Robust Dynamic Bus Control: A Distributional Multi-agent Reinforcement Learning Approach
Jiawei Wang, Lijun Sun

TL;DR
This paper introduces a distributional multi-agent reinforcement learning framework called IQNC-M that enhances the robustness and reliability of bus control systems under various uncertainties and extreme events.
Contribution
It develops a novel distributional MARL framework with meta-learning for robust, continuous control in bus systems, addressing real-world uncertainties.
Findings
Improves bus system efficiency and reliability under disturbances
Outperforms traditional and existing MARL control models
Handles extreme events like traffic perturbations and demand surges
Abstract
Bus system is a critical component of sustainable urban transportation. However, the operation of a bus fleet is unstable in nature, and bus bunching has become a common phenomenon that undermines the efficiency and reliability of bus systems. Recently research has demonstrated the promising application of multi-agent reinforcement learning (MARL) to achieve efficient vehicle holding control to avoid bus bunching. However, existing studies essentially overlook the robustness issue resulting from various events, perturbations and anomalies in a transit system, which is of utmost importance when transferring the models for real-world deployment/application. In this study, we integrate implicit quantile network and meta-learning to develop a distributional MARL framework -- IQNC-M -- to learn continuous control. The proposed IQNC-M framework achieves efficient and reliable control…
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Taxonomy
TopicsTransportation Planning and Optimization · Transportation and Mobility Innovations · Traffic control and management
Methodstravel james
