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Hybrid neural networks architectures for SOC and voltage prediction of new generation batteries storage

机译:用于新一代电池存储的SOC和电压预测的混合神经网络架构

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This paper presents some experiences and results obtained about the problem of the SOC and voltage prediction and simulation of new generation batteries. A complex pipelined recurrent neural network (PRNN) was designed for modeling of new generation batteries storage in order to predict the SOC and the terminal voltage. The simulation results are compared with experimental data obtained on commercial batteries.
机译:本文介绍了有关SOC和新一代电池的电压预测和仿真问题的一些经验和结果。设计复杂的流水线递归神经网络(PRNN)来建模新一代电池,以预测SOC和端电压。仿真结果与在商用电池上获得的实验数据进行了比较。

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