基于遗传算法-深度学习神经网络(GADNN)混合模型的锂离子电池剩余使用寿命预测

Muchamad Iman Karmawijaya, Irsyad Nashirul Haq, E. Leksono, A. Widyotriatmo
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引用次数: 0

摘要

设计电池管理系统需要了解电池的剩余使用寿命(RUL)。本研究利用进化算法对深度学习神经网络(DLNN)算法进行优化,以预测RUL电池。使用遗传算法(GA),从原始数据集中识别出最重要的特征。然后,创建GADLNN混合模型,选择DLNN模型的理想网络算法、隐藏神经元激活函数、隐藏层数以及每个隐藏层中的神经元数。具体来说,NASA提供了一个与锂离子电池循环寿命相关的数据集。对于模型开发、数据验证和测试阶段,数据集被分成训练集、验证集和测试集。采用了几个质量评估标准来衡量机器学习(ML)算法的有效性,如决定系数(R2)、一致指数(IA)、平均绝对误差(MAE)和均方根误差(RMSE)。混合GA-DLNN模型证明了识别预测过程中最有利的参数集的能力。结果表明,与使用所有输入变量获得的结果相比,仅使用最关键特征的混合模型的性能给出了最大的准确性。使用11输入GA-DLNN: R2=0.985,MAE=3.806, RMSE =5.596, IA=0.996。使用21输入GA-DLNN: R2=0.987, MAE=3.314, RMSE =5.273, IA=0.997。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Development of Remaining Useful Life (RUL) Prediction of Lithium-ion Battery Using Genetic Algorithm-Deep Learning Neural Network (GADNN) Hybrid Model
Designing a battery management system requires knowing the battery’s remaining useful life (RUL). The Deep Learning Neural Network (DLNN) algorithm was optimized in this study utilizing evolutionary algorithms to forecast the RUL batteries. Using a Genetic Algorithm (GA), the most crucial features from the raw dataset were identified. After that, a GADLNN hybrid model was created to choose the DLNN model’s ideal network algorithm, hidden neuron activation function, hidden layer count, and neuron count in each hidden layer. Specifically, NASA provided a dataset related to lithium-ion battery cycle life. For the model development, data validation, and testing phases, the dataset was split into a training set, validation set, and testing set. Several quality assessment criteria were employed to measure the effectiveness of the machine learning (ML) algorithms, such as the Coefficient of Determination (R2), Index of Agreement (IA), Mean Absolute Error (MAE), and Root Mean Squared Error (RMSE). The hybrid GA-DLNN model demonstrated the capacity to identify the most advantageous set of parameters for the prediction procedure. The outcomes demonstrated that, in comparison to results obtained using all input variables, the performance of the hybrid model employing only the most crucial features gave the maximum accuracy. Using 11-input GA-DLNN: R2=0.985,MAE=3.806, RMSE =5.596, IA=0.996. Using 21-input GA-DLNN: R2=0.987, MAE=3.314, RMSE =5.273, IA=0.997.
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