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A review on battery remaining capacity estimation |
Yang Ruocen1, Dong Lei1, Liao Xiaozhong1, Wang Fei2 |
1. Beijing Institute of Technology, Beijing 100081; 2. Beijing Institute of Technology, Zhuhai, Guangdong 519088 |
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Abstract To enhance the utilization ratio of the storage batteries and put them into cascade utilization, the evaluation of the retired batteries has become increasingly important. In this evaluation task, the battery remaining capacity estimation can estimate the current capacity of the battery, and offer basis for screening and further cascade utilization. This article concludes the purposed methods of battery remaining capacity estimation as well as state-of health and remaining useful life estimation, and looks forward to the future of this field.
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Received: 31 January 2019
Published: 29 September 2019
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