电池(电)
学习迁移
健康状况
计算机科学
估计
国家(计算机科学)
融合
功率(物理)
人工智能
环境科学
工程类
系统工程
语言学
物理
哲学
量子力学
算法
作者
Zhiqiang Lyu,Xinyuan Wei,Longxing Wu,Chunhui Liu
摘要
ABSTRACT Accurate State of Health (SOH) estimation is critical for battery management systems (BMS) in electric vehicles (EVs). However, the absence of a universal aging model for power batteries presents significant challenges. This study leverages the open‐source battery cell data set from the University of Maryland and focuses on private battery packs to address the aging model SOH estimation. Two aging features indicative of capacity degradation are extracted from constant current charging data using incremental capacity analysis (ICA). To handle nonlinearity and feature coupling, a flexible data‐driven aging model is proposed, employing dual Gaussian process regressions (GPRs) and transfer learning to enhance model efficiency and accuracy. Adaptive filtering via the Particle filter (PF) further refines the model by integrating aging features and output capacity, resulting in a closed‐loop data fusion approach for precise SOH estimation. Battery pack aging experiments validate the proposed method, demonstrating that transfer learning effectively improves estimation accuracy. The proposed method achieves closed‐loop SOH estimation with a mean root mean square error (RMSE) of 0.87, underscoring its reliability and precision.
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