Estimation of SOC in Lithium-Iron-Phosphate Batteries Using an Adaptive Sliding Mode Observer with Simplified Hysteresis Model during Electric Vehicle Duty Cycles

Author:

Chang Yujia12ORCID,Li Ran12ORCID,Sun Hao3,Zhang Xiaoyu3

Affiliation:

1. Automotive Electronic Drive Control and System Integration Engineering Research Center, Ministry of Education, Harbin 150080, China

2. School of Electrical and Electronic Engineering, Harbin University of Science and Technology, Harbin 150080, China

3. College of Artificial Intelligence, Nankai University, Tianjin 300110, China

Abstract

This paper develops a model for lithium-ion batteries under dynamic stress testing (DST) and federal urban driving schedule (FUDS) conditions that incorporates associated hysteresis characteristics of 18650-format lithium iron-phosphate batteries. Additionally, it introduces the adaptive sliding mode observer algorithm (ASMO) to achieve robust and swiftly accurate estimation of the state of charge (SOC) of lithium-iron-phosphate batteries during electric vehicle duty cycles. The established simplified hysteresis model in this paper significantly enhances the fitting accuracy during charging and discharging processes, compensating for voltage deviations induced by hysteresis characteristics. The SOC estimation, even in the face of model parameter changes under complex working conditions during electric vehicle duty cycles, maintains high robustness by capitalizing on the easy convergence and parameter insensitivity of ASMO. Lastly, experiments conducted under different temperatures and FUDS and DST conditions validate that the SOC estimation of lithium-iron-phosphate batteries, based on the adaptive sliding-mode observer and the simplified hysteresis model, exhibits enhanced robustness and faster convergence under complex working conditions and temperature variations during electric vehicle duty cycles.

Funder

The Natural Science Foundation of Heilongjiang Province, China

The Fund Project of Technology Field

Publisher

MDPI AG

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