SOC Estimation Of Energy Storage Power Station Based On SSA-BP Neural Network

Yuchen Lu, Liu Jian
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Abstract

Lithium battery State of Charge (SOC) estimation technology is the core technology to ensure the rational application of power energy storage, and plays an important role in supporting the maintenance and other operating functions of energy storage power stations. At present, the dynamic prediction of SOC is still It is a worldwide problem. This paper uses the BP neural network model as the basis and the sparrow search optimization algorithm to explore the prediction of the SOC of the energy storage lithium battery. The model uses NASA’s charge and discharge data of lithium batteries to train and predict the model to determine the feasibility of the BP network algorithm optimized by sparrow search.
基于SSA-BP神经网络的储能电站荷电状态估计
锂电池荷电状态(SOC)估算技术是保证电力储能合理应用的核心技术,对储能电站的维护等运行功能起着重要的支撑作用。目前,SOC的动态预测仍然是一个世界性的难题。本文以BP神经网络模型为基础,采用麻雀搜索优化算法对储能锂电池荷电状态的预测进行了探讨。该模型使用NASA的锂电池充放电数据对模型进行训练和预测,以确定麻雀搜索优化的BP网络算法的可行性。
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