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A Bayesian approach for Li-Ion battery capacity fade modeling and cycles to failure prognostics

机译:锂离子电池容量衰减建模和故障预测周期的贝叶斯方法

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Battery capacity fade occurs when battery capacity, measured in Ampere-hours, degrades over the number of charge/discharge cycles. This is a comprehensive result of various factors, including irreversible electrochemical reactions that form a solid electrolyte interphase (SEI) in the negative electrode and oxidative reactions of the positive electrode. The degradation mechanism is further complicated by operational and environmental factors such as discharge rate, usage and storage temperature, as well as cell-level and battery pack-level variations carried over from the manufacturing processes. This research investigates a novel Bayesian method to model battery capacity fade over repetitive cycles by considering both within-battery and between-battery variations. Physics-based covariates are integrated with functional forms for modeling the capacity fade. A systematic approach based on covariate identification, model selection, and a strategy for prognostics data selection is presented. The proposed Bayesian method is capable of quantifying the uncertainties in predicting battery capacity/power fade and end-of-life cycles to failure distribution under various operating conditions. (C) 2015 Elsevier B.V. All rights reserved.
机译:当电池容量(以安培小时为单位)随着充电/放电循环次数的增加而降低时,电池容量会下降。这是各种因素的综合结果,包括在负极中形成固态电解质中间相(SEI)的不可逆电化学反应和正极的氧化反应。由于操作和环境因素(例如放电率,使用和存储温度以及制造过程中遗留的电池级和电池组级变化),退化机制更加复杂。这项研究研究了一种新颖的贝叶斯方法,该方法通过考虑电池内部和电池之间的变化来模拟重复循环中电池容量的衰减。基于物理的协变量与功能形式集成在一起,以对容量衰减进行建模。提出了一种基于协变量识别,模型选择和预测数据选择策略的系统方法。所提出的贝叶斯方法能够量化预测各种工作条件下电池容量/功率衰减和寿命终止至故障分布的不确定性。 (C)2015 Elsevier B.V.保留所有权利。

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