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首页> 外文期刊>The Korean journal of chemical engineering >A comparative study of teaching-learning-self-study algorithms on benchmark function optimization
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A comparative study of teaching-learning-self-study algorithms on benchmark function optimization

机译:基准函数优化的自学式学习算法比较研究

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摘要

In typical optimization problems, the number of design variables may be large and their influence on the specific objective function can be complicated; the objective function may have some local optima while most chemical engineers are interested only in the global optimum. For any new optimization algorithms, it is essential to validate their performance, compare with other existing algorithms and check whether they provide the global optimum solutions, which can be done effectively by solving benchmark problems. In this work, seven typical optimization algorithms including the newly proposed TLBO (Teaching-learning-based optimization) based algorithms such as the TLSO (Teaching-learning-self-study optimization) algorithm have been reviewed and tested by using a set of 20 benchmark functions for unconstrained optimization problems to validate the performance and to assess these optimization algorithms. It was found that the TLSO algorithm shows the fastest convergence speed to the optimum and outperforms other algorithms for most test functions.
机译:在典型的优化问题中,设计变量的数量可能很大,并且它们对特定目标函数的影响可能会变得复杂;目标函数可能具有一些局部最优,而大多数化学工程师只对全局最优感兴趣。对于任何新的优化算法,至关重要的是验证其性能,与其他现有算法进行比较,并检查它们是否提供了全局最优解决方案,这可以通过解决基准问题来有效地完成。在这项工作中,使用一组20个基准对包括新提议的基于TLBO(基于学习学习的优化)算法(例如TLSO(学习自学的自学习优化)算法)在内的七种典型优化算法进行了审查和测试。用于不受约束的优化问题的函数,以验证性能并评估这些优化算法。结果发现,TLSO算法显示出最快的收敛速度,达到最佳状态,并且在大多数测试功能上均优于其他算法。

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