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首页> 外文期刊>Advances in Radio Science >Advanced binary search pattern for impedance spectra classification for determining the state of charge of a lithium iron phosphate cell using a support vector machine
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Advanced binary search pattern for impedance spectra classification for determining the state of charge of a lithium iron phosphate cell using a support vector machine

机译:用于阻抗谱分类的高级二进制搜索模式,用于使用支持向量机确定磷酸锂铁电池的电荷状态

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摘要

Further improvements on the novel method for state of charge?(SOC) determination of lithium iron phosphate?(LFP) cells based on the impedance spectra classification are presented. A Support Vector Machine?(SVM) is applied to impedance spectra of a LFP cell, with each impedance spectrum representing a distinct SOC for a predefined temperature. As a SVM is a binary classifier, only the distinction between two SOC can be computed in one iteration of the algorithm. Therefore a search pattern is necessary. A balanced tree search was implemented with good results. In order to further improvements of the SVM method, this paper discusses two new search pattern, namely a linear search and an imbalanced tree search, the later one based on an initial educated guess. All three search pattern were compared under various aspects like accuracy, efficiency, tolerance of disturbances and temperature dependancy. The imbalanced search tree shows to be the most efficient search pattern if the initial guess is within less than ±5 % SOC of the original SOC in both directions and exhibits the best tolerance for high disturbances. Linear search improves the rate of exact classifications for almost every temperature. It also improves the robustness against high disturbances and can even detect a certain number of false classifications which makes this search pattern unique. The downside is a much lower efficiency as all impedance spectra have to be evaluated while the tree search pattern only evaluate those on the tree path.
机译:提出了基于阻抗谱分类的磷酸铁锂(LFP)电池荷电状态(SOC)测定新方法的进一步改进。支持向量机(SVM)应用于LFP单元的阻抗谱,每个阻抗谱代表针对预定温度的不同SOC。由于SVM是二进制分类器,因此只能在算法的一次迭代中计算两个SOC之间的差异。因此,搜索模式是必要的。实施了平衡树搜索,结果良好。为了进一步改进SVM方法,本文讨论了两种新的搜索模式,即线性搜索和不平衡树搜索,后一种基于初始的推测。在准确性,效率,干扰容忍度和温度依赖性等各个方面对这三种搜索模式进行了比较。如果初始猜测在两个方向上均小于原始SOC的±5%SOC之内,则不平衡搜索树将显示为最有效的搜索模式,并且表现出对高干扰的最佳容忍度。线性搜索可提高几乎每个温度的精确分类率。它还提高了抵抗高干扰的鲁棒性,甚至可以检测到一定数量的错误分类,从而使这种搜索模式变得独一无二。缺点是效率低得多,因为必须评估所有阻抗谱,而树搜索模式仅评估树路径上的阻​​抗谱。

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