Research on load-resistant enhancement control optimization of composite energy power supply system based on deep reinforcement learning
Cheng Cheng,
Huanhuan Li,
Fang Wang
et al.
Abstract:To solve the problem of insufficient inertia in the power electronics components under the development trend of power electronics in the transmission system of heavy-duty electric vehicles, combined with the composite energy power supply mode and control method, voltage-based feedback channels and virtual capacitor branches are designed for both engine-generator sets and DCDC control loops. These innovations compensate for system inertia and introduce a TD3 deep reinforcement learning-based adaptive regulation… Show more
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