Building Urban Public Traffic Dynamic Network Based on CPSS: An Integrated Approach of Big Data and AI
Abstract
1. Introduction
2. Research and Development Trends
2.1. Development of Urban Public Transportation
2.2. From CPS to CPSS
2.3. CPSS for Public Transportation
3. The Framework of CPSS-UPTDN
3.1. Basic Modules in CPSS-UPTDN
3.2. The Integration of AI and Big Data in CPSS-UPTDN
4. Key Technologies of CPSS-UPTDN
4.1. Collection and Transmission for Big Data in UPTDN
4.2. AI Methods in UPTDN
4.3. Implementation of CPSS-UPTDN Based on ACP Method
Algorithm 1 The pipeline of CPSS-UPTDN |
Input: Multi-source big data generated by real urban public transportation output: The optimal dispatching service and personalized recommendation 1: Data acquisition systems capture and store the big data. 2: The basic models of the urban public transportation system are established by the fusion and analysis of multi-source data. 3: The artificial public transport system is established by the basic model and artificial social method, then the CPSS-UPTDN platform is built. 4: while The real system generates real-time travel information do 5: Travel demand is fed back into the artificial system. 6: According to the computational experiments, the effective bus dispatching scheme is evaluated and verified in an artificial system. 7: yeild Output effective scheme and provide personalized service for travelers. 8: The real transportation system generates new multi-source traffic big data. 9: if Periodical time is up then 10: Data acquisition systems collect new traffic data. 11: Update the basic traffic models. 12: Update the artificial traffic system and platform. 13: end if 14: end while |
5. A Detailed Case of CPSS-UPTDN
5.1. Acquiring Useful Information from Triple Space
5.2. Data Extraction and Fusion
5.3. Prediction Model Construction and Analysis
- Mean absolute error ():
- Mean absolute percentage error ():
5.4. Parallel Execution and Output
6. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Abbreviations
CPSS | Cyber-physical-social system |
ITS | intelligent transportation systems |
UPTDN | Urban public traffic dynamic network |
APTS | Advanced public transportation systems |
AI | Artificial Intelligent |
ACP | Artificial system, Computational experiments, Parallel execution |
TAZ | Traffic analysis zone |
HDFS | Hadoop Distributed File System |
API | Application Programming Interface |
SAE | Stacked AutoEncoder |
MAE | Mean Absolute Error |
MAPE | Mean Absolute Percent Error |
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Model Name | Inference Time ( s) | Training Time (epoch/s) | ||
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SAE with travel demand | ||||
SAE |
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Xiong, G.; Li, Z.; Wu, H.; Chen, S.; Dong, X.; Zhu, F.; Lv, Y. Building Urban Public Traffic Dynamic Network Based on CPSS: An Integrated Approach of Big Data and AI. Appl. Sci. 2021, 11, 1109. https://doi.org/10.3390/app11031109
Xiong G, Li Z, Wu H, Chen S, Dong X, Zhu F, Lv Y. Building Urban Public Traffic Dynamic Network Based on CPSS: An Integrated Approach of Big Data and AI. Applied Sciences. 2021; 11(3):1109. https://doi.org/10.3390/app11031109
Chicago/Turabian StyleXiong, Gang, Zhishuai Li, Huaiyu Wu, Shichao Chen, Xisong Dong, Fenghua Zhu, and Yisheng Lv. 2021. "Building Urban Public Traffic Dynamic Network Based on CPSS: An Integrated Approach of Big Data and AI" Applied Sciences 11, no. 3: 1109. https://doi.org/10.3390/app11031109
APA StyleXiong, G., Li, Z., Wu, H., Chen, S., Dong, X., Zhu, F., & Lv, Y. (2021). Building Urban Public Traffic Dynamic Network Based on CPSS: An Integrated Approach of Big Data and AI. Applied Sciences, 11(3), 1109. https://doi.org/10.3390/app11031109