分段线性时间成本权衡调度优化的多属性遗传算法

Sedigheh Nader Abadi, Hadi Aghassi, E. Roghanian
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引用次数: 1

摘要

本文提出了一种求解项目时间-成本权衡调度问题的遗传算法。一个分段线性函数估计凸非线性时间-成本关系。在建议的GA中,每个活动都有几个操作模式,每个模式都确定活动可能的执行时间和成本。基因值被编码为模式指数,模式指数是从活动模式中随机选取的。为了指示活动的构造模式,采用整数编码代替二进制编码。此外,突变基因的选择是基于染色体值,因为溶液收敛率高。遗传算法的交叉算子是基于两点方法的。本文还为该问题提供了一个多属性适应度函数。该功能可以根据决策者(DM)的偏好(时间或成本)而变化。对该算法进行了系统的描述和评价。我们还使用了一个案例研究来说明通过与类似算法进行比较来评估所提出的遗传算法。计算结果验证了所提方法的有效性。
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A multi-attribute GA for piecewise linear Time-Cost Trade-off Scheduling optimization
In this paper, we present a genetic algorithm (GA) for Project Time-Cost Trade-off Scheduling (TCTS) Problem. A piecewise linear function estimates convex non-linear time-cost relation. In the proposed GA, each activity has several operational modes and each mode identifies a possible executive time and cost of the activity. The gene value is encoded as the mode index which is selected from among modes of the activity randomly. For indicating construction mode of the activity, integer encoding is applied instead of binary encoding. Additionally, the selection of genes for mutation is based on chromosome value, as solution convergence rate is high. The crossover operator of GA is based on a two-point method. This paper also offers a multi-attribute fitness function for the problem. This function can vary by decision maker (DM) preferences (time or cost). The algorithm is described and evaluated systematically. We also used a case-study to illustrate the proposed GA that is evaluated by comparing to similar algorithms. The computational outcomes validate the effectiveness of the suggested approach.
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