Abstract

For lithium battery, which is widely utilized as energy storage system in electric vehicles (EVs), accurate estimating of the battery parameters and state of charge (SOC) has a significant effect on the prediction of energy power, the estimation of remaining mileage, and the extension of usage life. This paper develops an improved ant lion optimizer (IALO) which introduces the chaotic mapping theory into the initialization and random walk processes to improve the population homogeneity and ergodicity. After the elite (best) individual is obtained, the individual mutant operator is conducted on the elite individual to further exploit the area around elite and avoid local optimum. Then the battery model parameters are optimized by IALO algorithm. As for the SOC estimation, unscented Kalman filter (UKF) is a common algorithm for SOC estimation. However, a disadvantage of UKF is that the noise information is always unknown, and it is usually tuned manually by “trial-and-error” method which is irregular and time-consuming. In this paper, noise information is optimized by IALO algorithm. The singular value decomposition (SVD) which is utilized in the process of unscented transformation to solve the problem of the covariance matrix may lose positive definiteness. The experiment results verify that the developed IALO algorithm has superior performance of battery model parameters estimation. After the noise information is optimized by IALO, the UKF can estimate the SOC accurately and the maximum errors rate is less than 1%.

Highlights

  • IntroductionOne of the most important functions of Battery Management System (BMS) is state of charge (SOC) estimation, which can improve the control efficiency of energy and extend the usage life of the batteries [8]

  • With the increasingly serious problems of global energy crisis and environmental pollution, electric vehicles (EVs) have experienced explosive development and drawn increasing attention from institute and industry in the last decade [1,2,3]

  • To validate the performance of the developed improved ant lion optimization (IALO)-SVDUKF state of charge (SOC) estimation method, experiments on LiNiMnCoO2/Graphite lithium-ion cells were conducted under DST, FUDS, US06, and BJDST, respectively

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Summary

Introduction

One of the most important functions of BMS is state of charge (SOC) estimation, which can improve the control efficiency of energy and extend the usage life of the batteries [8]. Ant lion optimizer (ALO), a recently proposed heuristics nature-inspired algorithm, imitates the foraging behavior of ant lion’s larvae [40]. Ants move randomly and casually; once ants move into pits, the ant lion will try to catch ants. Ants usually may try to creep out the trap In this situation, ant lions will cast sands towards the edge of the trap to make the trap side steeper and slide the ant down to the bottom of the trap and grab it. By catching the ant which has higher fitness, the ant lion can update its position and fitness by the information of ant

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