Multi-residual Mixture of Experts Learning for Cooperative Control in Multi-vehicle Systems
Vindula Jayawardana, Sirui Li, Yashar Farid, Cathy Wu

TL;DR
This paper introduces MRMEL, a novel learning framework that enhances autonomous vehicle control policies for traffic management by combining residual learning with mixture of experts, leading to improved environmental outcomes.
Contribution
The paper proposes MRMEL, a new framework that dynamically combines residual reinforcement learning with a mixture of expert policies for robust Lagrangian traffic control across diverse scenarios.
Findings
Achieved 4%-9% reduction in vehicle emissions.
Validated on real-world traffic data from multiple cities.
Outperformed baseline control policies in diverse scenarios.
Abstract
Autonomous vehicles (AVs) are becoming increasingly popular, with their applications now extending beyond just a mode of transportation to serving as mobile actuators of a traffic flow to control flow dynamics. This contrasts with traditional fixed-location actuators, such as traffic signals, and is referred to as Lagrangian traffic control. However, designing effective Lagrangian traffic control policies for AVs that generalize across traffic scenarios introduces a major challenge. Real-world traffic environments are highly diverse, and developing policies that perform robustly across such diverse traffic scenarios is challenging. It is further compounded by the joint complexity of the multi-agent nature of traffic systems, mixed motives among participants, and conflicting optimization objectives subject to strict physical and external constraints. To address these challenges, we…
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