Modelling uncertainty of cost and time in highway projects

IF 1.9 Q3 MANAGEMENT
A. Moghayedi
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引用次数: 3

Abstract

The construction of highway projects is characterised by cost overruns and time delays, due to the estimation approach and inappropriate analytical tools to predict uncertainty. The study therefore developed a hybrid intelligent tool that models three sources of uncertainty in linear infrastructure projects: variability, correlation and disruptive events. The developed tool measures uncertainties’ effect on cost and time of projects, by combining classical and intelligence prediction techniques. The variabilities were modelled using probability distributions; the Copula technique modelled the correlations. The Markov processes simulated the occurrence of disruptive events. The Adaptive Neuro-Fuzzy Inference System was used to assess the size of impact of disruptive events on cost and time of activities. The total project cost and time were simulated by propagating the impact of the three sources of uncertainty in the Monte Carlo simulation environment. The developed uncertainty model was validated against the final cost and time of a highway project. The study found that the accumulated impact of the three sources of uncertainty significantly increased the construction cost and time of infrastructure projects. It concludes that the improvement in accuracy of cost and time estimation of highway projects depends on a combination of classical and intelligent prediction techniques.
公路工程中成本和时间的不确定性建模
由于估算方法和不适当的分析工具来预测不确定性,高速公路项目的建设具有成本超支和时间延迟的特点。因此,该研究开发了一种混合智能工具,可以模拟线性基础设施项目中的三种不确定性来源:可变性、相关性和破坏性事件。开发的工具通过结合经典和智能预测技术来测量不确定性对项目成本和时间的影响。变量使用概率分布建模;Copula技术模拟了这些相关性。马尔可夫过程模拟了破坏性事件的发生。采用自适应神经模糊推理系统评估破坏性事件对活动成本和时间的影响程度。在蒙特卡洛模拟环境中,通过传播三种不确定性来源的影响来模拟项目的总成本和时间。以某公路项目的最终成本和时间为例,对所建立的不确定性模型进行了验证。研究发现,三种不确定性来源的累积影响显著增加了基础设施项目的建设成本和时间。本文认为,提高公路工程造价时间估算的准确性,需要经典预测技术与智能预测技术相结合。
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来源期刊
CiteScore
2.70
自引率
14.30%
发文量
18
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