电动汽车电池报废回收管理:退化预测与决策

IF 1 Q4 ENGINEERING, MANUFACTURING Journal of Micro and Nano-Manufacturing Pub Date : 2022-06-27 DOI:10.1115/msec2022-85536
Yixin Zhao, S. Behdad
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引用次数: 0

摘要

电动汽车(ev)因其响应性和环保性较好,在市场上迅速普及。从运行数据中准确诊断电动汽车电池状态是确保可靠性、降低维护成本和提高可持续性的必要条件。本文提出了一种基于长短期记忆网络(LSTM)的深度学习方法,在不事先了解复杂退化机制的情况下估计电动汽车锂离子电池的健康状态(SOH)和退化。我们的结果在开源的NASA随机电池使用数据集上进行了演示,该数据集包含电池在不断变化的操作条件下老化的情况。随机化的放电数据能更好地反映电池的实际使用情况。该研究提供了额外的使用结束建议,包括继续使用、再制造/再利用、回收和处置;对于依赖于预测电池状态的电池管理。建议的更换点是为了避免电池的急剧退化阶段,以防止电极上活性物质的显著损失。这有利于更换电池的再制造/再利用过程,从而以较低的成本延长电池的二次使用寿命。该预测模型为客户和电池二次利用行业提供了一个正确处理电动汽车电池的工具,以获得最佳的经济性和系统可靠性折衷。
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Electric Vehicle Battery End-Of-Use Recovery Management: Degradation Prediction and Decision Making
Electric vehicles (EVs) are spreading rapidly in the market due to their better responsiveness and environmental friendliness. An accurate diagnosis of EV battery status from operational data is necessary to ensure reliability, minimize maintenance costs, and improve sustainability. This paper presents a deep learning approach based on the long short-term memory network (LSTM) to estimate the state of health (SOH) and degradation of lithium-ion batteries for electric vehicles without prior knowledge of the complex degradation mechanisms. Our results are demonstrated on the open-source NASA Randomized Battery Usage Dataset with batteries aging under changing operating conditions. The randomized discharge data can better represent practical battery usage. The study provides additional end-of-use suggestions, including continued use, remanufacturing/repurposing, recycling, and disposal; for battery management dependent on the predicted battery status. The suggested replacement point is proposed to avoid a sharp degradation phase of the battery to prevent a significant loss of active material on the electrodes. This facilitates the remanufacturing/repurposing process for the replaced battery, thereby extending the battery’s life for secondary use at a lower cost. The prediction model provides a tool for customers and the battery second use industry to handle their EV battery properly to get the best economy and system reliability compromise.
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来源期刊
Journal of Micro and Nano-Manufacturing
Journal of Micro and Nano-Manufacturing ENGINEERING, MANUFACTURING-
CiteScore
2.70
自引率
0.00%
发文量
12
期刊介绍: The Journal of Micro and Nano-Manufacturing provides a forum for the rapid dissemination of original theoretical and applied research in the areas of micro- and nano-manufacturing that are related to process innovation, accuracy, and precision, throughput enhancement, material utilization, compact equipment development, environmental and life-cycle analysis, and predictive modeling of manufacturing processes with feature sizes less than one hundred micrometers. Papers addressing special needs in emerging areas, such as biomedical devices, drug manufacturing, water and energy, are also encouraged. Areas of interest including, but not limited to: Unit micro- and nano-manufacturing processes; Hybrid manufacturing processes combining bottom-up and top-down processes; Hybrid manufacturing processes utilizing various energy sources (optical, mechanical, electrical, solar, etc.) to achieve multi-scale features and resolution; High-throughput micro- and nano-manufacturing processes; Equipment development; Predictive modeling and simulation of materials and/or systems enabling point-of-need or scaled-up micro- and nano-manufacturing; Metrology at the micro- and nano-scales over large areas; Sensors and sensor integration; Design algorithms for multi-scale manufacturing; Life cycle analysis; Logistics and material handling related to micro- and nano-manufacturing.
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