人工蜂群元启发式算法求解工程设计问题的pareto最优解集

Saima Dhouib, S. Dhouib, H. Chabchoub
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引用次数: 1

摘要

本文采用人工蜂群(ABC)元启发式算法求解目标规划问题的Pareto最优解集。首先将GP模型转化为与固定目标偏差最小化的多目标优化问题(MOO)。其次,通过目标函数的加权和公式将ABC个性化以支持MOO:根据非负分量的权重向量求解目标函数的多次标量化。非线性工程设计问题证明了该方法的有效性。在所有问题中,目标规划问题的多个解都可以在很短的计算时间内使用很少的用户定义参数找到。
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Artificial bee colony metaheuristic to find pareto optimal solutions set for engineering design problems
In this paper, an Artificial Bee Colony (ABC) metaheuristic is adapted to find Pareto optimal solutions set for Goal Programming (GP) Problems. At first, the GP model is converted to a multi-objective optimization problem (MOO) of minimizing deviations from fixed goals. At second, the ABC is personalized to support the MOO by means of a weighted sum formulation for the objective function: solving several scalarization of the objective function according to a weight vector with non-negative components. The efficiency of the proposed approach is demonstrated by nonlinear engineering design problems. In all problems, multiple solutions to the goal programming problem are found in short computational time using very few user-defined parameters.
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