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Health Assessment of Automotive Batteries Through Computational Intelligence-Based Soft Sensors: An Empirical Study

机译:基于计算智能的软传感器的汽车电池健康评估:实证研究

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An empirical comparison of different intelligent soft sensors for obtaining the state of health of automotive rechargeable batteries is presented. Data streamed from on-vehicle sensors of current, voltage and temperature is processed through a selection of model-based observers of the state of health, including data-driven statistical models, first principle-based models, fuzzy observers and recurrent neural networks with different topologies. It is concluded that certain types of recurrent neural networks can outperform well established first-principle models and provide the supervisor with a prompt reading of the State of Health. The algorithms have been validated with automotive Li-FePO_4 cells.
机译:介绍了不同智能软传感器用于获得汽车充电电池健康状态的实证比较。通过选择电流,电压和温度的车载传感器流的数据通过选择的基于模型的健康观察者来处理,包括数据驱动的统计模型,第一个基于原理的模型,模糊观察者和与不同的复发神经网络不同拓扑。结论是,某些类型的经常性神经网络可以优于成熟的第一原理模型,并为主管提供迅速读取健康状态。算法已通过汽车Li-FEPO_4细胞验证。

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