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首页> 外文期刊>Journal of Construction Engineering and Management >Stochastic Time-Cost-Resource Utilization Optimization Using Nondominated Sorting Genetic Algorithm and Discrete Fuzzy Sets
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Stochastic Time-Cost-Resource Utilization Optimization Using Nondominated Sorting Genetic Algorithm and Discrete Fuzzy Sets

机译:基于非支配排序遗传算法和离散模糊集的随机时间成本资源利用优化

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In a construction project, the cost and duration of activities could change due to different uncertain variables such as weather, resource availability, etc. Resource leveling and allocation strategies also influence total time and costs of projects. In this paper, two concepts of time-cost trade-off and resource leveling and allocation have been embedded in a stochastic multiobjective optimization model which minimizes the total project time, cost, and resource moments. In the proposed time-cost-resource utilization optimization (TCRO) model, time and cost variables are considered to be fuzzy, to increase the flexibility for decision makers when using the model outputs. Application of fuzzy set theory in this study helps managers/planners to take these uncertainties into account and provide an optimal balance of time, cost, and resource utilization during the project execution. The fuzzy variables are discretized to represent different options for each activity. Nondominated sorting genetic algorithm (NSGA-II) has been used to solve the optimization problem. Results of the TCRO model for two different case studies of construction projects are presented in the paper. Total time and costs of the two case studies in the Pareto front solutions of the TCRO model cover more than 85% of the ranges of total time and costs of solutions of the biobjective time-cost optimization (TCO) model. The results show that adding the resource leveling capability to the previously developed TCO models provides more practical solutions in terms of resource allocation and utilization, which makes this research relevant to both industry practitioners and researchers.
机译:在建设项目中,活动的成本和持续时间可能会由于不同的不确定变量(例如天气,资源可用性等)而发生变化。资源分配和分配策略也会影响项目的总时间和成本。在本文中,时间-成本权衡以及资源均衡和分配这两个概念已嵌入到随机多目标优化模型中,该模型使总的项目时间,成本和资源消耗最小化。在建议的时间成本资源利用优化(TCRO)模型中,时间和成本变量被认为是模糊的,以增加决策者使用模型输出时的灵活性。模糊集理论在本研究中的应用有助于经理/计划者将这些不确定因素考虑在内,并在项目执行期间提供时间,成本和资源利用的最佳平衡。模糊变量被离散化以表示每种活动的不同选项。非支配排序遗传算法(NSGA-II)已用于解决优化问题。本文介绍了针对两个不同建设项目案例研究的TCRO模型的结果。 TCRO模型的Pareto前沿解决方案中的两个案例研究的总时间和成本占双目标时间成本优化(TCO)模型的总时间和成本范围的85%以上。结果表明,在先前开发的TCO模型中增加资源均衡功能可以在资源分配和利用方面提供更实用的解决方案,这使得该研究对于行业从业者和研究人员均具有重要意义。

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