Direct Comparison using Coulomb Counting and Open Circuit Voltage Method for the State of Health Li-Po Battery

Lora Khaula Amifia
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Abstract

Electric cars have undergone many developments in the current digital era. This is to avoid the use of increasingly scarce fuel. Recent studies on electric cars show that battery estimation is an interesting topic to be implemented directly. The battery estimation strategy is carried out by the Battery Management System (BMS). BMS is an indispensable part of electric vehicles or hybrid vehicles to ensure optimal and reliable operation of regulating, monitoring, and protecting batteries. A reliable BMS can extend battery life by setting voltage, temperature, and charging and discharging current limits. The main estimation strategy used by BMS is battery fault, SOH, and battery life. Battery State of Health (SOH) is part of the information provided by the BMS to avoid battery damage and failure. SOC is the proportion of battery capacity SOH is a measure of battery health. This study aims to develop a method for estimating SOH simultaneously using Coulomb Counting and Open Circuit Voltage (OCV) algorithms. The battery is modeled to obtain battery parameters and components of internal resistance, capacitance polarization and OCV voltage source. Several tests were implemented in this research by applying the constant current (CC)-charge CC-discharge test. The state-space system is then formed to apply the Coulomb Counting and OCV algorithms so that SOH can be estimated simultaneously. The OCV-SOC function is obtained in the form of a tenth order polynomial and the battery model parameters say that these parameters change with the health of the battery. The results of the model validation are able to accurately model the battery with an average relative error of 0.027%. Coulomb Counting resulted in an accurate SOH estimation with an error of 3.4%.
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库仑计数法与开路电压法对锂电池健康状态的直接比较
在当今的数字时代,电动汽车经历了许多发展。这是为了避免使用日益稀缺的燃料。最近对电动汽车的研究表明,电池估计是一个有趣的话题,可以直接实现。电池估计策略由电池管理系统(battery Management System, BMS)执行。BMS是电动汽车或混合动力汽车必不可少的重要组成部分,可以保证电池的调节、监测和保护的最佳可靠运行。可靠的BMS可以通过设置电压、温度和充放电电流限制来延长电池寿命。BMS使用的主要估计策略是电池故障、SOH和电池寿命。电池健康状态(SOH)是BMS提供的信息的一部分,用于避免电池损坏和故障。SOC是电池容量的比例,SOH是衡量电池健康状况的指标。本研究旨在开发一种同时使用库仑计数和开路电压(OCV)算法估计SOH的方法。对电池进行建模,得到电池参数及内阻、电容极化和OCV电压源的组成。本研究采用恒流(CC)充放电试验进行了多项试验。然后形成状态空间系统,应用库仑计数和OCV算法,从而可以同时估计SOH。OCV-SOC函数以十阶多项式的形式得到,电池模型参数表示这些参数随电池的健康状况而变化。模型验证的结果能够准确地对电池进行建模,平均相对误差为0.027%。库仑计数得到了准确的SOH估计,误差为3.4%。
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