State of Health Monitoring of a Battery Module Using Multilayer Neural Network and Internal Resistance

Jong-Hyun Lee, Hyun-Sil Kim, Insoo Lee
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引用次数: 0

Abstract

Lithium batteries are presently used in various applications, such as cell phones, electric vehicles, unmanned submarines, and energy storage systems, as main power sources. Therefore, for stable and safe use of this system, it is important to rapidly detect defects in the battery and accurately diagnose faults. Battery faults can be diagnosed by measuring their state of health (SOH), which is affected by various operating conditions. In this work, a battery SOH monitoring system is implemented to detect faults using a multilayer neural network state classifier (MNNSC) and an internal resistance state classifier (IRSC). In this system, the MNNSC uses discharge voltage data from a lithium battery operating at high temperatures. Further, the IRSC uses the open circuit voltage, terminal voltage, and current to calculate the internal resistance. Experimental results show that the proposed battery SOH monitoring method was high accuracy.
基于多层神经网络和内阻的电池模块健康监测
目前,锂电池作为主要电源被应用于手机、电动汽车、无人潜艇、储能系统等多种领域。因此,快速检测电池的缺陷,准确诊断故障,对于系统的稳定、安全使用至关重要。电池故障可以通过测量健康状态(SOH)来诊断,而健康状态受各种操作条件的影响。本文采用多层神经网络状态分类器(MNNSC)和内阻状态分类器(IRSC)实现了电池SOH监测系统的故障检测。在这个系统中,MNNSC使用高温下锂电池的放电电压数据。此外,IRSC使用开路电压、端子电压和电流来计算内阻。实验结果表明,所提出的电池SOH监测方法具有较高的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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