使用基于下降的交叉算子的无约束鲁棒优化

Ankur Sinha, Aleksi Porokka, P. Malo, K. Deb
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引用次数: 3

摘要

大多数实际的优化问题都涉及不可靠的变量和参数,并且经常在其标称值附近变化。如果在标称值下解决优化问题而不考虑不确定性,可能会导致严重的操作影响。为了避免可能对系统有害的结果,人们求助于鲁棒优化范式,试图优化由于扰动而产生的“最坏情况”解决方案。本文提出了一种进化算法,用于求解不确定性无约束问题的鲁棒优化。该算法利用一种新的交叉算子来识别一个基于锥的下降区域来产生后代。这大大节省了函数计算的时间,但仍然保证了在困难的多模态问题上的收敛性。构建了许多测试用例来评估所提出的算法,并与两个基准用例进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Unconstrained robust optimization using a descent-based crossover operator
Most of the practical optimization problems involve variables and parameters that are not reliable and often vary around their nominal values. If the optimization problem is solved at the nominal values without taking the uncertainty into account, it can lead to severe operational implications. In order to avoid consequences that can be detrimental for the system, one resorts to the robust optimization paradigm that attempts to optimize the “worst case” solution arising as a result of perturbations. In this paper, we propose an evolutionary algorithm for robust optimization of unconstrained problems involving uncertainty. The algorithm utilizes a novel crossover operator that identifies a cone-based descent region to produce the offspring. This leads to a large saving in function evaluations, but still guarantees convergence on difficult multimodal problems. A number of test cases are constructed to evaluate the proposed algorithm and comparisons are drawn against two benchmark cases.
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