Health-aware and user-involved battery charging management for electric vehicles: linear quadratic strategies
Huazhen Fang, Yebin Wang

TL;DR
This paper introduces innovative linear quadratic control strategies for EV battery charging that incorporate user-defined objectives and prioritize battery health, aiming to enhance longevity and user satisfaction.
Contribution
It presents the first control-theory-based charging methods that integrate user preferences and battery health considerations simultaneously.
Findings
Effective suppression of charging-induced battery degradation.
Computationally efficient strategies without real-time optimization.
Potential for improved battery lifespan and user satisfaction.
Abstract
This paper studies control-theory-enabled intelligent charging management for battery systems in electric vehicles (EVs). Charging is crucial for the battery performance and life as well as a contributory factor to a user's confidence in or anxiety about EVs. For the existing practices and methods, many run with a lack of battery health awareness during charging, and none includes the user needs into the charging loop. To remedy such deficiencies, we propose to perform charging that, for the first time, allows the user to specify charging objectives and accomplish them through dynamic control, in addition to suppressing the charging-induced negative effects on battery health. Two charging strategies are developed using the linear quadratic control theory. Among them, one is based on control with fixed terminal charging state, and the other on tracking a reference charging path. They are…
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