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An approach to determine the state of charge of a lithium iron phosphate cell using classification methods based on frequency domain data

机译:一种基于频域数据的分类方法确定磷酸铁锂电池充电状态的方法

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The exact knowledge of the state of charge (SOC) of a battery is essential for automotive applications. Common time domain based methods such as the state space observer and the Kalman Filter are limited in their range of functionality regarding LFP cells. Those common methods depend on an open circuit voltage (OCV) curve to correct the basic Ah counting structure. Therefore an approach to determine the SOC of a lithium iron phosphate (LFP) cell using classification methods is presented. In order to improve the SOC determination of a LFP cell information from the frequency domain data, basically the impedance spectra for different specific SOC, is used to determine the SOC under in situ conditions. Classification methods such as the Support Vector Machine, Nearest Neighbor Decision and Artificial Neural Networks are in the scope of this investigation. The proposed new approach gains an advantage because of its in-dependency on the OCV curve. Every SOC has a specific impedance spectra representation. Classifying measured impedances to SOC specific impedance spectra, using the afore mentioned classification methods is used to determine the SOC, comparing the different used classification methods, a proposal for future in operando applications and a hybrid algorithm conclude the analysis.
机译:准确了解电池的充电状态(SOC)对于汽车应用至关重要。基于LFP单元的通用时域方法(例如状态空间观察器和卡尔曼滤波器)在其功能范围上受到限制。这些常用方法取决于开路电压(OCV)曲线,以校正基本的Ah计数结构。因此,提出了一种使用分类方法确定磷酸锂铁(LFP)电池的SOC的方法。为了改进从频域数据对LFP单元信息的SOC确定,基本上使用了不同比SOC的阻抗谱来确定原位条件下的SOC。支持向量机,最近邻决策和人工神经网络等分类方法均在本研究范围之内。所提出的新方法由于其对OCV曲线的依赖性而获得了优势。每个SOC都有一个特定的阻抗谱表示。使用前面提到的分类方法将测量到的阻抗分类为SOC特定阻抗谱,以确定SOC,比较使用的不同分类方法,提出在操作应用中的未来建议以及混合算法来完成分析。

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