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Adaptive Multi-scale Quantum Harmonic Oscillator Algorithm Based on Evolutionary Strategy

机译:基于进化策略的自适应多尺度量子谐振子算法

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This paper proposes a novel adaptive multi-scale quantum harmonic oscillator algorithm based on evolutionary strategies (AMQHOA-ES) for global numerical optimization. Since the original Multi-scale Quantum Harmonic Oscillator Algorithm (MQHOA) utilizes a fixed contraction factor to narrow the search scale, the searching step decreases too fast at the later stage of the evolution and is more likely to suffer premature convergence and stagnation. To improve the convergence performance, an adaptive attenuation mechanism of scaling is proposed to dynamically adjust the exploration and exploitation properties. Evolutionary strategies such as selection, crossover and DE/rand/1 mutation are implemented in the proposed algorithm to enhance the exploration and exploitation abilities. Experimental results evaluated on several unimodal and multimodal benchmark functions indicate the significant improvement of the proposed algorithm to the original MQHOA. Meanwhile, the experimental results compared with several state-of-the-art optimizers show the superiority or competitiveness of the proposed algorithm.
机译:本文提出了一种基于进化策略(AMQHOA-ES)的新型自适应多尺度量子谐振子算法,用于全局数值优化。由于原始的多尺度量子谐波振荡器算法(MQHOA)利用固定的收缩因子来缩小搜索范围,因此搜索步长在演化的后期下降得太快,并且更有可能遭受过早的收敛和停滞。为了提高收敛性能,提出了一种自适应的缩放比例衰减机制,可以动态调整勘探与开发属性。该算法实现了选择,交叉和DE / rand / 1突变等进化策略,提高了勘探和开发能力。在几个单峰和多峰基准函数上评估的实验结果表明,该算法相对于原始MQHOA有了显着改进。同时,实验结果与几种最新的优化器进行了比较,结果表明了该算法的优越性或竞争力。

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