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Battery capacity degradation prediction using similarity recognition based on modified dynamic time warping

机译:基于改进动态时间规整的相似性识别的电池容量退化预测

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摘要

Battery degradation prediction is a significant recent challenge given the complex physical and chemical processes that occur within batteries, various working conditions, and limited performance degradation data and/or ground test data. In this study, we describe an approach called dynamic spatial time warping, which is used to determine the similarities of two arbitrary curves. Unlike classical dynamic time warping methods, this approach can maintain the invariance of curve similarity to the rotations and translations of curves, which is vital in curve similarity search and can recognize the intrinsic relationship between two curves. Moreover, it can be applied for battery degradation prediction even when rare data are available and do not require special assumptions, which fulfill the requirements of degradation prediction for batteries subject to extreme limited available data. The accuracy of this approach is verified by using both simulation data and NASA battery datasets. Results suggest that the proposed approach provides a highly accurate path of predicting battery degradation even with very limited data.
机译:鉴于电池内部发生的复杂物理和化学过程,各种工作条件以及有限的性能退化数据和/或地面测试数据,电池退化预测是一项重大的近期挑战。在这项研究中,我们描述了一种称为动态空间时间扭曲的方法,该方法用于确定两条任意曲线的相似性。与经典的动态时间规整方法不同,此方法可以将曲线相似性的不变性保持为曲线的旋转和平移,这在曲线相似性搜索中至关重要,并且可以识别两条曲线之间的内在联系。此外,即使在稀有数据可用且不需要特殊假设的情况下,也可以将其应用于电池退化预测,这些特殊假设可以满足受极端有限可用数据影响的电池退化预测的要求。通过使用模拟数据和NASA电池数据集,可以验证此方法的准确性。结果表明,即使数据非常有限,所提方法仍可提供预测电池退化的高精度途径。

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