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Development of Fast SoH Estimation of Li-Ion Battery Pack/Modules Using Multi Series-Parallel based ANN Structure

机译:使用多串行并联的ANN结构开发锂离子电池组/模块的快速SOH估计

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This paper proposes an innovative state of health (SoH) estimation of the battery pack for the reused Li-Ion cells. Due to the elevated significance and interest of the overall system performance, reliability, safety and long lifetime operation, it is necessary an accurate estimation of the lithiumion batteries health status. In case of a battery pack, the degradation of each cell, will affect and result in the increase of the deterioration process of conjoint cell, and furthermore to the total degradation of the battery pack and malfunction of the normal operation. Therefore, to resolve such issue, a novel method is developed in this article, based on multi series-parallel ANN structure which will concludes with accurate and fast SoH estimation of the battery with used Li-Ion cells. Its accuracy and calculation time are improved and accelerated using an online modeling approach (during operation) with optimal generalization. By the voltage and current as the main inputs and with the help of secondary information as temperature and cycle usage, it can be possible to describe the actual quantity of energy, which is a key factor in applications. The structure of the ANN is based on multi-series parallel configuration algorithm, combining the long-short term memory (LSTM) NN features with the Convolutional neural network (CNN) abilities which enhance the ability of stable and fast estimation during all the testing period of the pack, by further reducing the computational power and increasing the generalization of the proposed paper. In this paper, the SoH estimation time is reduced to 46%, peak error and average error are reduced by 36.3% and 23.4%, comparing with the previous work of the authors. Also, it is confirmed on this study that the proposed method can be applicable not only to a battery pack, but also to single cell or multi modules, increasing its range of applications. In simple words, this study proposes an alternative and cost-effective SoH estimation and diagnosis approach for the deteriorated battery, comparing to high-cost industrial devices, focused on the low input data scenario, taking into account the inter-degradation between cells.
机译:本文提出了一种创新的健康状况(SOH)估计电池组的REUSED锂离子细胞。由于整体系统性能的重要性和兴趣提升,可靠性,安全性和长寿命期操作,需要准确地估计锂电池的健康状况。在电池组的情况下,每个细胞的劣化将影响并导致联合电池的劣化过程的增加,此外,电池组的总劣化和正常操作的故障。因此,为了解决这些问题,本文在本文中开发了一种新的方法,基于多串行并联ANN结构,该方法将得出准确和快速SOH估计使用锂离子电池的电池。它的准确性和计算时间通过具有最佳泛化的在线建模方法(在运行期间)来改进和加速。通过电压和电流作为主输入以及借助于次要信息作为温度和循环使用,可以描述实际的能量量,这是应用中的关键因素。 ANN的结构基于多串联并行配置算法,将长短短期存储器(LSTM)NN特征与卷积神经网络(CNN)的功能组合,这提高了所有测试期间稳定和快速估计的能力通过进一步降低计算能力并增加所提出的纸张的概括。在本文中,SOH估计时间减少到46%,峰值误差和平均误差减少了36.3%和23.4%,与作者的上一项工作相比。此外,在这项研究中确认,所提出的方法不仅可以应用于电池组,而且可以适用于单个单元格或多模块,增加其应用范围。简单的单词,本研究提出了一种替代和经济高效的SOH估计和诊断方法,用于劣化电池,比较高成本的工业设备,专注于低输入数据场景,考虑到电池之间的间间劣化。

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