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Electric vehicle battery model identification and state of charge estimation in real world driving cycles

机译:电动车电池模型识别与现实世界驾驶循环中的充电估算状态

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This paper describes a study demonstrating a new method of state-of-charge (SoC) estimation for batteries in real-world electric vehicle applications. This method combines realtime model identification with an adaptive neuro-fuzzy inference system (ANFIS). In the study, investigations were carried down on a small-scale battery pack. An equivalent circuit network model of the pack was developed and validated using pulse-discharge experiments. The pack was then subjected to demands representing realistic WLTP and UDDS driving cycles obtained from a model of a representative electric vehicle, scaled match the size of the battery pack. A fast system identification technique was then used to estimate battery parameter values. One of these, open circuit voltage, was selected as suitable for SoC estimation, and this was used as the input to an ANFIS system which estimated the SoC. The results were verified by comparison to a theoretical Coulomb-counting method, and the new method was judged to be effective. The case study used a small 7.2 V NiMH battery pack, but the method described is applicable to packs of any size or chemistry.
机译:本文介绍了一种研究现实世界电动汽车应用中电池的充电(SOC)估计的新方法。该方法将实时模型识别与自适应神经模糊推理系统(ANFI)结合起来。在研究中,调查在小型电池组上进行。使用脉冲放电实验开发并验证了包装的等效电路网络模型。然后将该包进行要求代表从代表电动车辆的模型获得的现实WLTP和UDDS驱动循环,缩放匹配电池组的尺寸。然后使用快速系统识别技术来估计电池参数值。其中一个开路电压被选择适合于SOC估计,用作估计SOC的ANFIS系统的输入。通过与理论库仑计数方法的比较验证了结果,并判断新方法是有效的。案例研究使用了小型7.2 V NiMH电池组,但描述的方法适用于任何尺寸或化学的包。

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