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Improvement of evolution process of dandelion algorithm with extreme learning machine for global optimization problems

机译:全球优化问题极端学习机的蒲公英算法演化过程的改进

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Dandelion Algorithm (DA) is a novel swarm intelligent optimization algorithm. In evolutionary process of DA, the quality of the seeds generated by dandelions is uneven, and the excellent seeds are expected to be retained and evaluated, while the poor seeds should be discarded without evaluation. In order to determine whether a seed is excellent or not, an improvement of evolution process of dandelion algorithm with extreme learning machine (ELMDA) is proposed in this paper. In ELMDA, firstly, the dandelion population can be partitioned into excellent dandelions and poor dandelions based on fitness values. Then, the excellent dandelions and poor dandelions are assigned corresponding labels (i.e. +1 if excellent or -1 if poor), which can be regarded as a training set, and the training model is built based on ELM. Finally, the model is applied to classify the seeds as excellent or poor, and the excellent seeds are chosen to participate in evolution process. Meanwhile, the robustness of the proposed algorithm is analyzed in this paper. Experimental results performed on test functions show that the proposed algorithm is competitive to its peers. Moreover, the proposed algorithm is demonstrated on three engineering designed problems, and the results indicate that the proposed algorithm has better performance in solving them.
机译:蒲公英算法(DA)是一种新型的智能优化算法。在DA的进化过程中,蒲公英产生的种子的质量不均匀,预计优异的种子将被保留和评估,而差的种子应在没有评估的情况下丢弃。为了确定种子是否优异,本文提出了具有极限学习机(ELMDA)的蒲公英算法的演化过程的改进。在Elmda,首先,蒲公英人口可以根据健身值划分为优秀的蒲公英和较差的蒲公英。然后,分配了优异的蒲公英和较差的蒲公英(即如果优秀或-1,如果差)可以被视为培训集,并且基于ELM构建培训模型。最后,该模型用于将种子分类为优异或差,选择优异的种子参与演化过程。同时,本文分析了所提出的算法的稳健性。对测试功能进行的实验结果表明,该算法对其同行具有竞争力。此外,在三个工程设计的问题上证明了所提出的算法,结果表明该算法在解决它们方面具有更好的性能。

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