基于神经网络模型的光伏和电动汽车系统再利用锂离子电池分类快速诊断

M. Bezha, N. Nagaoka
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引用次数: 1

摘要

正确使用电池会影响光伏/电动汽车系统中电池的使用寿命。但健康状况的正确估计会影响到系统的总成本和效率。事实上,电动汽车应用中的电池成本占汽车总成本的(35-50)%。它们的劣化分类和下一步发送哪个应用程序是主要关注点。本文提出的方法是基于神经网络算法,用两个级联的神经网络结构表示。其中,第一个神经网络结构使用V和I波形和周期数作为可选输入,输出为内部阻抗参数,作为第二个神经网络的主输入,最终估计电池组系统的SoH。提出了一种具有1层和2层隐藏层的结构。估计在42秒内完成,在最坏的情况下误差为1.8%。通过正确估计电池的SoH,我们可以将其使用时间延长一点,或者准备将其用于光伏系统,因为光伏系统在放电过程中需要高电流和动态特性,这与电动汽车不同。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Fast Diagnosis for Classification of re-used Li-ion Batteries for PV and EV Systems by the ANN Model
Proper usage of the batteries can impact how long the battery in PV/EV systems will last. But the correct estimation of State of Health (SoH) can affect the total cost of the system and its efficiency. As a matter of fact, the battery cost in EV applications is (35–50) % of the total cost of the cars. Their classification of deterioration and which application to send them next is the main concern. In this paper the proposed method was based on ANN algorithm, expressed by two NN structures in cascade. Where the first NN structure use V and I waveform and number of cycles as an optional input, and the output is the internal impedance parameters which is used as main input for the second NN in order to estimate finally the SoH of the battery pack system. A structure with 1 and 2 hidden layers is proposed. The estimation is finished within 42 seconds and with error of 1.8% in the worst case. By correctly estimating the SoH of the battery we can extend its usage for a little longer or preparing it to be used in PV systems, where the need for high current and dynamic characteristics during discharging it's not the same as in EV.
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