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

机译:计算机辅助优化用于预测电池的充电状态确定

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摘要

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:优化当今便携式电子应用的电池管理携手并进,具有可靠和准确的电池充电状态(SOC)的知识。在低负载期间,通常基于对应的开路电压(OCV)的测量来确定SOC。这需要电池处于良好的状态,这可能需要超过3小时,这取决于SoC本身和温度等影响因素。不幸的是,在现实世界的情景中很少达到一个宽松的状态。作为替代方案,可以使用预测的OCV值来估计SoC。在这项工作中,我们使用多项式增强的模型描述来进行OCV预测过程。在识别关键模型参数之后,应用了计算机辅助参数优化方法来优化OCV预测过程。作为一个重大结果,所提出的方法能够能够在指定的SOC估计精度方面优化OCV预测过程。

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