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ZEBRA battery SOC estimation using PSO-optimized hybrid neural model considering aging effect

机译:考虑老化效应的PSO优化混合神经模型估算ZEBRA电池SOC

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References(21) Cited-By(1) The state of charge (SOC) estimation for electric vehicles (EVs) is important and helps to optimize the utilization of the battery energy storage in EVs. In this way, aging is also a key parameter impacting the performance of batteries. In this paper, a hybrid neural model is proposed for the SOC estimation of ZEBRA (Zero Emission Battery Research Activities) battery considering the aging effect through the state of health (SOH) and the discharge efficiency (DE) parameters. The number of hidden nodes in neural modules is also optimized using particle swarm optimization (PSO) algorithm. The SOC estimation error of the proposed system is 1.7% when compared with the real SOC obtained from a discharge test.
机译:参考文献(21)引用依据(1)电动汽车(EV)的充电状态(SOC)估计很重要,有助于优化EV中电池能量存储的利用率。这样,老化也是影响电池性能的关键参数。本文提出了一种混合神经模型,用于通过考虑健康状态(SOH)和放电效率(DE)参数的老化效应来估算ZEBRA(零排放电池研究活动)电池的SOC。神经模块中隐藏节点的数量也使用粒子群优化(PSO)算法进行了优化。与从放电测试获得的实际SOC相比,该系统的SOC估计误差为1.7%。

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