用遗传局部搜索方法求解资源受限的项目调度问题

O. Dridi, S. Krichen, A. Guitouni
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引用次数: 2

摘要

资源约束的项目调度问题是一个一般的调度问题,它涉及需要调度的活动,使最大完工时间最小化。然而,RCPSP被证实是一个NP-hard组合问题。重申一下,很难在合理的计算时间内解决。因此,已经开发了许多基于元启发式的方法来寻找RCPSP的近最优解。遗传算法已广泛应用于各种组合优化问题,并证明了其有效性。然而,过早收敛可能导致搜索空间的有限区域上的搜索停滞。针对这一缺点,在局部搜索算法具有良好性能的基础上,提出了一种求解RCPSP问题的遗传局部搜索算法。仿真结果表明,该算法为求解RCPSP问题提供了一种有效的方法。
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Solving resource-constrained project scheduling problem by a genetic local search approach
The resource-constrained project scheduling problem is a general scheduling problem which involving activities need to be scheduled such that the makespan is minimized. However, the RCPSP is confirmed to be an NP-hard combinatorial problem. Restated, it is hard to be solved in a reasonable computational time. Therefore, numerous metaheuristics-based approaches have been developed for finding near-optimal solution for RCPSP. Genetic algorithms have been applied to a wide variety of combinatorial optimization problems and have proved their efficiency. However, prematurely convergence may lead to search stagnation on restricted regions of the search space. To deal with this drawback and beside the good performances attained by local search procedures, a genetic local search algorithm for solving the RCPSP is proposed. Simulation results demonstrate that the proposed GLSA provides an effective and efficient approach for solving RCPSP.
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