Developing Evaluation Framework for Intelligent Transport System on Public Transportation in Bangkok Metropolitan Regions Using Fuzzy AHP
Abstract
:1. Introduction
2. Literature Review
2.1. ITS and APTS Assessment Framework Subsection
2.2. AHP, and Fuzzy AHP of Transportation, ITS, and Public Transportation
3. Research Methodology and Materials
3.1. Dimension and Indicator Determination
3.1.1. Dimension Determination
3.1.2. Indicator Determination
3.2. Dimension and Indicator Weighting Analysis by Fuzzy AHP
3.3. Opinion Survey Analysis
- What is the most important for APTS development in Thailand?
- What is the most challenge of APTS development in Thailand?
- How can the responsible agencies improve the planning process of APTS in Thailand?
- What is the biggest challenge of system evaluation in Thailand?
- How can the responsible agencies improve the evaluation process?
4. Result of Questionnaires and Discussion
4.1. Fuzzy AHP Weighting of APTS
4.2. Experts’ Perspective Analysis
4.3. Correlation of Fuzzy AHP and Experts’ Perspective Analysis
5. Conclusions
- It is important to eradicate the restriction of integrated and collaborated procedures of data and information among stakeholders, especially in the public and private sectors.
- The agreement of open data platform should be brought out for discussion in order to implement, which has a result in fluent data integration implementation.
- The appropriate central agency should be assigned to respond to an assessment of project development with legal stated roles and responsibilities while the committee or executive board can be applied to be a channel of regulation.
- The plan and action plan should be elaborated to stakeholders with definite goals, objectives, directions, procedures, and evaluated indicators of impacts of project development under the plan.
- The continual project development and maintenance should be identified for a reliable and sustainable system that can serve an effective information integration and big data analysis.
- Lastly, the service should be designed to serve users’ satisfaction which leads to user participation for both planning and evaluation of the result of development.
6. Recommendation
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Conflicts of Interest
References
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Purpose | Strategy | Goals | Indicators | Target | |||
---|---|---|---|---|---|---|---|
3 Years | 5 Years | 10 Years | |||||
ITS for Green Mobility | Automatic Traffic Management | Assistive Public Transport | Promotion of Public Transport | The proportion of public transport users | 42% | 45% | 53% |
Interactive Demand Management | Mobility Improvement | Average speed on city streets network during rush hour | 28% | 28% | 28% | ||
ITS Assistive Solution | Intensive Transport Safety | Safety Increase | Number of road accident (per 100,000 times) | 0.28 | 0.24 | 0.13 | |
ITS Integrated Center | Integrative Mobility Center | Establishment of an Information Integration Center | ITS integrated center authorities were set up in BMR | - | Set up | Set up | |
Percentage of units that link data to the center | - | 60% | 100% | ||||
Percentage of signal junction controlled and commanded by the center | - | - | 100% | ||||
Percentage of traffic enforcement camera connected to the center | - | - | 100% |
Authors | Indicator Categories | Ref. |
---|---|---|
USDOT (1994) | APTS indicators and objectives | [16] |
Levine and Underwood (1996) | Outcomes of ITS development and goals | [40] |
Lomax, Vadali and Eisele (2000) | Performance measurement and ITS goal and objectives within matrices of economic, quality of life and environmental quality | [41] |
Yeh, Deng and Chang (2000) | To investigate bus company performance | [12] |
Hanaoko and Kunadhamraks (2008) | To evaluate logistic performance | [42] |
Dobranskyte-Niskota et al. (2009) | To assess sustainability of transport activities | [26] |
Othaman and Ku-Mahamud (2010) | To investigate the bus company performance | [35] |
Suwardo (2010) | To figure out the performance of bus service system for public transport improvement | [36] |
Shiau and Liu (2013) | To find the goal of measuring transport sustainability at the country or city level | [27] |
Shaheen and Finson (2013) | Predicted Impacts for each ITS functions to elaborate the impact on energy reduction | [1] |
Zou et al. (2014) | To evaluate urban public transportation in Kunming, China | [43] |
Ambrosino et al. (2015) | To assess ITS applications in public transport services | [37] |
AECOM (2015) | ITS KPIs in terms of deployment and benefit related | [44] |
Niglio and Comitale (2015) | Indicators of Sustainable Mobility Program | [28] |
Mitropoulos and Prevedouros (2016) | Indices of urban transportation vehicle-based assessment on sustainable theme | [39] |
Verseckiene, Palsaitis and Yatskiv (2017) | Indicators of sustainable theme to choose transportation service | [45] |
Bosch et al. (2017) | Indicators related to mobility for accessibility in smart city | [46] |
Wengler (2017) | Indicators of Mobility as a Service | [30] |
Krmac and Djordjevic (2017a) | Proposed indicators for train control information systems for sustainable railway evaluation | [47] |
Krmac and Djordjevic (2017b) | Proposed indicators for railway ITS evaluation | [48] |
Garau and Pavan (2017) | Indicators of accessibility under Smart Sustainable Cities | [49] |
Chen and Deng (2018) | Evaluation Criteria for sustainable transport solution assessment framework | [10] |
Lopez-Carreiro and Monzon (2018) | Smartness indicators for Sustainability Transportation and Innovation Transportation | [32] |
Creger, Espino and Sanchez (2018) | Recommended equity indicators in mobility framework | [33] |
Lee (2018) | Sub-criteria to represent value of APTS, provider, and users to prioritize APTS consideration for urban type | [38] |
Mlinaric, Djordjvevic and Krmac (2018) | Indicators to formulate evaluation framework for railway ITS | [50] |
Weng et al. (2108) | Subindexes of Satisfaction Evaluation Index from passenger perspective to bus service | [51] |
Longo, Zappatore and Navathe (2019) | Indicators for delivered and for perceived to examine Quality of Service of local public transport | [39] |
Cyril, Mulangi and George (2019) | Performance optimization of public transport consideration by decision Variable of user-oriented and operator oriented | [52] |
Buenk, Geobbelaar and Meyer (2019) | Indicators to formulate framework for the sustainable assessment of (Micro)transit systems | [53] |
Zapolskyte, Burinskiene and Trepanier (2020) | Indicators of measurement of smartness level of urban mobility | [34] |
Antolin et al. (2020) | Sustainable index and smartness index to develop evaluation framework for smartness and sustainability in cities | [7] |
Chao. Gallego and Lopez-Chao (2020) | Indicators related to mobility and transportation in category under environmental aspects, Mobility and Transport for sustainable urban design | [54] |
Chan et al. (2020) | Questions to examine the response for 6 dimensions of Sustainability of Public Transportation | [55] |
Yang, Dam and Zhang (2020) | Indicators of sustainable and integrated transport infrastructure and urban spaces design | [23] |
Criteria Category | Conditions |
---|---|
Inclusion Criteria |
|
Exclusion Criteria |
|
Criteria Category | Conditions |
---|---|
Inclusion Criteria |
|
Exclusion Criteria |
|
Linguistic Scale of Importance | AHP Crisp Scale * | Fuzzy Scale | Fuzzy Triangle Member | Defuzzied Triangle Member |
---|---|---|---|---|
EI.: Equal Importance | 1.333 | (1, 1, 3) | (1/3,1,1) | |
SI.: Slightly Importance | 3 | (1, 3, 5) | (1/5,1/3,1) | |
MI.: More Importance | 5 | (3, 5, 7) | (1/7,1/5,1/3) | |
VI.: Very Importance | 7 | (5, 7, 9) | (1/7,1/9,1/5) | |
AI.: Absolutely Importance | 8.667 | (7, 9, 9) | (1/9,1/9,1/7) |
Dimension | Indicators | Total Weight | Percentage | Rank | ||
---|---|---|---|---|---|---|
D1: Mobility | 0.177 | I1: Journey time by public transport where APTS was implemented | 0.429 | 0.0758 | 7.580% | 6 |
I2: Waiting time for the public transportation | 0.489 | 0.0863 | 8.628% | 3 | ||
I3: Common ticket and e-payment ticket increase | 0.082 | 0.0144 | 1.442% | 18 | ||
D2: Efficiency | 0.164 | I4: Travel mode share on public transportation | 0.278 | 0.0454 | 4.544% | 10 |
I5: Availability of on-board devices | 0.200 | 0.0327 | 3.271% | 11 | ||
I6: Availability of info devices at stations and bus stops | 0.170 | 0.0278 | 2.783% | 13 | ||
I7: Mobility services registration and subscription increase | 0.182 | 0.0297 | 2.969% | 12 | ||
I8: Perception of drivers on information provision | 0.059 | 0.0097 | 0.970% | 21 | ||
I9: Perception of passengers on APTS service | 0.111 | 0.0182 | 1.817% | 17 | ||
D3: Reliability | 0.184 | I10: Tendency of suggestion complain and improvement | 0.327 | 0.0602 | 6.015% | 19 |
I11: Percentage of Information accuracy | 0.317 | 0.0583 | 5.834% | 7 | ||
I12: Accuracy of bus location | 0.279 | 0.0514 | 5.143% | 8 | ||
I13: Availability of system failure recovery | 0.464 | 0.0842 | 8.419% | 9 | ||
D4: Accessibility | 0.182 | I14: Smart public transport stop density | 0.536 | 0.0974 | 9.744% | 4 |
I15: Smart public transport network density | 0.289 | 0.0191 | 1.908% | 2 | ||
D5: Environment | 0.066 | I16: Energy consumption on public vehicles | 0.295 | 0.0195 | 1.948% | 16 |
I17: Green House Gas (GHG) emission from public transportation | 0.416 | 0.0274 | 2.744% | 15 | ||
I18: Reduction of high pollution vehicles | 0.340 | 0.0776 | 7.759% | 14 | ||
D6: Safety | 0.228 | I19: Emergency response time | 0.607 | 0.1385 | 13.845% | 5 |
I20: Traffic Accident reduction related to public transportation | 0.053 | 0.0121 | 1.211% | 1 | ||
I21: Perception of passengers on safety and security | 0.429 | 0.0758 | 7.580% | 20 |
Categories | No. of Response |
---|---|
Question 1: What is the most important for APTS development in Thailand? | |
- Law and related regulation | 9 |
- Policy and action plan | 7 |
- Technology and adaptation | 5 |
- Integrated and intermediated organization and cooperation among stakeholders | 4 |
- Quality of reliability and efficiency of system and service | |
Question 2: What is the most challenge of APTS development in Thailand? | |
- Reliability and efficiency of system and services | 9 |
- Integration among systems and services | |
- Definite and consecutive policy | 6 |
- Technology and adaptation | 5 |
- Law and restriction | 4 |
- Capacity building and knowledge | |
Question 3: How can the responsible agencies improve for planning process of APTS in Thailand? | |
- Integrated and cooperative planning procedure | 9 |
- Law and restriction adjustment | 3 |
- System standard and architect formulating | |
- Definite goals, objectives and action plans | |
- Evaluation or assessment framework formulating | |
Question 4: what is the most challenge of system evaluation in Thailand | |
- Evaluation platform formulating | 7 |
- Integration and cooperation among stakeholders | 4 |
- Information presentation of evaluation report | |
- Outcome and impact of project assessment | |
- Consonant communication of goals and objectives among stakeholders | 3 |
Question 5: how can the responsible agencies improve the evaluation process? | |
- Effective evaluation system including reliable information of measurement | 7 |
- Evaluation platform and procedure formulation | 6 |
- Specific organization for evaluation with advocated regulation | 5 |
- Integration system including open data and data integration with both public and private |
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Choosakun, A.; Yeom, C. Developing Evaluation Framework for Intelligent Transport System on Public Transportation in Bangkok Metropolitan Regions Using Fuzzy AHP. Infrastructures 2021, 6, 182. https://doi.org/10.3390/infrastructures6120182
Choosakun A, Yeom C. Developing Evaluation Framework for Intelligent Transport System on Public Transportation in Bangkok Metropolitan Regions Using Fuzzy AHP. Infrastructures. 2021; 6(12):182. https://doi.org/10.3390/infrastructures6120182
Chicago/Turabian StyleChoosakun, Aoonrot, and Chunho Yeom. 2021. "Developing Evaluation Framework for Intelligent Transport System on Public Transportation in Bangkok Metropolitan Regions Using Fuzzy AHP" Infrastructures 6, no. 12: 182. https://doi.org/10.3390/infrastructures6120182
APA StyleChoosakun, A., & Yeom, C. (2021). Developing Evaluation Framework for Intelligent Transport System on Public Transportation in Bangkok Metropolitan Regions Using Fuzzy AHP. Infrastructures, 6(12), 182. https://doi.org/10.3390/infrastructures6120182