A Genetic-Local Search Algorithm Approach for Resource Constrained Project Scheduling Problem

S. U. Kadam, S. U. Mane
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引用次数: 11

Abstract

In scheduling Resource Constrained Project Scheduling Problem (RCPSP) is a well-known NP hard problem. Several metaheuristics have been applied to find near optimal solution for resource constrained project scheduling problem (RCPSP). In this paper, Genetic-Local search algorithm (GLSA) is proposed to tackle the single mode resource constrained project scheduling problem. The objective of Genetic-Local search algorithm is to minimize makespan of schedule. Genetic-Local search algorithm combines elements from evolutionary and local search procedure by using priority based crossover, neighbourhood mutation operation and neighbourhood search procedure. The algorithm treats the solution of the resource constrained project scheduling problem as activity list and serial schedule generation scheme is used to generate the solution. For solving case studies in PSLIB Library, Performance of GLSA is found out against other metaheuristics. The results show that Genetic-Local search algorithm is a high quality approach that outperforms all recent algorithms for the resource constrained project scheduling problem known by the authors of this paper for the instance sets J30, J60, J90 and J120 and it is competitive with other heuristics for the instance set J30, J60, J90 and J120.
资源约束项目调度问题的遗传-局部搜索算法
在调度中,资源约束项目调度问题(RCPSP)是一个众所周知的NP困难问题。应用元启发式方法求解资源约束项目调度问题的近最优解。针对单模资源约束下的项目调度问题,提出了遗传局部搜索算法(GLSA)。遗传局部搜索算法的目标是最小化调度的最大完工时间。遗传局部搜索算法通过基于优先级的交叉、邻域突变操作和邻域搜索过程,将进化搜索和局部搜索结合起来。该算法将资源受限项目调度问题的解视为活动列表,并采用序列调度生成方案生成解。在解决PSLIB库的案例研究中,通过其他元启发式方法对GLSA的性能进行了验证。结果表明,遗传局部搜索算法对于J30、J60、J90和J120实例集是一种高质量的求解资源约束项目调度问题的方法,优于目前已知的所有算法,并且对于J30、J60、J90和J120实例集具有较强的竞争力。
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