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A noise‐immune model identification method for lithium‐ion battery using two‐swarm cooperative particle swarm optimization algorithm based on adaptive dynamic sliding window

机译:基于自适应动态滑动窗口的双群协同粒子群优化算法的锂离子电池抗噪模型识别方法

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摘要

Summary Accurate and reliable model parameters are not only a prerequisite for model‐based estimation but also a significant part of battery operating characteristics. However, the measurement signal inevitably contains noise, which brings great challenges to model identification. This paper focuses on the noise immunity performance of model identification based on two‐swarm cooperative particle swarm optimization. An adaptive dynamic sliding window based on the current rate criterion and the identification results feedback is designed to avoid data redundancy and improve the robustness of model identification. The model parameters are obtained using two‐swarm cooperative particle swarm optimization based on the adaptive dynamic sliding window. The proposed method effectively improves the accuracy and speed of parameter identification through optimization of data fragments and particle update rules. Compared with two existing parameter identification methods, simulation studies illustrate that the average mean square deviation of the proposed method is reduced by at least 35 dB. The proposed method is superior to existing parameter identification methods in noise immunity performance, parameter identification reliability, and state‐of‐charge estimation accuracy. By employing the proposed method, the maximum errors of state‐of‐charge estimation are limited within 1 under experimental verification. The experiment results verify that the proposed method has the potential to extract reliable model features online.
机译:总结 准确可靠的模型参数不仅是基于模型的估计的先决条件,也是电池工作特性的重要组成部分。然而,测量信号中不可避免地含有噪声,这给模型识别带来了很大的挑战。本文重点研究了基于双群协同粒子群优化的模型识别的抗噪性能。设计了一种基于当前速率准则和识别结果反馈的自适应动态滑动窗口,避免了数据冗余,提高了模型识别的鲁棒性。采用基于自适应动态滑动窗口的双群协同粒子群优化获得模型参数。该方法通过优化数据片段和粒子更新规则,有效提高了参数识别的准确性和速度。仿真结果表明,与现有的两种参数辨识方法相比,所提方法的平均均方偏差至少降低了35 dB。所提方法在抗噪性能、参数识别可靠性和荷电状态估计精度方面均优于现有参数识别方法。通过实验验证,所提方法将荷电状态估计的最大误差限制在1%以内。实验结果验证了所提方法具有在线提取可靠模型特征的潜力。

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