电动汽车和混合动力汽车电池系统的自我诊断机会

Machines Pub Date : 2024-05-08 DOI:10.3390/machines12050324
Szabolcs Kocsis Szürke, Gergo Sütheö, Péter Őri, István Lakatos
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引用次数: 0

摘要

随着电动汽车和混合动力汽车销量的增加,电池系统的数量也在大幅增长。不同的车辆使用不同类型和数量的电池。此外,控制和保护电子装置的布局和操作也可能不同。这项研究旨在开发一种能够自主检测和定位最薄弱电池的方法。通过测试三辆不同的大众 e-Golf 电动汽车的电池系统,对该方法进行了验证。进行了大范围放电测试,以检查状态评估,并为所有三辆车选择适当的充电状态(SoC)。一方面,分析调查了电池电压与平均值的偏差;测试涵盖了 0 mV、12 mV、60 mV、120 mV 和 240 mV 的偏差。另一方面,平均值计算用于过滤可能的错误值。另一个重要方面是研究电荷状态(SoC)与偏差之间的关系。因此,对 10%的阶跃变化进行了测试,以了解哪种 SoC 水平的电压偏差更为显著。结果表明,不同情况下的电压偏差存在差异,临界范围不一定在最低的 SoC 水平上。此外,负载率(电流)及其发生时间在寻找故障电池的过程中也起着重要作用。这种方法的另一个优点是,目前在大众 e-Golf 上测试的过程可以相对简单地移植到其他类型的车辆上。它还能以较低的功耗对系统中的电池进行自我测试,因此对自动驾驶汽车来说也是一个非常有用的补充。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Self-Diagnostic Opportunities for Battery Systems in Electric and Hybrid Vehicles
The number of battery systems is also growing significantly along with the rise in electric and hybrid car sales. Different vehicles use different types and numbers of batteries. Furthermore, the layout and operation of the control and protection electronics units may also differ. The research aims to develop an approach that can autonomously detect and localize the weakest cells. The method was validated by testing the battery systems of three different VW e-Golf electric vehicles. A wide-range discharge test was performed to examine the condition assessment and select the appropriate state of charge (SoC) for all three vehicles. On the one hand, the analysis investigated the cell voltage deviations from the average; the tests cover deviations of 0 mV, 12 mV, 60 mV, 120 mV, and 240 mV. On the other hand, the mean value calculation was used to filter out possible erroneous values. Another important aspect was examining the relationship between the state of charges (SoC) and the deviations. Therefore, the 10% step changes were tested to see which SoC level exhibited more significant voltage deviations. Based on the results, it was observed that there are differences between the cases, and the critical range is not necessarily at the lowest SoC level. Furthermore, the load rate (current) and time of its occurrence play an important role in the search for a faulty cell. An additional advantage of this approach is that the process currently being tested on the VW e-Golf can be relatively simply transferred to other types of vehicles. It can also be a very useful addition for autonomous vehicles, as it can self-test the cells in the system at low power consumption.
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