Application of Improved WOA in Hammerstein Parameter Resolution Problems under Advanced Mathematical Theory

Lu Zhao, Jiangjun Liu, Yuan Li
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Abstract

With the development of industrial demand, precise identification of system models is currently required in the field of industrial control, which limits the whale search algorithm. In response to the fact that whale optimization algorithms are prone to falling into local optima and the identification of important Hammerstein models ignores the issue of noise outliers in actual industrial environments, this study improves the whale algorithm and constructs a Hammerstein model identification strategy for nonlinear systems under heavy-tailed noise using the improved whale algorithm. Results showed that it had a lower rank average and an average success rate of 95.65%. It found the global optimum when the number of iterations reached around 150 and had faster convergence speed and accuracy. In identifying Hammerstein model under heavy-tailed noise, the average prediction recognition accuracy of the improved whale algorithm was 92.38%, the determination coefficient was 0.89, the percentage fitting error was 0.03, and the system error was 0.02. This research achievement has certain value in the field of industrial control and can serve as a technical reference.
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高级数学理论下改进型 WOA 在哈默斯坦参数解析问题中的应用
随着工业需求的发展,目前在工业控制领域需要精确识别系统模型,这就限制了鲸鱼搜索算法。针对鲸鱼优化算法容易陷入局部最优、重要哈默斯坦模型的识别忽略了实际工业环境中噪声异常值的问题,本研究对鲸鱼算法进行了改进,利用改进后的鲸鱼算法构建了重尾噪声下非线性系统的哈默斯坦模型识别策略。结果表明,该算法的平均秩较低,平均成功率为 95.65%。当迭代次数达到 150 次左右时,它能找到全局最优值,而且收敛速度更快,精度更高。在重尾噪声下识别哈默斯坦模型时,改进鲸算法的平均预测识别准确率为 92.38%,判定系数为 0.89,拟合误差百分比为 0.03,系统误差为 0.02。该研究成果在工业控制领域具有一定的应用价值和技术参考价值。
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