利用遗传算法-神经网络 (GANN) 评估锂离子电池的充电状态

Ermanno Cardelli, Fabio Crescimbini, F. R. Fulginei, Michele Quercio, Lorenzo Sabino
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引用次数: 0

摘要

准确估算充电状态(SoC)对于锂电池的最佳性能和安全运行至关重要。传统的 SoC 估算方法在稳健性和准确性方面存在局限性,因此人们开始探索神经网络 (NN) 等替代技术。神经网络是一种高效的数学模型,从人脑的组织和运作中汲取灵感,其处理复杂非线性关系的能力使其成为 SoC 估算的理想选择。这项工作的目的是为 SoC 预测训练一个具有优化架构的神经网络。特别是使用了具有三个隐藏层的遗传算法神经网络(GANN)来评估锂电池的充电状态。结果显示,测试集的平均误差为 2%。因此,GANN 方法在此类评估中大有可为。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
State-of-Charge assessment of Li-ion battery using Genetic Algorithm-Neural Network (GANN)
The accurate estimation of State-of-Charge (SoC) is crucial for optimal performance and safe operation of lithium batteries. Traditional methods for SoC estimation have limitations in terms of robustness and accuracy, leading to the exploration of alternative techniques such as neural networks (NN). Neural networks are highly effective mathematical models that take inspiration from the organization and operation of the human brain, and their ability to handle complex nonlinear relationships makes them ideal for SoC estimation. The aim of this work is to train a NN with an optimized architecture for SoC predicting. In particular a Genetic Algorithm Neural Network (GANN) was used with three hidden layers to evaluate the state of charge of the lithium battery. The results show that an average error of 2% is riched on the test set. So the GANN method can be considered promising for this kind of evaluation.
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