State of Health Estimation of LiFePO4Battery based on Probability Density Function

Chaoyong Hou, Jizhong Chen, Shuili Yang, J. Chen
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Abstract

Battery Management System (BMS) is very important for most of the electric vehicle (EV) and battery energy storage system (BESS), BMS can guarantee the safety, operation and even the life of the battery system. Checking and controlling the status of battery within their specified safe operating conditions is exactly the major function of BMS. The state of health (SOH) is a critical parameter of a Li-ion battery, an accurate on-line estimation algorithm of the SOH is important for forecasting the EV driving range and BESS power dispatching. A widely used method to estimate SOH is based on battery capacity, due to the uncertainty, including unit-to-unit variation, measurement noise, operational uncertainties, and model inaccuracy, it's difficult to estimate the SOH by using battery capacity. In this paper, a new method, probability density function to estimate the capacity of LiFePO4 battery by analyzing the charge and discharge data is presented. A comparison of the probability density function and differential voltage analysis (DVA) is provided, shows that the mathematical basis of the algorithm and DVA are in agreement, then present the relationship of dQ/dV vs V, synthesize derivation curve of anode and cathode. Further, in order to get the relationship between derivation curve and capacity of LiFePO4 battery over the lifecycle, the peak intensity, peak voltage, peak number and peak shift is analyzed. Finally, by utilizing the actual operation data, experiments and numerical analysis were conducted, show that this capacity estimation algorithm based on probability density function has better robust performance of the practical application of LiFePO4 battery, and the superiority of this method is verified.
基于概率密度函数的lifepo4电池健康状态估计
电池管理系统(BMS)对于大多数电动汽车和电池储能系统(BESS)来说都是非常重要的,BMS可以保证电池系统的安全、运行甚至寿命。检查和控制电池在规定的安全运行条件下的状态,正是BMS的主要功能。健康状态(SOH)是锂离子电池的关键参数,准确的健康状态在线估计算法对电动汽车续驶里程预测和BESS功率调度具有重要意义。目前广泛采用的基于电池容量估算SOH的方法,由于存在不确定性,包括单位间的变化、测量噪声、运行不确定性和模型不准确性等,难以通过电池容量估算SOH。本文提出了一种通过分析充放电数据来估计磷酸铁锂电池容量的新方法——概率密度函数。将概率密度函数与差分电压分析(DVA)进行了比较,结果表明,该算法的数学基础与差分电压分析(DVA)是一致的,然后给出了dQ/dV与V的关系,合成了阳极和阴极的推导曲线。在此基础上,分析了LiFePO4电池在全生命周期内的峰值强度、峰值电压、峰值数和峰值位移,得到了推导曲线与电池容量之间的关系。最后,利用实际运行数据,进行了实验和数值分析,表明该基于概率密度函数的容量估计算法对LiFePO4电池的实际应用具有较好的鲁棒性,验证了该方法的优越性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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