Abstract
Energy management is critical to reduce energy consumption and extend the service life of hybrid power systems. This article proposes an energy management strategy based on deep reinforcement learning with awareness of battery health for an urban power-split hybrid electric bus. In this article, a specific driving cycle of the test bus route is constructed through a naturalistic data-driven method to evaluate the practical operating costs of the hybrid electric bus accurately. Furthermore, an energy management strategy based on twin delayed deep deterministic policy gradient algorithm considering battery health is innovatively designed to minimize the total operating cost with a tradeoff between fuel consumption and battery degradation. Finally, the superiority of the proposed strategy over other state-of-the-art deep reinforcement learning-based strategies including deep deterministic policy gradient and double deep Q-learning is validated. Simulation results show that the constructed driving cycle can effectively reflect the real traffic conditions of the test bus route, and the proposed strategy can reduce the total operating cost while extending the battery life efficiently. This article makes contribution to the reliable evaluation of the practical operating costs and the extension of the battery life for urban hybrid electric buses through deep reinforcement learning methods.
Original language | English |
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Article number | 119353 |
Journal | Applied Energy |
Volume | 321 |
DOIs | |
Publication status | Published - 1 Sept 2022 |
Keywords
- Battery health
- Driving cycle construction
- Energy management
- Hybrid electric bus
- Twin delayed deep deterministic policy gradient (TD3)