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A Novel Teaching-Learning-Based Optimization with Laplace Distribution and Experience Exchange

机译:一种基于拉普拉斯分布和经验交换的教与学优化

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摘要

Teaching-Learning-Based Optimization (TLBO) algorithm is an evolutionary powerful algorithm that has better global searching capability. However, in the later period of evolution of the TLBO algorithm, the diversity of learners will be degraded with the increasing iteration of evolution and the smaller scope of solutions, which lead to a trap in local optima and premature convergence. This paper presents an improved version of the TLBO algorithm based on Laplace distribution and Experience exchange strategy (LETLBO). It uses Laplace distribution to expand exploration space. A new experience exchange strategy is applied to make good use of experience information to identify more promising solutions to make the algorithm converge faster. The experimental performances verify that the LETLBO algorithm enhances the solution accuracy and quality compared to original TLBO and various versions of TLBO and is very competitive with respect to other very popular and powerful evolutionary algorithms. Finally, the LETLBO algorithm is also applied to parameter estimation of chaotic systems, and the promising results show the applicability of the LETLBO algorithm for problem-solving.
机译:基于教学的优化(TLBO)算法是一种进化的强大算法,具有更好的全局搜索能力。然而,在TLBO算法演进后期,随着演化迭代次数的增加和求解范围的缩小,学习器的多样性会降低,导致局部最优的陷阱和过早收敛。该文提出一种基于拉普拉斯分布和经验交换策略(LETLBO)的TLBO算法的改进版本。它利用拉普拉斯分布来扩大勘探空间。应用一种新的经验交换策略,充分利用经验信息,确定更有前途的解决方案,使算法更快地收敛。实验结果验证了LETLBO算法与原始TLBO和TLBO的各种版本相比,提高了求解的精度和质量,并且与其他非常流行和强大的进化算法相比具有很强的竞争力。最后,将LETLBO算法应用于混沌系统的参数估计,结果证明了LETLBO算法在问题求解中的适用性。

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