Entire route eco-driving method for electric bus based on rule-based reinforcement learning

Document Type

Journal Article

Publication Date

2024

Subject Area

mode - bus, infrastructure - vehicle, planning - methods

Keywords

Electric bus (EB), eco-driving

Abstract

Electric bus (EB) has gradually become one of the main ways of transportation in cities due to the low energy consumption and low pollutant emissions. As battery endurance is easily affected by various factors such as external temperature, vehicle load, and driving habits, the anxiety for the endurance of EB has become a concern for researchers. To bridge the gap, an eco-driving method based on deep reinforcement learning (DRL) is proposed to achieve the entire route energy-saving. Firstly, the significant factors including the dynamic passenger load and air conditioner is considered for the energy consumption model of the EB. Secondly, a rule-based reinforcement learning algorithm is utilized for optimizing the driving speed and strategy, which can accelerate the convergence of the proposed model and improve the average reward of the reward function. Thirdly, by adjusting the reward function of reinforcement learning algorithm, three eco-driving modes of EB, namely efficiency priority mode, energy-efficiency balance mode and energy saving priority mode under various operational states are proposed. Finally, the results indicate that the efficiency priority mode achieves about an 8% increase in traffic efficiency and a reduction of approximately 20% in energy consumption compared to the baseline model. With the energy-efficiency balance mode, the model attains a 34.05% reduction in energy consumption with almost the same traffic efficiency. Under the energy saving priority mode, the proposed model exhibits a minor reduction in traffic efficiency within an acceptable limit but decreases energy consumption by 40.69%, achieving the optimization goals.

Rights

Permission to publish the abstract has been given by Elsevier, copyright remains with them.

Comments

Transportation Research Part E Home Page:

http://www.sciencedirect.com/science/journal/13665545

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