Browse Publications Technical Papers 2024-01-2006
2024-04-09

Reinforcement Learning in Optimizing the Electric Vehicle Battery System Coupling with Driving Behaviors 2024-01-2006

Battery Run-down under the Electric Vehicle Operation (BREVO) model is a model that links the driver’s travel pattern to physics-based battery degradation and powertrain energy consumption models. The model simulates the impacts of charging behavior, charging rate, driving patterns, and multiple energy management modules on battery capacity degradation. This study implements reinforcement learning (RL) to the simplified BREVO model to optimize drivers’ decisions on charging such as charging rate, charging time, and charging capacity needed. This is done by a reward function that considers both the driver’s daily travel demands and the minimization of battery degradation over a year. It shows that using appropriate charger type (No Charge, Level 1, Level 2, direct-current Fast Charge [DCFC], extreme Fast Charging [xFC]) with an appropriate charging time can reduce battery degradation and total charging cost at the end of the year while satisfying driver’s daily travel demand. Using the Level 2 charging every day for night charging can reduce the battery capacity by 1.3819 ‰ whereas following the charger type and charging time suggestions of the RL will bring this number down to the level of 0.8037 ‰ over a one-year timespan. This gap between degradation rates gets bigger when one prefers using DC FC or xFC only respectively. Based on their daily travel demands, this RL model provides valuable strategic guidance to drivers to increase the battery lifetime and minimize the total cost of owning an electric vehicle.

SAE MOBILUS

Subscribers can view annotate, and download all of SAE's content. Learn More »

Access SAE MOBILUS »

Members save up to 16% off list price.
Login to see discount.
Special Offer: Download multiple Technical Papers each year? TechSelect is a cost-effective subscription option to select and download 12-100 full-text Technical Papers per year. Find more information here.
X