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Study on distributed lithium-ion power battery grouping scheme for efficiency and consistency improvement

机译:效率和一致性改进分布式锂离子动力电池分组方案研究

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The service life, safety, and capacity of lithium-ion power battery packs relies heavily on the consistency among battery cells. Grouping is an effective procedure to improve consistency by screening cells with similar performance and assembling them into an identical group. Battery grouping can be achieved via clustering techniques based on characteristics like static capacity, internal resistance etc. The dynamic characteristics-based method considers the battery performance during the entire charging-discharging process and has become one of the most promising grouping method. However, it suffers from high computational complexity. Nowadays, facing stricter quality standards and the increasing demand for battery products, existing dynamic characteristics-based grouping scheme cannot meet the performance and time requirement of the modern high-quality, large-scale battery manufacturing. In this paper, a novel grouping scheme based on distributed time-series clustering is proposed to match the need of both efficiency and consistency improvement. The proposed scheme designs an effective "cloud-edge" mode and utilizes an innovative two-stage trick to achieve parallel processing, which split the original centralized clustering approach into local clustering and global merging. The host computers for data acquisition and battery control are regarded as distributed edge computing resources to implement local clustering on the acquired battery discharging voltage sequence set. Cluster contours are extracted via a denoising contour extraction algorithm considering the irregularity of the discharging voltage sequences. The results of the above preliminary processing are uploaded to a cloud data center. A pragmatic merging scheme based on an integrated merging indicator is established to solve the decision-making problem of global merging on the cloud data center. The final global cluster set is transmitted back to host computers to instruct cell unloading operation. Experimental results based on real battery discharging voltage sequence data suggest that the proposed scheme can reduce the inconsistency rate by 43.56% and the time cost by 92.87%. The computing efficiency and resource utilization rate of the distributed scheme is much higher than the centralized scheme. Meanwhile, compared with three existing advanced grouping approaches, our scheme perform the best in reducing inconsistency rate. (C) 2019 Published by Elsevier Ltd.
机译:锂离子电池组的使用寿命,安全性和容量严重依赖于电池单元之间的一致性。分组是通过筛选具有类似性能并将其组装成相同组的细胞来改善一致性的有效方法。电池组可以通过基于静电容量,内部电阻等等特性来实现电池组。基于动态特性的方法在整个充电放电过程中考虑电池性能,并成为最有前途的分组方法之一。然而,它遭受了高计算复杂性。如今,面向更严格的质量标准和对电池产品的不断增加,现有的动态特性的分组方案不能满足现代高质量,大型电池制造的性能和时间要求。本文提出了一种基于分布式时间序列聚类的新型分组方案,以匹配效率和一致性改进的需要。该方案设计了有效的“云边缘”模式,并利用了创新的两阶段技巧来实现并行处理,将原始集中聚类方法分成本地聚类和全局合并。用于数据采集和电池控制的主计算机被认为是分布式边缘计算资源,以在所获取的电池放电电压序列集上实现本地聚类。考虑到放电电压序列的不规则性,通过去噪轮廓提取算法提取簇轮廓。上述初步处理的结果将上传到云数据中心。建立了一种基于综合合并指标的务实合并方案,以解决云数据中心全局融合的决策问题。最终的全局集群集被发送回主计算机以指示单元格卸载操作。基于真实电池放电电压序列数据的实验结果表明,所提出的方案可以将不一致率降低43.56%,时间成本降低92.87%。分布式方案的计算效率和资源利用率远高于集中式方案。同时,与三种现有的先进分组方法相比,我们的计划能够降低不一致率。 (c)2019年由elestvier有限公司发布

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