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A knowledge-based expert system to assess power plant project cost overrun risks

机译:基于知识的专家系统评估电厂项目成本超支风险

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摘要

Preventing cost overruns of such infrastructure projects as power plants is a global project management problem. The existing risk assessment methods/models have limitations to address the complicated nature of these projects, incorporate the probabilistic causal relationships of the risks and probabilistic data for risk assessment, by taking into account the domain experts' judgments, subjectivity, and uncertainty involved in their judgments in the decision making process. A knowledge-based expert system is presented to address this issue, using a fuzzy canonical model (FCM) that integrates the fuzzy group decision-making approach (FGDMA) and the Canonical model (i.e. a modified Bayesian belief network model). The FCM overcomes: (a) the subjectivity and uncertainty involved in domain experts' judgment, (b) significantly reduces the time and effort needed for the domain experts in eliciting conditional probabilities of the risks involved in complex risk networks, and (c) reduces the model development tasks, which also reduces the computational load on the model. This approach advances the applications of fuzzy-Bayesian models for cost overrun risks assessment in a complex and uncertain project environment by addressing the major constraints associated with such models. A case study demonstrates and tests the application of the model for cost overrun risk assessment in the construction and commissioning phase of a power plant project, confirming its ability to pinpoint the most critical risks involved-in this case, the complexity of the lifting and rigging heavy equipment, inadequate work inspection and testing plan, inadequate site/soil investigation, unavailability of the resources in the local market, and the contractor's poor planning and scheduling. (C) 2019 Elsevier Ltd. All rights reserved.
机译:防止诸如发电厂之类的基础设施项目的成本超支是全球项目管理问题。现有的风险评估方法/模型在解决这些项目的复杂性方面存在局限性,需要考虑领域专家的判断,主观性和不确定性,将风险的概率因果关系与风险评估的概率数据结合起来决策过程中的判断。提出了一个基于知识的专家系统来解决此问题,它使用了将模糊组决策方法(FGDMA)和规范模型(即改进的贝叶斯信念网络模型)集成在一起的模糊规范模型(FCM)。 FCM克服了以下问题:(a)领域专家判断所涉及的主观性和不确定性;(b)大大减少了领域专家得出复杂风险网络所涉及的风险的条件概率所需要的时间和精力,并且(c)减少了模型开发任务,这也减轻了模型的计算负担。通过解决与此类模型相关的主要约束,这种方法使模糊贝叶斯模型在复杂和不确定的项目环境中用于成本超支风险评估的应用得到了发展。案例研究演示并测试了该模型在电厂项目的建设和调试阶段中的成本超支风险评估的应用,确认了该模型能够确定所涉及的最关键风险的能力,在这种情况下,举升和索具的复杂性重型设备,工作检查和测试计划不足,场地/土壤调查不足,当地市场资源不足以及承包商的计划和进度安排不佳。 (C)2019 Elsevier Ltd.保留所有权利。

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