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Computer-Aided Optimization for Predictive Battery State-of-Charge Determination

机译:预测电池电量状态确定的计算机辅助优化

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Optimizing the battery management of today's portable electronic applications goes hand in hand with the reliable and accurate knowledge of the battery's state-of-charge (SoC). During periods of low load, usually the SoC is determined based on the measurement of the corresponding open-circuit voltage (OCV). This requires a battery to be in a well-relaxed state, which can take more than 3 hours depending on influence factors like the SoC itself and the temperature. Unfortunately, a well-relaxed state is rarely reached in real world scenarios. As an alternative, predicted OCV values can be used to estimate the SoC. In this work, we use a polynomial-enhanced model description for the OCV prediction process. After identifying the critical model parameters, a computer-aided parameter optimization methodology is applied to optimize the OCV prediction process. As a major result, the proposed methodology enables the possibility to optimize the OCV prediction process with respect to a specified SoC estimation accuracy.
机译:对当今便携式电子应用的电池管理进行优化与可靠和准确地了解电池的充电状态(SoC)息息相关。在低负载期间,通常基于对相应开路电压(OCV)的测量来确定SoC。这要求电池处于良好的放松状态,这可能需要3个小时以上的时间,具体取决于SoC本身和温度等影响因素。不幸的是,在现实世界中很少能达到放松的状态。或者,可以使用预测的OCV值来估计SoC。在这项工作中,我们对OCV预测过程使用了多项式增强的模型描述。在确定关键模型参数之后,将应用计算机辅助参数优化方法来优化OCV预测过程。作为一个主要结果,提出的方法论使得有可能针对指定的SoC估计精度来优化OCV预测过程。

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