一种改进的基于Morlet小波变分的教学优化算法

Haixuan He, Xiuxi Wei, Huajuan Huang
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引用次数: 0

摘要

针对TLBO算法在求解函数优化问题时容易陷入局部最优、后期收敛速度慢、求解精度低等缺点,提出了一种基于动态自适应教学因子和Morlet小波变分算法的改进算法。首先,改进算法引入非线性动态教学因子,调节迭代优化过程中教师对学生的影响;其次,为了避免算法陷入局部最优,利用Morlet小波来实现对每一代小波中各维的全局极值进行扰动,并将扰动结果识别为具有一定概率的被选个体的新位置,充分利用全局极值信息的优势引导种群快速得到接近最优解;通过小波函数的微调特性,帮助种群摆脱局部极小值。对18个经典测试函数的仿真结果表明,改进算法的性能优于TLBO、SLTLBO、CSA和BOA算法,适用于求解函数优化问题。将该方法应用于工程实践中求解PID参数优化,取得了良好的效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Improved Teaching-Learning Optimization Algorithm based on Morlet Wavelet Variation
In order to overcome the weaknesses of the Teaching and Learning optimization (TLBO) algorithm in solving function optimization problems, such as easy to fall into local optimum, slow convergence at the later stage, and low solution accuracy, an improved algorithm with dynamic adaptive teaching factors and Morlet wavelet variation-based algorithms is proposed. Firstly, the improved algorithm introduces a nonlinear dynamic teaching factor to adjust the influence of teachers on students in the iterative optimization process. Secondly, in order to avoid algorithm trapped in local optimum, using Morlet wavelet to the implementation of global extreme value of each dimension in each generation wavelet disturbance, disturbance and the result was recognized as a certain probability is selected for the new position of the individual, make full use of the advantage of global extremum information guide populations to be near optimal solution quickly, by fine-tuning characteristics of wavelet functions help population out of local minima. The simulation results on 18 classical test functions show that the improved algorithm has better performance than TLBO, SLTLBO, CSA and BOA algorithms, and is suitable for solving function optimization problems. It is applied to engineering practice to solve PID parameter optimization and obtains good results.
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