An electrochemical model-based particle filter approach for Lithium-ion battery estimation
Proceedings of the IEEE Conference on Decision and Control
Lithium-ion batteries are currently amongst the leading technologies for electrical energy storage. In automotive industry they are recognized as the most promising alternative to gasoline powered engines. State estimation of the state of the battery can provide useful information regarding the state of charge (SOC) and state of health (SOH) of the battery which play a crucial role in optimal and safe utilization of the battery. Although the electrochemical dynamics of the battery are described by nonlinear system of PDAEs, most works in the area of condition monitoring of the battery resort to empirical or equivalent electrical circuit models. These models don't provide any physical insight into the battery and lack insight into physical limitations of the battery. This work presents a particle filter algorithm for state estimation and condition monitoring of the Li-ion battery. This filter can effectively deal with the nonlinear and complex nature of the PDAEs describing the dynamics of the battery. It provides accurate estimation of the average as well as spatial distribution of concentration in the battery. The simulation results demonstrate the effectiveness of the proposed estimation algorithm. © 2012 IEEE.
Samadi, M. F.; Alavi, S. M.Mahdi; and Saif, M.. (2012). An electrochemical model-based particle filter approach for Lithium-ion battery estimation. Proceedings of the IEEE Conference on Decision and Control, 3074-3079.