Enhancing Battery Capacity Estimation Accuracy through the Neural Network Algorithm

被引:0
|
作者
Marghichi, Mouncef El [1 ]
Hilali, Abdelilah [2 ]
Loulijat, Azeddine [3 ]
机构
[1] Intelligent Systems Design Laboratory (ISDL), Faculty of Science, Abdelmalek Essaadi University, Tetouan,93000, Morocco
[2] Faculty of Sciences, Moulay Ismail University, Meknes,11201, Morocco
[3] Faculty of Sciences and Technology, Hassan first University, P.O.B. 577, Settat,26002, Morocco
关键词
Accurate estimation - Battery aging - Battery capacity - Battery Management - Capacity - Capacity estimation - Lithium ions - Management systems - Neural network algorithm - Neural networks algorithms;
D O I
10.3311/PPee.22998
中图分类号
学科分类号
摘要
Accurate estimation of battery metrics, such as state of health (SOH), is crucial for effective battery management systems (BMS) due to capacity degradation over time. This paper proposes a methodology to enhance battery capacity estimation accuracy by addressing uncertainties related to state of charge (SOC) estimation and measurement. The methodology employs the Neural Network Algorithm (NNA), an optimization algorithm inspired by artificial neural networks (ANNs). The NNA generates an initial population of pattern solutions and iteratively updates them using a weight matrix, bias operator, and transfer function operator. By combining the advantages of ANNs and optimization techniques, the NNA aims to find an optimal solution considering interdependent variables and incorporating global and local feedbacks. Leveraging the capabilities of the NNA, our objective is to identify the candidate that minimizes a specified cost function, ensuring up-to-date cell capacity through a memory forgetting factor. The algorithm's precision was validated using NASA's Prognostic Data, demonstrating outstanding performance by surpassing two aggressive algorithms in terms of accuracy. In the most severe case scenario, the algorithm achieved a peak error of less than 0.4%. Furthermore, the algorithm consistently demonstrated predictive performance measures that were superior to those of the compared algorithms. © 2024 Budapest University of Technology and Economics. All rights reserved.
引用
收藏
页码:424 / 438
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