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Research Article | Open Access

Online prediction of network-level public transport demand based on principle component analysis

Cheng ZhongPeiling WuQi ZhangZhenliang Ma( )
Department of Civil and Architectural Engineering, KTH Royal Institute of Technology, Stockholm, 10044, Sweden
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Abstract

Online demand prediction plays an important role in transport network services from operations, controls to management, and information provision. However, the online prediction models are impacted by streaming data quality issues with noise measurements and missing data. To address these, we develop a robust prediction method for online network-level demand prediction in public transport. It consists of a PCA method to extract eigen demand images and an optimization-based pattern recognition model to predict the weights of eigen demand images by making use of the partially observed real-time data up to the prediction time in a day. The prediction model is robust to data quality issues given that the eigen demand images are stable and the predicted weights of them are optimized using the network level data (less impacted by local data quality issues). In the case study, we validate the accuracy and transferability of the model by comparing it with benchmark models and evaluate the robustness in tolerating data quality issues of the proposed model. The experimental results demonstrate that the proposed Pattern Recognition Prediction based on PCA (PRP-PCA) consistently outperforms other benchmark models in accuracy and transferability. Moreover, the model shows high robustness in accommodating data quality issues. For example, the PRP-PCA model is robust to missing data up to 50% regardless of the noise level. We also discuss the hidden patterns behind the network level demand. The visualization analysis shows that eigen demand images are significantly connected to the network structure and station activity variabilities. Though the demand changes dramatically before and after the pandemic, the eigen demand images are consistent over time in Stockholm.

References

 

Arentze, T.T., Timmermans, H.H., Hofman, F., Kalfs, N., 2000. Data Needs, Data Collection and Data Quality Requirements of Activity-Based Transport Demand Models. Transportation Research Circular.

 

Beck, M.J., Hensher, D.A., Nelson, J.D., 2021. Public transport trends in Australia during the COVID-19 pandemic: an investigation of the influence of bio-security concerns on trip behaviour. J. Transport Geogr. 96, 103-167.

 

Büyükşahin, Ü.Ç., Ertekin, Ş., 2019. Improving forecasting accuracy of time series data using a new ARIMA-ANN hybrid method and empirical mode decomposition. Neurocomputing 361, 151-163.

 

Chaudhari, J., 2012. FACE RECOGNITION USING PCA ALGORITHM. Inventi Rapid: Image & Video Processing.

 

Duan, Z., Zhang, K., Chen, Z., Liu, Z., Tang, L., Yang, Y., Ni, Y., 2019. Prediction of city-scale dynamic taxi origin-destination flows using a hybrid deep neural network combined with travel time. IEEE Access 7, 127816-127832.

 
Folleco, A., Khoshgoftaar, T.M., van Hulse, J., Bullard, L., 2008. Software quality modeling: the impact of class noise on the random forest classifier. In: Proceedings of the 2008 IEEE Congress on Evolutionary Computation. IEEE World Congress on Computational Intelligence), pp. 3853–3859.
 

Gan, Z., Yang, M., Feng, T., Timmermans, H., 2020. Understanding urban mobility patterns from a spatiotemporal perspective: daily ridership profiles of metro stations. Transportation 47 (1), 315-336.

 

Gkiotsalitis, K., Cats, O., 2021. Public transport planning adaption under the COVID-19 pandemic crisis: literature review of research needs and directions. Transport Rev. 41 (3), 374-392.

 

Halvorsen, A., Koutsopoulos, H.N., Ma, Z., Zhao, J., 2020. Demand management of congested public transport systems: a conceptual framework and application using smart card data. Transportation 47 (5), 2337-2365.

 

Halyal, S., Mulangi, R.H., Harsha, M.M., 2022. Forecasting public transit passenger demand: with neural networks using APC data. Case Stud. Transport Pol. 10 (2), 965-975.

 

Hamza, M., Larocque, D., 2005. An empirical comparison of ensemble methods based on classification trees. J. Stat. Comput. Simulat. 75 (8), 629-643.

 

Jenelius, E., Cebecauer, M., 2020. Impacts of COVID-19 on public transport ridership in Sweden: analysis of ticket validations, sales and passenger counts. Transp. Res. Interdiscip. Perspect. 8, 100242.

 

Jiang, W., Ma, Z., Kim, I., Lee, S., 2020. Revealing mobility regularities in urban rail systems. Procedia Comput. Sci. 170, 219-226.

 

Jiang, W., Ma, Z., Koutsopoulos, H.N., 2022. Deep learning for short-term origin–destination passenger flow prediction under partial observability in urban railway systems. Neural Comput. Appl. 34 (6), 4813-4830.

 

Jiao, P.P., Zhao, X., Zhang, Y., Hu, Y.L., Yin, B.C., 2021. Review of human mobility pattern analysis based on big transportation data. Zhongguo Gonglu Xuebao/China J. Highw. Transport 34 (12), 175-202.

 

Jing, L., Cheng, Q., Panahi, A., 2006. Principal component analysis with optimum order sample correlation coefficient for image enhancement. Int. J. Rem. Sens. 27 (16), 3387-3401.

 

Karlaftis, M.G., Vlahogianni, E.I., 2011. Statistical methods versus neural networks in transportation research: differences, similarities and some insights. Transport. Res. C Emerg. Technol. 19 (3), 387-399.

 
Korn, F., Muthukrishnan, S., Zhu, Y., 2003. Checks and balances: monitoring data quality problems in network traffic databases. In: Proceedings of the 2003 VLDB Conference, pp. 536–547.
 
Kosolsombat, S., Saraubon, K., 2018. A review of the prediction method for intelligent transport system. In: Proceedings of the 2018 18th International Symposium on Communications and Information Technologies. ISCIT), pp. 237–240.
 
Koutsopoulos, H.N., Ma, Z., Noursalehi, P., Zhu, Y., 2019. Transit data analytics for planning, monitoring, control, and information. In: Mobility Patterns, Big Data and Transport Analytics. Elsevier, pp. 229–261.
 
Li, L.H., Zhu, J.S., Shan, X.H., Zhang, X., 2019. Prediction modeling of railway short-term passenger flow based on random forest regression. In: Proceedings of the International Conference on Green Intelligent Transportation System and Safety, pp. 867–875.
 

Lopez, C., Leclercq, L., Krishnakumari, P., Chiabaut, N., Van Lint, H., 2017. Revealing the day-to-day regularity of urban congestion patterns with 3D speed maps. Sci. Rep. 7 (1), 14029.

 
Luo, D., Cats, O., Van Lint, H., 2017. Analysis of network-wide transit passenger flows based on principal component analysis. In: Proceedings of the 2017 5th IEEE International Conference on Models and Technologies for Intelligent Transportation Systems. MT-ITS), pp. 744–749.
 

Ma, Y., Zhang, Z., Chen, S., Pan, Y., Hu, S., Li, Z., 2021. Investigating the impact of spatial-temporal grid size on the microscopic forecasting of the inflow and outflow gap in a free-floating bike-sharing system. J. Transport Geogr. 96, 103208.

 

Nassir, N., Hickman, M., Ma, Z.-L., 2015. Activity detection and transfer identification for public transit fare card data. Transportation 42 (4), 683-705.

 

Oh, S., Byon, Y.J., Jang, K., Yeo, H., 2015. Short-term travel-time prediction on highway: a review of the data-driven approach. Transport Rev. 35 (1), 4-32.

 

Pavic, Z., Novoselac, V., 2017. Investigating an overdetermined system of linear equations by using convex functions. Hacettepe J. Math. Stat. 3 (46), 865-874.

 

Pelletier, M.-P., Trépanier, M., Morency, C., 2011. Smart card data use in public transit: a literature review. Transport. Res. C Emerg. Technol. 19 (4), 557-568.

 
Prabhu Teja, G., Ravi, S., 2012. Face recognition using subspaces techniques. In: Proceedings of the 2012 International Conference On Recent Trends In Information Technology, pp. 103–107.
 

Sui, Y., Zhang, H., Shang, W., Sun, R., Wang, C., Ji, J., Song, X., Shao, F., 2020. Mining urban sustainable performance: spatio-temporal emission potential changes of urban transit buses in post-COVID-19 future. Appl. Energy 280, 115966.

 

Tang, C., Ceder, A., Ge, Y.-E., 2018. Optimal public-transport operational strategies to reduce cost and vehicle's emission. PLoS One 13 (8), e0201138.

 

Tedjopurnomo, D.A., Bao, Z., Zheng, B., Choudhury, F., Qin, A.K., 2020. A survey on modern deep neural network for traffic prediction: trends, methods and challenges. IEEE Trans. Knowl. Data Eng. 34 (4), 1544-1561.

 
Turk, M.A., Pentland, A.P., 1991. Face recognition using eigenfaces. In: Proceedings of the 1991 IEEE Computer Society Conference on Computer Vision and Pattern Recognition, pp. 586–591.
 

Turner, S., 2004. Defining and measuring traffic data quality: white paper on recommended approaches. Transport. Res. Rec.: J. Transport. Res. Board 1870 (1), 62-69.

 

Turner, S., Albert, L., Gajewski, B., Eisele, W., 2000. Archived intelligent transportation system data quality: preliminary analyses of san antonio TransGuide data. Transport. Res. Rec.: J. Transport. Res. Board 1719 (1), 77-84.

 

Wei, Y., Chen, M.-C., 2012. Forecasting the short-term metro passenger flow with empirical mode decomposition and neural networks. Transport. Res. C Emerg. Technol. 21 (1), 148-162.

 

Williams, G., 1990. Overdetermined systems of linear equations. Am. Math. Mon. 97 (6), 511-513.

 

Xia, B., Kong, F.Y., Xie, S.Y., 2013. Passenger flow forecast of urban rail transit based on support vector regression. Appl. Mech. Mater. 433, 612-616.

 
Xing, X., Zhou, X., Hong, H., Huang, W., Bian, K., Xie, K., 2015. Traffic flow decomposition and prediction based on robust principal component analysis. In: Proceedings of the 2015 IEEE 18th International Conference on Intelligent Transportation Systems, pp. 2219–2224.
 
Xu, Z., Zhu, R., Yang, Q., Wang, L., Wang, R., Li, T., 2020. Short-term bus passenger flow forecast based on the multi-feature gradient boosting decision tree. In: The International Conference on Natural Computation, Fuzzy Systems and Knowledge Discovery. Springer, Cham, pp. 660–673.
 

Yang, D., Chen, K., Yang, M., Zhao, X., 2019. Urban rail transit passenger flow forecast based on LSTM with enhanced long-term features. IET Intell. Transp. Syst. 13 (10), 1475-1482.

 

Yin, X., Wu, G., Wei, J., Shen, Y., Qi, H., Yin, B., 2022. Deep learning on traffic prediction: methods, analysis, and future directions. IEEE Trans. Intell. Transport. Syst. 23 (6), 4927-4943.

 

Zhang, P., Ma, Z., Weng, X., Koutsopoulos, H.N., 2022. Recovering the association between unlinked fare machines and stations using automated fare collection data in metro systems. Transport. Res. Rec. J. Transport. Res. Board 2676 (2), 718-731.

Communications in Transportation Research
Article number: 100093
Cite this article:
Zhong C, Wu P, Zhang Q, et al. Online prediction of network-level public transport demand based on principle component analysis. Communications in Transportation Research, 2023, 3: 100093. https://doi.org/10.1016/j.commtr.2023.100093

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Received: 19 October 2022
Revised: 19 December 2022
Accepted: 28 December 2022
Published: 16 January 2023
© 2023 The Author(s).

This is an open access article under the CC BY-NC-ND license (http://creativecommons.org/licenses/by-nc-nd/4.0/).

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