English

A Closed-loop, State-centric, Multi-agent Framework for Passenger Load Estimation from Heterogeneous Data Streams

Machine Learning 2026-05-20 v1 Artificial Intelligence Systems and Control Systems and Control

Abstract

To support operations and passenger-facing services, transit agencies need reliable passenger load trajectories. Currently, load estimates are typically inferred from imperfect sensing systems rather than fully observed, and the accuracy of modern automatic passenger counting (APC) systems still varies with station layout, flow intensity, and operating conditions. To address the challenges of robust passenger load estimation from heterogeneous data streams, including incremental count errors, evidence conflicts, and context-dependent sensor reliability, we propose a closed-loop, state-centric, multi-agent framework. This method enforces physical feasibility at every step, allocates trust dynamically among evidence sources, and feeds physics-derived violation residuals back into training for robustness improvement. The architecture consists of a unified stop-event backbone, a coupled Perception--Physical--Fusion loop for stop-by-stop inference, and optional trip-level macro-correction and closed-loop calibration modules.

Keywords

Cite

@article{arxiv.2605.19834,
  title  = {A Closed-loop, State-centric, Multi-agent Framework for Passenger Load Estimation from Heterogeneous Data Streams},
  author = {Yiyao Xu and Hao Zhou and Yuhang Wang and Jingran Sun},
  journal= {arXiv preprint arXiv:2605.19834},
  year   = {2026}
}

Comments

Preprint version of a paper accepted by the 2026 IEEE 29th International Conference on Intelligent Transportation Systems (ITSC). 7 pages, 4 figures