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Hierarchical energy management for fuel cell buses: A graph-agent DRL framework bridging macroscopic traffic flow and microscopic powertrain dynamics

Author

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  • Xu, Hongyang
  • He, Hongwen
  • Yan, Mei
  • Wu, Jingda
  • Li, Menglin

Abstract

Despite advances in connected vehicle technologies, fuel cell buses (FCBs) still face critical challenges in energy management: inefficient utilization of multi-source traffic data and suboptimal coordination between ecological driving and powertrain optimization. This study addresses these limitations through a hierarchical reinforcement learning framework that synergistically optimizes eco-driving patterns and energy allocation. A spatial-topological graph architecture explicitly models FCB interactions with dynamic traffic elements, while an edge-enhanced graph convolutional network (EGCN) extracts hierarchical spatial-temporal features from heterogeneous traffic data. By integrating EGCN with deep reinforcement learning, the framework improves eco-driving policy performance while considering both hydrogen consumption and powertrain degradation costs at the energy management layer. Results indicate that the proposed strategy reduces travel time by 4.76 % and energy consumption by 3.37 % compared to the intelligent driver model (IDM), and achieves 3.84 % and 5.98 % reductions, respectively, compared to the reinforcement learning strategy without EGCN enhancement. The energy management module achieves 97.84 % economic efficiency relative to dynamic programming (DP) benchmarks. This work uniquely leverages EGCN to resolve high-dimensional traffic-state representations in FCB operations, while developing a hierarchical DRL framework for energy-efficient optimization that bridges macroscopic traffic dynamics with microscopic powertrain control.

Suggested Citation

  • Xu, Hongyang & He, Hongwen & Yan, Mei & Wu, Jingda & Li, Menglin, 2025. "Hierarchical energy management for fuel cell buses: A graph-agent DRL framework bridging macroscopic traffic flow and microscopic powertrain dynamics," Energy, Elsevier, vol. 332(C).
  • Handle: RePEc:eee:energy:v:332:y:2025:i:c:s0360544225028798
    DOI: 10.1016/j.energy.2025.137237
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