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Evolutionary optimisation of noisy multi-objective problems usingconfidence-based dynamic resampling

机译:基于置信度的动态重采样对有噪声的多目标问题进行进化优化

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摘要

Many real-world optimisation problems approached by evolutionary algorithms are subject to noise. When noise is present, the evolutionary selection process may become unstable and the convergence of the optimisation adversely affected. In this paper, we present a new technique that efficiently deals with noise in multi-objective optimisation. This technique aims at preventing the propagation of inferior solutions in the evolutionary selection due to noisy objective values. This is done by using an iterative resampling procedure that reduces the noise until the likelihood of selecting the correct solution reaches a given confidence level. To achieve an efficient utilisation of resources, the number of samples used per solution varies based on the amount of noise in the present area of the search space. The proposed algorithm is evaluated on the ZDT benchmark problems and two complex real-world problems of manufacturing optimisation. The first real-world problem concerns the optimisation of engine component manufacturing in aviation industry, while the second real-world problem concerns the optimisation of a camshaft machining line in automotive industry. The results from the optimisations indicate that the proposed technique is successful in reducing noise, and it competes successfully with other noise handling techniques.
机译:进化算法解决的许多现实世界优化问题都容易受到干扰。当存在噪声时,进化选择过程可能变得不稳定,并且优化的收敛性受到不利影响。在本文中,我们提出了一种在多目标优化中有效处理噪声的新技术。该技术旨在防止由于嘈杂的客观值而在进化选择中传播劣等解。这可以通过使用迭代重采样过程来完成,该过程可降低噪声,直到选择正确解的可能性达到给定的置信度为止。为了实现资源的有效利用,每个解决方案使用的样本数根据搜索空间当前区域中的噪声量而有所不同。该算法针对ZDT基准测试问题和制造优化的两个复杂的实际问题进行了评估。第一个现实问题涉及航空业中发动机零部件制造的优化,而第二个现实问题涉及汽车业中凸轮轴加工线的优化。优化的结果表明,所提出的技术在减少噪声方面是成功的,并且可以与其他噪声处理技术成功竞争。

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