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Kalman filter for adaptive learning of two-dimensional look-up tables applied to OCV-curves for aged battery cells

机译:卡尔曼滤波器用于二维查找表的自适应学习,适用于老化电池的OCV曲线

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摘要

In online automotive applications it is common to use look-up tables, or maps, to describe nonlinearities in component models that are to be valid over large operating ranges. If the component characteristics change with aging or wear, these look-up tables must be updated online. For 2-D look-up tables, the existing methods in the literature only adapt the observable parameters in the look-up table, which means that parameters in operation points that have not been visited for a long time may be far from their true values. In this work, correlations between different operating points are used to also update non-observable parameters of the look-up table. The method is applied to Open Circuit Voltage (OCV) curves for aged battery cells. From laboratory experimental data it is demonstrated that the proposed method can significantly reduce the average deviation from an aged OCV-curve compared to keeping the OCV-curve from the beginning of the cell's life, both for observable and non-observable parameters.
机译:在在线汽车应用中,通常使用查找表或地图来描述要在较大工作范围内有效的组件模型中的非线性。如果部件特性随老化或磨损而变化,则这些查找表必须在线更新。对于二维查找表,文献中的现有方法仅适应查找表中的可观察参数,这意味着长时间未访问的操作点中的参数可能与真实值相差甚远。 。在这项工作中,使用不同工作点之间的相关性还可以更新查找表的不可观察参数。该方法适用于老化的电池单元的开路电压(OCV)曲线。从实验室实验数据证明,与从电池寿命开始就保持OCV曲线(无论是可观察到的还是不可观察到的参数)相比,该方法可以显着减少与老化OCV曲线的平均偏差。

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