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Determining Battery SoC Using Electrochemical Impedance Spectroscopy and the Extreme Learning Machine

机译:使用电化学阻抗光谱和极限学习机来确定电池SOC

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Much effort has been made in recent years to accurately determine battery state-of-charge (SoC) and state-of-health (SoH). Electrochemical impedance spectroscopy (EIS) is well-established for parameter identification; however EIS has traditionally been a laboratory procedure. With the recent prevalence of low-cost DSPs, it has become feasible to use EIS in online applications. This paper focuses on implementing EIS using a DC/DC converter topology commonly found in renewable energy applications. An AC ripple voltage is injected into the battery by modulating the PWM duty cycle, then the current and phase-shift response is analyzed to determine the frequency-dependent impedance. Voltage and current sensing devices have been developed so that the technique can be implemented on a TI F2833 DSP. EIS is performed at set intervals during entire charge cycles on test batteries in order to produce a data-driven model. Regression is performed using the Extreme Learning Machine (ELM) neural-network algorithm. The derived model is then verified by predicting the SoC of a battery used as a test sample.
机译:近年来已经做出了很多努力,以准确确定电池充电状态(SOC)和健康状态(SOH)。电化学阻抗光谱(EIS)是参数识别的良好建立的;然而,EIS传统上是实验室程序。随着近期低成本DSP的普遍性,在线应用中使用EIS变得可行。本文侧重于使用可再生能源应用中的DC / DC转换器拓扑实现EIS。通过调制PWM占空比将交流纹波电压注入电池中,然后分析电流和相移响应以确定频率相关阻抗。已经开发了电压和电流检测装置,使得该技术可以在TI F2833 DSP上实现。在测试电池的整个电荷循环期间以设定间隔执行EIS以产生数据驱动模型。使用极端学习机(ELM)神经网络算法进行回归。然后通过预测用作测试样本的电池的SOC来验证导出的模型。

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