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首页> 外文期刊>Applied Sciences >The Effect of Voltage Dataset Selection on the Accuracy of Entropy-Based Capacity Estimation Methods for Lithium-Ion Batteries
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The Effect of Voltage Dataset Selection on the Accuracy of Entropy-Based Capacity Estimation Methods for Lithium-Ion Batteries

机译:电压数据集选择对锂离子电池基于熵的容量估计方法精度的影响

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It is important to accurately estimate the capacity of the battery in order to extend the service life of the battery and ensure the reliable operation of the battery energy storage system. As entropy can quantify the regularity of a dataset, it can serve as a feature to estimate the capacity of batteries. In order to analyze the effect of voltage dataset selection on the accuracy of entropy-based estimation methods, six voltage datasets were collected, considering the current direction (i.e., charging or discharging) and the state of charge level. Furthermore, three kinds of entropies (approximate entropy, sample entropy, and multiscale entropy) were introduced, and the relationship between the entropies and the battery capacity was established by using first-order polynomial fitting. Finally, the interaction between the test conditions, entropy features, and estimation accuracy was analyzed. Moreover, the results can be used to select the correct voltage dataset and improve the estimation accuracy.
机译:重要的是要准确估计电池的容量,以便延长电池的使用寿命,并确保电池储能系统的可靠操作。由于熵可以量化数据集的规律性,它可以作为估计电池容量的功能。为了分析电压数据集选择对基于熵的估计方法的准确性的影响,考虑到当前方向(即充电或放电)和充电水平的六个电压数据集。此外,引入了三种熵(近似熵,样品熵和多尺度熵),并通过使用一阶多项式配件建立熵与电池容量之间的关系。最后,分析了测试条件,熵特征和估计准确度之间的相互作用。此外,结果可用于选择正确的电压数据集并提高估计精度。

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