Estimation Strategies for the Condition Monitoring of a Battery Systemin a Hybrid Electric Vehicle
Abstract
This paper discusses the application of condition monitoring to a battery
system used in a hybrid electric vehicle (HEV). Battery condition management
systems (BCMSs) are employed to ensure the safe, efficient, and reliable
operation of a battery, ultimately to guarantee the availability of electric
power. This is critical for the case of the HEV to ensure greater overall
energy efficiency and the availability of reliable electrical supply. This
paper considers the use of state and parameter estimation techniques for the
condition monitoring of batteries. A comparative study is presented in which
the Kalman and the extended Kalman filters (KF/EKF), the particle filter (PF),
the quadrature Kalman filter (QKF), and the smooth variable structure filter
(SVSF) are used for battery condition monitoring. These comparisons are made
based on estimation error, robustness, sensitivity to noise, and computational
time.