Pasquale Ciccullo
Reinforcement Learning for Hybrid/electric vehicle: Analysis and performance of reward functions in a real-time algorithm for P2-HEV.
Rel. Ezio Spessa, Claudio Maino, Matteo Acquarone, Daniela Anna Misul. Politecnico di Torino, Master of science program in Automotive Engineering, 2023
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Abstract
Conventional vehicles with internal combustion engine (ICE) provide a good performance and long operating range by utilizing the high energy-density advantages of petroleum fuels. However, the conventional ICE-vehicles suffer the disadvantages of poor fuel economy and environmental air pollution. One of the immediate alternative solutions is the HEVs (Hybrid-Electric vehicle). In HEV, the introduction of one or more power sources increases the complexity of powertrain architecture and offers additional degrees of freedom in controlling the power-split between the power sources. In this energy management scenario, the Reinforcement learning (RL) allows to obtain a global optimization implemented in real-time differently from rule-based or optimization-based control strategies.
In this work, a Deep Reinforcement Learning (DRL) algorithm, i.e., Double Deep-Q-network (DDQN), is adopted to control the power-split and the gear number
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