Strong tracking adaptive window Multi-innovation cubature Kalman filter
algorithm for lithium-ion battery state of energy estimation
Abstract
Accurate estimation of lithium-ion battery state of energy (SOE) is an
important prerequisite for prolonging battery life and ensuring battery
safety. To achieve a high-precision estimation of SOE, this study
focuses on ternary lithium-ion batteries and proposes an SOE estimation
method that combines limited-memory recursive least squares (LM-RLS)
with strong tracking adaptive window Multi-innovation cubature Kalman
filtering (STF-MCKF). A finite set of data is used for model parameter
updates at the current time to solve the problem of data saturation and
improve the identification accuracy of the RLS algorithm. By utilizing
the STF algorithm, the CKF algorithm is optimized to enhance its
robustness under strong disturbances. An adaptive window
Multi-innovation strategy is proposed to improve the accuracy of SOE
estimation and the stability of the CKF algorithm while maintaining a
balance between computational complexity and estimation accuracy. To
validate the effectiveness of the algorithm, experiments are conducted
under DST and BBDST conditions. The results show that the STF-MCKF
algorithm has a maximum convergence time of 4s and an SOE estimation
error within 1.04% under DST conditions. Under BBDST conditions, the
STF-MCKF algorithm has a maximum convergence time of 3s and an SOE
estimation error within 2.34%. Furthermore, the STF-MCKF algorithm
demonstrates good stability under both the two conditions, indicating
the effectiveness of the proposed improved algorithm for lithium battery
SOE estimation.