The Novel Paradigm of Economics Driven for Local Smart Sustain Cities Modeling Using Exploratory Factor Analysis and Planning Technique Using Fuzzy Evaluation Decision Making
Abstract
:1. Introduction
2. Smart cities driven
3. Indicator of Local Smart Sustain Cities and Current Smart Cities Modeling Method
- ISO 37120; Sustain development of communities—indicators for city services and quality of life [22]
- ISO 37122; Sustainable development in communities—indicators for smart cities [1]
- ETSI-TS 103-463 Key performance indicators for sustainable digital multi-service cities [23]
- ITU-TY 4901; Key performance indicators related to the use of information and communication technology in smart sustain cities [24]
- ITU-TY 4902; Key performance indicators related to the sustainability impact of information and communication technology in smart sustainable cities [25]
- SCs Ranking of Europe medium-sized cities [26].
4. Methodology
4.1. Research Design: Quantitative Dominant Crossover Mixed Analysis Solution
- collection of relevant indicators collected from reviews
- creation of questionnaires using suitable indicators for LSSCs selected from reviews and by experts
- collection of LSSCs information from model cities, data improvement and testing using statistical programs
- LSSCs modeling with EFA.
4.2. Factor Analysis and EFA Method
- FA is used to lessen the large quantity of variables or components
- FA generates the structure of the model from measured variables and latent constructs and it also helps the formation and refinement of the theory
- FA is used for the validity of structure of self-reporting scales [36].
4.2.1. The Kaiser-Meyer-Olkin (KMO)
4.2.2. Bartlett’s Test of Sphericity
4.3. Fuzzy Logic Decision Making Method
- Qualitative data input from phase one
- Quantitative data based on economic information.
4.3.1. Determination of LSSCs Index Value Fuzzy Input
- Set LV gained from quantitative data e.g., economic information, and qualitative data e.g., environment management priority; poor, ordinary, good (Figure 6). This data will be put into each input/output variable using FMF. This research also uses Triangular Membership Function (TMF).
- Qualitative data value and quantitative data value are then transformed into LV in FLE, which is then processed under fuzzy rule condition, with the “if-then” rule (AND/OR/NOT)”, this affects the output results from input value calculation using FIS process (Figure 5).
- Defuzzification then processes fuzzy output using degree of membership in the form of single numerical value [30].
4.3.2. Fuzzy Membership Function
4.3.3. Fuzzification, Fuzzy Rule and Fuzzy Inference
- Fuzzification is the action of setting degree of membership of a fuzzy set’s input variable (x) using membership function. The resulting value is a membership value that varies from 0 to 1.
- Fuzzy rules is the determination of contribution of the input variables to the output responses using linguistic term approaches, separated into two parts. First, a premise (input) is set as part of the “if” rule, then the second part consists of the conclusion, which is a single fact (one output) [30,42]. The number of fuzzy rules depend on the number of variable and degree of input variable (Equation (3)).
- Fuzzy inference is the process that consists of two parts. First, the implication process, in which fuzzy conclusions (Ni) of each rule (Ri) is set. Truth value (Tj) for each premise of the proposition in Ri is also set. Premise, in this instance, consists of two or more variables. Truth value is set by logical connectivity operation (fuzzy operator) AND/OR/NOT. Output gained through the implication process is the fuzzy conclusion (Ni) of each rule, as shown in Figure 7, on the horizontal arrow. Next is the aggregation process, which is after the fuzzy conclusion (Ni) is consolidated into a single fuzzy set as shown on Figure 7 on the vertical line [30].
4.3.4. Defuzzification Method
4.4. Case study Rayong Province Thailand
5. Result and Discussion
5.1. LSSCs Indicator Set
5.2. Economic Driven of LSSCs Modeling
- EDS 1 consist of revenue ratio, GDP, domestic material consumption, expenditure ratio, debt ratio, saving ratio
- EDS 2 consist of poverty rate, disparity rate, employment rate, housing rate
- EDS 3 consist of productivity ration and business register
- EDS 4 consist of assess value ration and tax collection.
5.3. Characteristics of LSSCs Modeling
- Characteristic 1 consist of productivity, industrial waste treatment, pollution management, and industrial safety
- Characteristic 2 consist of transport efficiency and safety, freight and delivery, and transport facilities
- Characteristic 3 consist of international trading and knowledge business, attractive and reliability
- Characteristic 4 consist of food securities, water and disaster management, and agriculture area management
- Characteristic 5 consist of tourist support, and tourist attractive.
5.4. Priority Action Ranking for LSSCs Planning
6. Conclusions
Author Contributions
Funding
Conflicts of Interest
Abbreviations
CoA | Centre of Area |
ED | Economics Driven |
EDS | Economics Driver Sector |
EFA | Exploratory Factor Analysis |
FA | Factor Analysis |
FIS | Fuzzy Inference System |
FL | Fuzzy Logic |
FLDM | Fuzzy Logic Decision Making |
FLE | Fuzzy Logic Evaluation |
FMF | Fuzzy Membership Function |
LC | Local Context |
LSSCs | Local Smart Sustain Cities |
LSSCsM | Local Smart Sustain Cities Model |
LV | Linguistic Variable |
PAR | Priority Action Ranking |
SCs | Smart Cities |
SCsM | Smart Cities Model |
St | Sustainability |
StM | Sustainability Model |
TMF | Triangular Membership Function |
VRM | Varimax Rotation Method |
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Vasuaninchita, M.; Vongmanee, V.; Rattanawong, W. The Novel Paradigm of Economics Driven for Local Smart Sustain Cities Modeling Using Exploratory Factor Analysis and Planning Technique Using Fuzzy Evaluation Decision Making. Sustainability 2020, 12, 793. https://doi.org/10.3390/su12030793
Vasuaninchita M, Vongmanee V, Rattanawong W. The Novel Paradigm of Economics Driven for Local Smart Sustain Cities Modeling Using Exploratory Factor Analysis and Planning Technique Using Fuzzy Evaluation Decision Making. Sustainability. 2020; 12(3):793. https://doi.org/10.3390/su12030793
Chicago/Turabian StyleVasuaninchita, Mode, Varin Vongmanee, and Wanchai Rattanawong. 2020. "The Novel Paradigm of Economics Driven for Local Smart Sustain Cities Modeling Using Exploratory Factor Analysis and Planning Technique Using Fuzzy Evaluation Decision Making" Sustainability 12, no. 3: 793. https://doi.org/10.3390/su12030793
APA StyleVasuaninchita, M., Vongmanee, V., & Rattanawong, W. (2020). The Novel Paradigm of Economics Driven for Local Smart Sustain Cities Modeling Using Exploratory Factor Analysis and Planning Technique Using Fuzzy Evaluation Decision Making. Sustainability, 12(3), 793. https://doi.org/10.3390/su12030793