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SELF-ADAPTING INTELLIGENT BATTERY THERMAL MANAGEMENT SYSTEM VIA ARTIFICIAL NEURAL NETWORK BASED MODEL PREDICTIVE CONTROL

机译:基于人工神经网络的模型预测控制的自适应电池热管理系统

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This paper develops a self-adaptive control strategy for a newly-proposed J-type air-based battery thermal management system (BTMS) for electric vehicles (EVs). The structure of the J-type BTMS is first optimized through surrogate-based optimization in conjunction with computational fluid dynamics (CFD) simulations, with the aim of minimizing temperature rise and maximizing temperature uniformity. Based on the optimized J-type BTMS, an artificial neural network (ANN)-based model predictive control (MFC) strategy is set up to perform real-time control of mass flow rate and BTMS mode switch among J-, Z-, and U-mode. The ANN-based MCP strategy is tested with the Urban Dynamometer Driving Schedule (UDDS) driving cycle. With a genetic algorithm optimizer, the control system is able to optimize the mass flow rate by considering several steps ahead. The results show that the ANN-based MFC strategy is able to constrain the battery temperature difference within a narrow range, and to satisfy light-duty daily operations like the UDDS driving cycle for EVs.
机译:本文为电动汽车(EV)的新提出的J型空气电池热管理系统(BTMS)开发了一种自适应控制策略。首先通过基于代理的优化结合计算流体力学(CFD)模拟来优化J型BTMS的结构,以最大程度地降低温度升高和最大化温度均匀性。基于优化的J型BTMS,建立了基于人工神经网络(ANN)的模型预测控制(MFC)策略,以实现质量流量的实时控制以及BTMS模式在J-,Z-和-之间的切换。 U模式。基于ANN的MCP策略已通过城市测功机驾驶时间表(UDDS)驾驶周期进行了测试。使用遗传算法优化器,控制系统可以通过考虑前面的几个步骤来优化质量流率。结果表明,基于ANN的MFC策略能够将电池温度差限制在一个狭窄的范围内,并满足轻型日常操作(如EVDS的UDDS驾驶周期)。

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