A fast and accurate solution of constrained optimization problems using a hybrid bi-objective and penalty function approach

K. Deb, Rituparna Datta
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引用次数: 64

Abstract

Evolutionary algorithms are modified in various ways to solve constrained optimization problems. Of them, the use of a bi-objective evolutionary algorithm in which the minimization of the constraint violation is included as an additional objective, has received a significant attention. Classical penalty function approach is another common methodology which requires an appropriate knowledge of the associated penalty parameter. In this paper, we combine a bi-objective evolutionary approach with the penalty function methodology in a manner complementary to each other. The bi-objective optimization approach provides a good estimate of the penalty parameter, while the unconstrained penalty function approach using classical means provides the overall hybrid algorithm its convergence property. We demonstrate the working of the procedure on a two-variable problem and then solve a number of standard numerical test problems from the EA literature. In all cases, our proposed hybrid methodology is observed to take one or more orders of magnitude smaller number of function evaluations to find the constrained minimum solution accurately. To the best of our knowledge, no previous evolutionary constrained optimization algorithm has reported such a fast and accurate performance on the chosen problems.
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用双目标和惩罚函数混合方法快速准确地求解约束优化问题
为了解决约束优化问题,对进化算法进行了各种改进。其中,双目标进化算法的使用受到了极大的关注,该算法将约束违反的最小化作为附加目标。经典罚函数法是另一种常用的方法,它需要适当了解相关的罚参数。在本文中,我们以一种互补的方式将双目标进化方法与惩罚函数方法相结合。双目标优化方法提供了良好的惩罚参数估计,而使用经典均值的无约束惩罚函数方法提供了整体混合算法的收敛性。我们演示了该程序在双变量问题上的工作,然后解决了EA文献中的一些标准数值测试问题。在所有情况下,我们提出的混合方法被观察到需要一个或多个数量级的函数评估的数量减少,以准确地找到约束的最小解。据我们所知,以前没有进化约束优化算法在选择问题上有如此快速和准确的性能。
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