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