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Evaluation of batteries residual energy for battery pack recycling: Proposition of stack stress-coupled-AI approach

机译:评估电池组回收中的电池剩余能量:堆应力耦合AI方法的建议

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摘要

It is predicted that by 2025, approximately 1 million metric tons of spent battery waste will be accumulated. How to reasonably and effectively evaluate the residual energy of the lithium-ion batteries embedded in hundreds in packs used in Electric Vehicles (EVs) grows attention in the field of battery pack recycling. The main challenges of evaluation of the residual energy come from the uncertainty of thermo-mechanical-electrochemical behavior of battery. This motivates the notion of facilitating research on establishing a model which can detect and predict the state of battery based on parameters enable to be measured, such as voltage and stack stress. Thus, the present work proposes a stack stress-coupled-artificial intelligence approach for analyzing the residual energy (remaining) in the batteries. Experiments are designed and performed to verify the fundamentals. A robust model is formulated based on artificial intelligence approach of genetic programming. The findings in the study can provide an optimized recycling strategy for spent batteries by accurately predicting the state of battery based on stack stress.
机译:预计到2025年,将累积约100万吨废电池废料。如何合理和有效地评估电动汽车(EV)使用的成百上千个嵌入式锂离子电池的剩余能量,在电池组回收领域引起了越来越多的关注。剩余能量评估的主要挑战来自电池的热机械电化学行为的不确定性。这激发了促进研究的想法,以建立能够基于能够测量的参数(例如电压和堆应力)检测和预测电池状态的模型。因此,本工作提出了一种堆叠应力耦合人工智能方法,用于分析电池中的剩余能量(剩余)。设计并执行实验以验证基本原理。基于遗传规划的人工智能方法,提出了一个鲁棒模型。该研究结果可通过基于堆应力准确预测电池状态,从而为废电池提供优化的回收策略。

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