Adaptive Cabin Climate Control for Battery Electric Vehicles Using TD3 Reinforcement Learning
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Författare
Typ
Examensarbete för masterexamen
Master's Thesis
Master's Thesis
Modellbyggare
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Sammanfattning
The transition from combustion engine vehicles to Battery Electric Vehicles (BEVs) has
increased the importance of efficient thermal management in trucks. Conventional cabin
climate control methods prioritize transparency and safety but lack adaptability, limiting
potential energy savings. This thesis addresses this challenge using the Twin-Delayed
Deep Deterministic Policy Gradient (TD3) combined with a novel surrogate model, the
Twin Fourier Neural Operator (Twin FNO), designed to capture cabin thermodynamics
through partially enforced physics and dual output heads for improved accuracy. The
Twin FNO predicts average cabin temperature with a mean absolute error of 0.55 °C
while being 180 times faster than numerical solvers. Integrated into the TD3 framework,
the agent effectively balances energy efficiency and thermal comfort. It maintains
the setpoint temperature when energy is abundant and deliberately creates an offset
when energy is limited, achieving up to 40% reduction in Heating Ventilation and Air
Conditioning (HVAC) energy consumption with a 6 °C temperature deviation. These
results highlight the potential of reinforcement learning and surrogate modeling to enable
energy-adaptive thermal control strategies in BEVs while raising questions on acceptable
thermal comfort trade-offs.
Beskrivning
Ämne/nyckelord
Battery Electric Vehicles, Fourier Neural Operator, TD3, Reinforcement Learning, Control Strategies, Thermal Management
