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Self-adapting J-type air-based battery thermal management system via model predictive control

机译:通过模型预测控制自适应的J型空气电池热管理系统

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摘要

Battery thermal control plays an indispensable role in terms of the safety and performance for electric vehicles. For air-based cooling technologies, one of the most pressing challenges is to balance the temperature uniformity and constrain the maximum temperature simultaneously under varying driving conditions. This paper proposes a self-adaptive intelligent neural network-based model predictive control strategy for a J-type air-based battery thermal management system. The J-type structure is first optimized through surrogate-based optimization to improve the temperature uniformity before control. Based on the optimized J-type configuration, an operation mode switching module is developed to mitigate the temperature unbalance. The thermal control approach is tested using an integrated driving cycle, and its evaluations are threefold: (i) the neural network-based control without mode switching fails to meet the thermal requirements; (ii) the control with mode switching succeeds in constraining the maximum temperature and maintaining the temperature uniformity within 1.33 K; (iii) the added model predictive control approach slightly enhances the thermal performance but improves the energy efficiency significantly by 15.8%. The results show that the J-type structure with its appropriate control strategy is a promising solution for light-duty electric vehicles using an air-cooling technology.
机译:电池热控制在电动汽车的安全性和性能方面起着不可或缺的作用。对于基于空气的冷却技术,最紧迫的挑战之一是在不同的行驶条件下平衡温度均匀性并同时限制最高温度。提出了一种基于自适应智能神经网络的模型预测控制策略,用于J型空气电池热管理系统。首先通过基于替代的优化对J型结构进行优化,以提高控制前的温度均匀性。基于优化的J型配置,开发了一种操作模式切换模块以减轻温度不平衡。使用集成的驾驶循环对热控制方法进行了测试,其评估有三方面:(i)没有模式切换的基于神经网络的控制无法满足热要求; (ii)通过模式切换进行的控制成功地限制了最高温度并将温度均匀性保持在1.33 K以内; (iii)新增的模型预测控制方法可略微提高热性能,但可将能源效率显着提高15.8%。结果表明,采用合适的控制策略的J型结构是采用空冷技术的轻型电动汽车的有前途的解决方案。

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