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Nonlinear Inertia Weighted Teaching-Learning-Based Optimization for Solving Global Optimization Problem

机译:基于非线性惯性权重的教与学优化解决全局优化问题

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摘要

Teaching-learning-based optimization (TLBO) algorithm is proposed in recent years that simulates the teaching-learning phenomenon of a classroom to effectively solve global optimization of multidimensional, linear, and nonlinear problems over continuous spaces. In this paper, an improved teaching-learning-based optimization algorithm is presented, which is called nonlinear inertia weighted teaching-learning-based optimization (NIWTLBO) algorithm. This algorithm introduces a nonlinear inertia weighted factor into the basic TLBO to control the memory rate of learners and uses a dynamic inertia weighted factor to replace the original random number in teacher phase and learner phase. The proposed algorithm is tested on a number of benchmark functions, and its performance comparisons are provided against the basic TLBO and some other well-known optimization algorithms. The experiment results show that the proposed algorithm has a faster convergence rate and better performance than the basic TLBO and some other algorithms as well.
机译:近年来,提出了一种基于教学的优化(TLBO)算法,该算法可模拟教室的教学现象,以有效解决连续空间中多维,线性和非线性问题的全局优化。本文提出了一种改进的基于教学学习的优化算法,称为非线性惯性加权基于教学学习的优化算法(NIWTLBO)。该算法将非线性惯性加权因子引入基本的TLBO中以控制学习者的记忆率,并在教师阶段和学习者阶段使用动态惯性加权因子来代替原始随机数。该算法在许多基准函数上进行了测试,并与基本TLBO和其他一些著名的优化算法进行了性能比较。实验结果表明,与基本的TLBO算法相比,该算法具有更快的收敛速度和更好的性能。

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