Predicting Subway Passenger Flows Under Incident Situation with Causality

32 Pages Posted: 18 Dec 2024

See all articles by Xiannan Huang

Xiannan Huang

affiliation not provided to SSRN

Shuhan Qiu

affiliation not provided to SSRN

Quan YUAN

Tongji University

Chao YANG

Tongji University

Abstract

In the context of rail transit operations, real-time passenger flow prediction is essential; however, most models primarily focus on normal conditions, with limited research addressing incident situations. There are several intrinsic challenges associated with prediction during incidents, such as a lack of interpretability and data scarcity. To address these challenges, we propose a two-stage method that separates predictions under normal conditions and the causal effects of incidents. First, a normal prediction model is trained using data from normal situations. Next, the synthetic control method is employed to identify the causal effects of incidents, combined with placebo tests to determine significant levels of these effects. The significant effects are then utilized to train a causal effect prediction model, which can forecast the impact of incidents based on features of the incidents and passenger flows. During the prediction phase, the results from both the normal situation model and the causal effect prediction model are integrated to generate final passenger flow predictions during incidents. Our approach is validated using real-world data, demonstrating improved accuracy. Furthermore, the two-stage methodology enhances interpretability. By analyzing the causal effect prediction model, we can identify key influencing factors related to the effects of incidents and gain insights into their underlying mechanisms. Our work can assist subway system managers in estimating passenger flow affected by incidents and enable them to take proactive measures. Additionally, it can deepen researchers' understanding of the impact of incidents on subway passenger flows.

Keywords: subway incident, passenger flow prediction, causal inference, significant test

Suggested Citation

Huang, Xiannan and Qiu, Shuhan and YUAN, Quan and YANG, Chao, Predicting Subway Passenger Flows Under Incident Situation with Causality. Available at SSRN: https://ssrn.com/abstract=5052419 or http://dx.doi.org/10.2139/ssrn.5052419

Xiannan Huang

affiliation not provided to SSRN ( email )

No Address Available

Shuhan Qiu

affiliation not provided to SSRN ( email )

No Address Available

Quan YUAN

Tongji University ( email )

Chao YANG (Contact Author)

Tongji University ( email )

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