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An Adaptive Multi-Objective Artificial Bee Colony with crowding distance mechanism

机译:具有拥挤距离机制的自适应多目标人工蜂群

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In this work, we propose an Adaptive Multi-Objective Artificial Bee Colony (A-MOABC) Optimizer that uses Pareto dominance procedure with taking the advantage of crowding distance and windowing mechanism. The employed bees use an adaptive windowing mechanism to select their own leaders and alter their positions. Besides, onlookers update their positions by using food sources presented by employed bees. Pareto dominance notion is used to show the quality of the food sources. Employed or onlooker bees which find poor quality food sources turn into scout bee to search other areas. The suggested method uses crowding distance technique in order to keep diversity in the archive. The method adaptively adjusts the limits of objective function values in the archive iteration by iteration. The experimental results indicate that the proposed approach not only thoroughly competitive compared to other algorithms considered in this work but also finds the result with greater precision.
机译:在这项工作中,我们提出了一种自适应多目标人工蜂群(A-MOABC)优化器,该算法利用帕累托优势程序并利用了拥挤距离和加窗机制。受雇的蜜蜂使用自适应窗口机制来选择自己的领导者并更改其位置。此外,围观者通过使用蜜蜂所提供的食物来更新自己的位置。帕累托支配地位概念用来表明食物来源的质量。发现劣质食物来源的受雇或旁观蜂变成侦查蜂以搜寻其他地区。建议的方法使用拥挤距离技术以保持档案中的多样性。该方法在迭代中自适应地调整归档迭代中目标函数值的限制。实验结果表明,所提出的方法不仅与本文中考虑的其他算法相比具有完全的竞争力,而且可以找到更高的精度。

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