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Fast Charging Li-Ion Battery Capacity Fade Prognostic Modeling Using Correlated Parameters' Decomposition and Recurrent Wavelet Neural Network

机译:快速充电锂离子电池容量使用相关参数分解和反复间小波神经网络逐渐消退预后建模

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Continuous cycling of Lithium-Ion (Li-ion) batteries, as required by applications, degrades their resulting capacities over time. This degradation is generally negligible in the early charge/discharge cycles. An increase in charging/discharging rates (C-rate) applied on a continuous cycling battery reduces its charging time, thereby resulting in a fast charging battery, however, this also escalates the degradation. This degradation can be studied from the resultant decrease in charging/discharging capacities, also termed as capacity fade. To analyze capacity fade, an approach using reference C-rate based charging/discharging capacity analysis is proposed for a time-limited degradation analysis. Further, a step-ahead forecasting approach is proposed for all the charging/discharging capacities' correlated original, and corresponding deviation parameters, to present time-ahead modeling of all the impacted parameters. A combinatorial empirical mode decomposition (EMD)-recurrent wavelet neural network (RWNN) model is proposed as the step-ahead forecasting approach for the correlated parameters. Finally, a comparison of error values between the proposed EMD-RWNN model is performed with combinatorial EMD-wavelet neural network (WNN), standalone WNN and RWNN models to effectively analyze the resulting superior performance of the recurrent nature of the proposed model by forecasting every decomposition.
机译:根据应用要求,连续循环锂离子(锂离子)电池,随着时间的推移降低了它们所产生的能力。在早期充电/放电循环中,这种降解通常可以忽略不计。施加在连续循环电池上的充电/放电速率(C速率)的增加降低了其充电时间,从而导致快速充电电池,然而,这也升级了降解。可以从所得的充电/放电容量的降低中研究这种降解,也称为容量褪色。为了分析容量衰落,提出了一种采用参考C速率的充电/放电容量分析的方法,以进行有限制的降解分析。此外,提出了对所有充电/放电容量相关的原始原始的原始的原始原始原始的预测方法以及对应的偏差参数来提供所有受影响的参数的超时建模。组合经验模式分解(EMD)-Recurrent小波神经网络(RWNN)模型被提出为相关参数的缩进预测方法。最后,使用组合EMD-小波神经网络(WNN),独立的WNN和RWNN模型来执行所提出的EMD-RWNN模型之间的误差值的比较,以通过预测每种预测分解。

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