along with the feedback communicating the results obtained from the first round, the amended opinions of experts appeared to be concordant. Calculations of the adjusted Kendall’s W along with the Chi-squared test statistics for the new opinions of experts, for each scenario T1T6 within all groups C1C4 of criteria, and for the groups, revealed the results presented in Table 9.
In order to derive relative weights of criteria considering all 18 criteria listed in Table 1, the method of deriving weight of each criterion using both weights of the group and of each criterion within the group, as proposed by Podviezko [54], was applied. This method is appropriate to use in cases when hierarchical system of criteria is built. The weights of criteria groups are multiplied by the weights of criteria within each group as shown in Formula (8):
ω i = ω i k × ω k
where k is the index of groups, and ik is the index of criteria within group Ck.
For each brownfield redevelopment scenario T1T6, the weights of the criteria groups were calculated using Formula (8) (Figure 5). This allowed establishing the significance of each group of criteria in the case that the brownfield land is redeveloped based on particular scenario Ti. Then, the weights of each criterion within each criteria group were established (Table 10). This allowed concluding that the application of Formula (8) can assist significantly in calculating weights of criteria in a hierarchical system of criteria.

3.4. Establishing the Most Significant Criteria Contributing to Brownfield Land Redevelopment Strategies

In order to establish the most significant criteria contributing to the redevelopment scenarios of brownfield land, the weights of all criteria for each brownfield redevelopment scenario were derived as described in Methodology (Figure 6). For convenience of decision-making process, the calculated weights of individual criteria for each redevelopment task in each group of criteria are presented in this paper in the scalar distribution form. This comparison allows a decision-maker to assess the meaningfulness of each criterion in redevelopment processes while working out a solution for one of the problems Ti.
The results revealed the most significant criteria contributing to the redevelopment of brownfield land applying a particular scenario Ti. As a result, the following most significant criteria for each case of brownfield land redevelopment scenario were identified:
Scenario T1: The criteria of the environmental group have a decisive impact, particularly criteria N3 (green areas per inhabitant, ωN3 = 0.089) and N4 (pollution from transport, ωN4 = 0.095).
Scenario T2: The criteria of the economic group have a decisive impact, particularly criteria E1 (investments in infrastructure, ωE1 = 0.112) and E2 (cost of new rental estate, ωE2 = 0.099).
Scenario T3: The criteria of social and urbanistic groups have a decisive impact, particularly criteria S4 (crime index, ωS4 = 0.083), S5 (access to educational institutions, ωS5 = 0.079) and U1. (empty sites, ωU1 = 0.076).
Scenario T4: The criteria of almost all groups, except those of the social one, equally strongly determine this redevelopment scenario. Among the prevailing criteria, E1 (investments in infrastructure, ωE1 = 0.096), E4 (number of work-places, ωE4 = 0.091), U2 (number of schools, ωU2 = 0.076), U5 (distance to the city centre, ωU5 = 0.063) and N2 (pollution from heavy industry, ωN2 = 0.078) have the major impact.
Scenario T5: The criteria of the social group have a decisive impact, particularly criteria S5 (ωS5 = 0.091) specifying accessibility to education and pre-school educational establishments.
Scenario T6: This scenario is strongly affected by environmental and urbanistic criteria, among which criteria N3 (green areas per inhabitant, ωN3 = 0.102) and U1 (empty sites per inhabitant, ωU1 = 0.082) have the major impact.
To conclude, the average weights of criteria significance (ωMi) and standard deviation (di) were calculated. Subsequently, they were ranked (Figure 7) showing that, overall, Ea1 (investments in infrastructure; ωavg.E1 = 0.079), Na3 (green areas per inhabitant; ωavg.N3 = 0.073), Ea2 (cost of new real estae; ωavg.E2 = 0.067), U1 (areas of empty sites per inhabitant; ωavg.U1 = 0.065) and N2 (pollution from heavy industry; ωavg.N2 = 0.064) are the most influential criteria in making decisions on brownfield redevelopment.

4. Discussion and Conclusions

Brownfields represent specific challenges for the environment and adjacent community as it has been affected by former uses; is derelict or underused; requires intervention to bring it back to beneficial use; and may have real or perceived contamination problems [68,69]. Moreover, all brownfields sites vary concerning their unique characteristics, such as location, size, extent of potential contamination resulting from previous use, etc. As a result, diverse stakeholders have heterogeneous concerns regarding successful and sustainable brownfield land regeneration [25].
In order to deal with the complex decision-making processes, several multi-criteria decision analysis (MCDA) approaches and tools have been developed and increasingly applied in different fields, including the land-use context. Prioritization tools based on sustainability frameworks and MCDA allow assessing requalification options from different points of view, respecting the needs of multiple stakeholders [20,43,68,70]. Due to MCDA ability to combine heterogeneous inputs with cost/benefit information and stakeholder views and being recognized as suitable tool to support the ranking of regeneration alternatives based on the sustainability framework [21,22,23,70], the previously described MCDA method [41] in combination with the expert’s ranking was used to identify a final set of criteria in this study.
With this study we aimed to establish the framework of criteria for supporting decision-making processes in the brownfield land redevelopment. The research was performed using data acquired in twenty districts of Vilnius city. A complex structure of criteria was required for such a multifaceted task. The division of criteria into groups has proved to be the most helpful solution allowing both to cast the set of criteria and enabling experts to estimate the weights of criteria.
The paper proposes a new approach for evaluation of criteria importance. The method utilizes relative weights of criteria groups and relative weights of criteria within the groups for estimation of the weights of individual criteria for each brownfield redevelopment scenario. In particular, results revealed that the redevelopment of brownfields to the commercial area is primarily related to economic criteria (ωE|T2,% = 31.58%), whereas redevelopment of brownfield land to residential areas is influenced by the social criteria (wS|T5,% = 34.08%). Not surprisingly, the economic criteria has the greatest impact on brownfields redevelopment into industrial areas (ωE|T4,% = 31.58%).
Notably, the most significant criteria contributing to the decision-making strategies for the redevelopment of brownfield land in urban areas were determined in this study. Not surprisingly, majority most important criteria for redevelopment to green, commercial, recreational, or residential areas were very relevant to the redevelopment strategy and were from the criteria groups such as environmental (green areas per inhabitant and pollution from transport), economic (investments in infrastructure and cost of new rental estate), social (crime index and access to educational institutions) and social (accessibility to education and pre-school educational establishments), respectively. Interestingly, results revealed that for redevelopment to the industrial area, criteria from three criteria groups including economic, urbanistic and environmental were found to be equally important.
Overall, the analysis of brownfield land redevelopment scenarios and evaluation of the criteria significance will assist in developing decision-making guidelines for various brownfield land redevelopment solutions.

Acknowledgments

We thank Vilnius Gediminas Technical University (VGTU) for funding publication fees.

Author Contributions

All authors contributed equally to this work. Marija Burinskienė developed project idea, led the development of the methodology and contributed to draft the paper. Vytautas Bielinskas conducted the expert interviews, created graphs and figures, outlined conclusions and recommendations, contributed to draft the paper. Askoldas Podviezko developed the model of quantitative and qualitative data collection, performed multiple criteria analysis and calculations, and contributed to draft the paper. Virginija Gurskienė contributed to the revision and improvement of final paper. Vida Maliene analyzed data, contributed to draft the paper and was responsible for the final paper revision and improvement. All authors discussed the results and commented on the paper.

Conflicts of Interest

The authors declare no conflicts of interest.

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Figure 1. Methodology pipeline.
Figure 1. Methodology pipeline.
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Figure 2. Redevelopment of urban brownfields to the land of a different function (a); and districts of Vilnius city (b).
Figure 2. Redevelopment of urban brownfields to the land of a different function (a); and districts of Vilnius city (b).
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Figure 3. Hierarchical system of criteria.
Figure 3. Hierarchical system of criteria.
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Figure 4. Spatial dispersion of urban projects developed in the brownfields of Vilnius city.
Figure 4. Spatial dispersion of urban projects developed in the brownfields of Vilnius city.
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Figure 5. Relative weights of each group of criteria for each brownfield redevelopment scenario (%).
Figure 5. Relative weights of each group of criteria for each brownfield redevelopment scenario (%).
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Figure 6. The weights of individual criteria for each brownfield redevelopment scenario (ωMi|T1…6).
Figure 6. The weights of individual criteria for each brownfield redevelopment scenario (ωMi|T1…6).
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Figure 7. The calculated average values (ωMi,di) of criteria weights and their standard deviations.
Figure 7. The calculated average values (ωMi,di) of criteria weights and their standard deviations.
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Table 1. Definitions of criteria.
Table 1. Definitions of criteria.
Group of Economic CriteriaGroup of Urbanistic Criteria
  • E1—Infrastructure investment
  • E2—Cost for new real estate
  • E3—Number of projects funded by EU
  • E4—Number of workspaces
  • U1—Empty sites
  • U2—Number of schools
  • U3—State and average age of new constructions
  • U4—Magnitude of new constructions
  • U5—Distance to the city center
Group of Social CriteriaGroup of Environmental Criteria
  • S1—The level of unemployment
  • S2—The level of poverty
  • S3—Household incomes
  • S4—The level of public crimes
  • S5—Access to educational institutions
  • N1—Soil contamination
  • N2—Heavy industry pollution
  • N3—Green areas
  • N4—Transport pollution
Table 2. The values of the Kendall’s W and Chi-squared for the sets of criteria within groups, and criteria groups prior to corrections.
Table 2. The values of the Kendall’s W and Chi-squared for the sets of criteria within groups, and criteria groups prior to corrections.
Wχ2No. of Objectsχ2crχ2χ2cr
T1
Groups0.33011.8747.814.06
Economic0.821 *29.56 *47.8121.75
Urbanistic0.36117.3359.497.84
Social0.31415.0859.495.59
Environmental0.33712.1347.814.32
T2
Groups0.81529.3347.8121.52
Economic0.76727.6047.8119.79
Urbanistic0.301 *14.43 *59.494.94
Social0.1748.3359.49−1.16
Environmental0.1856.6747.81−1.14
T3
Groups0.550 *19.79 *47.8111.98
Economic0.63322.8047.8114.99
Urbanistic0.44321.2559.4911.76
Social0.417 *20.00 *59.4910.51
Environmental0.71525.7347.8117.92
T4
Groups0.45616.4047.818.59
Economic0.74426.8047.8118.99
Urbanistic0.663 *31.81 *59.4922.32
Social0.32815.7559.496.26
Environmental0.60421.7347.8113.92
T5
Groups0.62622.5347.8114.72
Economic0.68524.6747.8116.86
Urbanistic0.191 *9.15 *59.49−0.34
Social0.34416.5059.497.01
Environmental0.0782.8047.81−5.01
T6
Groups0.27810.0047.812.19
Economic0.1676.0047.81−1.81
Urbanistic0.58728.1759.4918.68
Social0.1989.5059.490.01
Environmental0.1043.7347.81−4.08
* Adjusted Kendall’s W and Chi-squared value, whenever equal ranks are found in a set, are denoted with an asterisk.
Table 3. Corrections in Scenario 2 by Expert 10 (social criteria).
Table 3. Corrections in Scenario 2 by Expert 10 (social criteria).
CriterionUnemployment RatePoverty RateTotal Household IncomeCrime IndexAccess to Schools and Pre-Schools
Before27%12%8%19%35%
After22%17%27%19%15%
Table 4. Corrections in Scenario 2 by Expert 11 (environmental criteria).
Table 4. Corrections in Scenario 2 by Expert 11 (environmental criteria).
CriterionSoil PollutionPollution from Factories, etc.Spread of Forests and Green AreasPollution from Transport
Before30%10%35%25%
After10%30%35%25%
Table 5. Corrections in Scenario 5 by Expert 11 (urbanistic criteria).
Table 5. Corrections in Scenario 5 by Expert 11 (urbanistic criteria).
CriterionEmpty SitesNumber of SchoolsState and Average Age of New ConstructionsMagnitude of New ConstructionsDistance to the City Centre
Before25%30%10%15%20%
After10%30%25%15%20%
Table 6. Corrections in Scenario 5 by Expert 2 (environmental criteria).
Table 6. Corrections in Scenario 5 by Expert 2 (environmental criteria).
CriterionSoil PollutionPollution from Factories, etc.Spread of Forests and Green AreasPollution from Transport
Before35%10%25%30%
After10%35%25%30%
Table 7. Corrections in Scenario 5 by Expert 5 (environmental criteria).
Table 7. Corrections in Scenario 5 by Expert 5 (environmental criteria).
CriterionSoil PollutionPollution from Factories, etc.Spread of Forests and Green AreasPollution from Transport
Before30%11%33%26%
After11%30%33%26%
Table 8. Corrections in Scenario 6 by Expert 2 (economic criteria).
Table 8. Corrections in Scenario 6 by Expert 2 (economic criteria).
CriterionInvestments in InfrastructureNew Construction CostNumber of Undertaken EU ProjectsNumber of Work-Places
Before15%23%27%35%
After35%23%15%27%
Table 9. The values of the Kendall’s W and Chi-squared for the sets of criteria within groups, and criteria groups after adjustment.
Table 9. The values of the Kendall’s W and Chi-squared for the sets of criteria within groups, and criteria groups after adjustment.
Wχ2No. of Objectsχ2crχ2χ2cr
T1
Groups0.33011.8747.814.06
Economic0.821 *29.56 *47.8121.75
Urbanistic0.36117.3359.497.84
Social0.31415.0859.495.59
Environmental0.33712.1347.814.32
T2
Groups0.81529.3347.8121.52
Economic0.76727.6047.8119.79
Urbanistic0.301 *14.43 *59.494.94
Social0.32615.6759.496.18
Environmental0.2749.8747.812.06
T3
Groups0.550 *19.79 *47.8111.98
Economic0.63322.8047.8114.99
Urbanistic0.44321.2559.4911.76
Social0.417 *20.00 *59.4910.51
Environmental0.71525.7347.8117.92
T4
Groups0.45616.4047.818.59
Economic0.74426.8047.8118.99
Urbanistic0.663 *31.81 *59.4922.32
Social0.32815.7559.496.26
Environmental0.60421.7347.8113.92
T5
Groups0.62622.5347.8114.72
Economic0.68524.6747.8116.86
Urbanistic0.263 *12.67 *59.493.18
Social0.34416.5059.497.01
Environmental0.33712.1347.814.32
T6
Groups0.27810.0047.812.19
Economic0.31511.3347.813.52
Urbanistic0.58728.1759.4918.68
Social0.1989.5059.490.01
Environmental0.33211.9747.814.16
* Adjusted Kendall’s W and Chi-squared value, whenever equal ranks are found in a set, are denoted with an asterisk.
Table 10. Weights of individual criteria for each brownfield scenario T1–6 in each group of criteria (%).
Table 10. Weights of individual criteria for each brownfield scenario T1–6 in each group of criteria (%).
T1T2T3T4T5T6
E134.3333.2533.0830.5029.8331.92
E228.4229.4227.2523.7530.6723.50
E318.5816.5021.0816.6718.9220.08
E418.6720.6718.6728.9220.4224.50
Σ = 100%Σ = 100%Σ = 100%Σ = 100%Σ = 100%Σ = 100%
U122.7521.2527.5828.8314.5030.92
U213.9211.7522.3312.6723.6714.75
U320.5818.9217.3317.9221.5818.00
U417.2525.4214.5023.7520.3322.17
U527.7523.0018.2516.8320.1714.17
Σ = 100%Σ = 100%Σ = 100%Σ = 100%Σ = 100%Σ = 100%
S115.0018.1716.5026.4217.4215.25
S218.4219.8315.0820.9218.4221.42
S317.1724.8317.6721.0820.9216.00
S425.1722.6725.9217.0016.5823.17
S524.4214.5824.7514.4226.5824.33
Σ = 100%Σ = 100%Σ = 100%Σ = 100%Σ = 100%Σ = 100%
N120.0018.9218.0030.9217.1722.00
N219.3328.7531.9229.3330.8320.83
N329.5029.6730.6718.9226.0832.92
N431.2522.6719.4220.8325.7524.33
Σ = 100%Σ = 100%Σ = 100%Σ = 100%Σ = 100%Σ = 100%

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MDPI and ACS Style

Burinskienė, M.; Bielinskas, V.; Podviezko, A.; Gurskienė, V.; Maliene, V. Evaluating the Significance of Criteria Contributing to Decision-Making on Brownfield Land Redevelopment Strategies in Urban Areas. Sustainability 2017, 9, 759. https://doi.org/10.3390/su9050759

AMA Style

Burinskienė M, Bielinskas V, Podviezko A, Gurskienė V, Maliene V. Evaluating the Significance of Criteria Contributing to Decision-Making on Brownfield Land Redevelopment Strategies in Urban Areas. Sustainability. 2017; 9(5):759. https://doi.org/10.3390/su9050759

Chicago/Turabian Style

Burinskienė, Marija, Vytautas Bielinskas, Askoldas Podviezko, Virginija Gurskienė, and Vida Maliene. 2017. "Evaluating the Significance of Criteria Contributing to Decision-Making on Brownfield Land Redevelopment Strategies in Urban Areas" Sustainability 9, no. 5: 759. https://doi.org/10.3390/su9050759

APA Style

Burinskienė, M., Bielinskas, V., Podviezko, A., Gurskienė, V., & Maliene, V. (2017). Evaluating the Significance of Criteria Contributing to Decision-Making on Brownfield Land Redevelopment Strategies in Urban Areas. Sustainability, 9(5), 759. https://doi.org/10.3390/su9050759

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