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A modified teaching-learning-based optimization algorithm for numerical function optimization

机译:一种改进的教学 - 基于教学的数值优化优化算法

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摘要

In this paper, a kind of modified teaching-learning-based optimization algorithm (MTLBO) is proposed to enhance the solution quality and accelerate the convergence speed of the conventional TLBO. Compared with TLBO, the MTLBO algorithm possesses different updating mechanisms of the individual solution. In teacher phase of the MTLBO, the students are divided into two groups according to the mean result of learners in all subjects. Moreover, the two groups present different updating strategies of the solution. In learner phase, the students are still divided into two groups, where the first group includes the top half of the students and the second group contains the remaining students. The first group members increase their knowledge through interaction among themselves and study independently. The second group members increase their marks relying on their teacher. According to the above-mentioned updating mechanisms, the MTLBO can provide a good balance between the exploratory and exploitative capabilities. Performance of the proposed MTLBO algorithm is evaluated by 23 unconstrained numerical functions and 28 CEC2017 benchmark functions. Compared with TLBO and other several state-of-the-art optimization algorithms, the results indicate that the MTLBO shows better solution quality and faster convergence speed.
机译:在本文中,提出了一种改进的基于教学的教学的优化算法(MTLBO)以增强溶液质量并加速传统TLBO的收敛速度。与TLBO相比,MTLBO算法具有不同的各个解决方案的更新机制。在MTLBO的教师阶段,学生根据所有科目的学习者的平均结果分为两组。此外,两组呈现了解决方案的不同更新策略。在学习者阶段,学生仍然分为两组,第一组包括学生的上半部分,第二组包含其余的学生。第一个团队成员通过自己的互动和独立研究来增加他们的知识。第二组成员增加了他们的痕迹依赖于他们的老师。根据上述更新机制,MTLBO可以在探索性和利用能力之间提供良好的平衡。所提出的MTLBO算法的性能由23个不受约束的数值函数和28个CEC2017基准函数进行评估。与TLBO和其他最先进的优化算法相比,结果表明MTLBO显示出更好的解决方案质量和更快的收敛速度。

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