On-Line Early Warning Method for Electric Vehicle Charging Process Faults Based on Multiple Time Scales
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    Abstract:

    In order to ensure the safe and smooth operation of new energy vehicles, accelerate their development and promotion, and alleviate the environmental crisis, we adopt a “normalized voltage difference curve” to analyze the safety features of power battery packs. Furthermore, we formulate the control strategies of online early warning about faults in the charging process of electric vehicles on the short-term and mid-long-term scales. Thus, the basic performance of single batteries is analyzed and the trend in battery voltage can be accurately and clearly characterized. In this study, we mainly investigate the early warning control strategies of mid-long-term charging affected by the temperature rise in battery charging. Then, an objective function is established and the genetic algorithm is used for optimal control. Finally, the data about the charging status provided by the charging-pile monitoring platform verify the proposed online early warning of the charging data based on the battery model.

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芮光辉,张明浩,魏廷云,汪映辉,石进永.基于多时间尺度的电动汽车充电过程故障在线预警方法.计算机系统应用,2021,30(5):143-149

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History
  • Received:August 28,2020
  • Revised:September 23,2020
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  • Online: May 06,2021
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