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Overall multiobjective optimization of construction projects scheduling using particle swarm

机译:基于粒子群的建设项目调度总体多目标优化

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Purpose - Developing an optimized project schedule that considers all decision criteria represents a challenge for project managers. The purpose of this paper is to provide a multi-objectives overall optimization model for project scheduling considering time, cost, resources, and cash flow. This development aims to overcome the limitations of optimizing each objective at once resulting of non-overall optimized schedule. Design/methodology/approach - In this paper, a multi-objectives overall optimization model for project scheduling is developed using particle swarm optimization with a new evolutionary strategy based on the compromise solution of the Pareto-front. This model optimizes the most important decisions that affect a given project including: time, cost, resources, and cash flow. The study assumes each activity has different execution methods accompanied by different time, cost, cost distribution pattern, and multiple resource utilization schemes. Findings - Applying the developed model to schedule a real-life case study project proves that the proposed model is valid in modeling real-life construction projects and gives important results for schedulers and project managers. The proposed model is expected to help construction managers and decision makers in successfully completing the project on time and reduced budget by utilizing the available information and resources. Originality/value - The paper presented a novel model that has four main characteristics: it produces an optimized schedule considering time, cost, resources, and cash flow simultaneously; it incorporates a powerful particle swarm optimization technique to search for the optimum schedule; it applies multi-objectives optimization rather than single-objective and it uses a unique Pareto-compromise solution to drive the fitness calculations of the evolutionary process.
机译:目的-制定考虑所有决策标准的优化项目进度表对项目经理构成了挑战。本文的目的是在考虑时间,成本,资源和现金流的情况下,为项目调度提供一个多目标整体优化模型。这种发展旨在克服由于非整体优化计划而导致立即优化每个目标的局限性。设计/方法/方法-在本文中,基于Pareto-front折衷解决方案的粒子群优化和新的进化策略,使用粒子群优化技术开发了用于项目调度的多目标整体优化模型。该模型优化了影响给定项目的最重要决策,包括:时间,成本,资源和现金流。该研究假设每个活动具有不同的执行方法,并带有不同的时间,成本,成本分配模式和多种资源利用方案。调查结果-将开发的模型应用于实际案例研究项目,可以证明所提出的模型在对实际建筑项目进行建模时是有效的,并为调度员和项目经理提供了重要的结果。预期该提议的模型将通过利用可用的信息和资源来帮助建筑经理和决策者按时成功完成项目并减少预算。原创性/价值-本文提出了一种新颖的模型,该模型具有四个主要特征:它同时考虑时间,成本,资源和现金流量,产生了优化的时间表;它采用了强大的粒子群优化技术来搜索最佳进度表;它应用多目标优化而不是单目标,并且使用独特的帕累托折衷解决方案来驱动进化过程的适应度计算。

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