Dynamic sustainable success prediction model for infrastructure projects: a rough set based fuzzy inference system

S. Akbari, F. Rahimian, Moslem Sheikhkhoshkar, S. Banihashemi, M. Khanzadi
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引用次数: 7

Abstract

Successful implementation of infrastructure projects has been a controversial issue in recent years, particularly in developing countries. This study aims to propose a decision support system (DSS) for the evaluation and prediction of project success while considering sustainability criteria.,To predict sustainable success factor, the study first developed its sustainable success factors and sustainable success criteria. These then formed a decision table. A rough set theory (RST) was then implemented for rules generation. The decision table was used as the input for the rough set, which returned a set of rules as the output. The generated rulesets were then filtered in fuzzy inference system (FIS), before serving as the basis for the DSS. The developed prediction tool was tested and validated by applying data from a real infrastructure project.,The results show that the developed rough set fuzzy method has strong ability in evaluation and prediction of the project success. Hence, the efficacy of the DSS is greatly related to the rule-based system, which applies RST to generate the rules and the result of the FIS was found to be valid via running a case study.,Use of DSS for predicting the sustainable success of the construction projects is gaining progressive interest. Integration of RST and FIS has also been advocated by the seminal literature in terms of developing robust rulesets for impeccable prediction. However, there is no preceding study adopting this integration for predicting project success from the sustainability perspective. The developed system in this study can serve as a tool to assist the decision-makers to dynamically evaluate and predict the success of their own projects based on different sustainability criteria throughout the project life cycle.
基础设施项目可持续成功动态预测模型:基于粗糙集的模糊推理系统
近年来,基础设施项目的成功实施一直是一个有争议的问题,特别是在发展中国家。本研究旨在提出一个决策支持系统(DSS)来评估和预测项目的成功,同时考虑可持续性标准。为了预测可持续成功因素,本研究首先制定了可持续成功因素和可持续成功标准。然后形成一个决策表。然后将粗糙集理论(RST)用于规则生成。决策表被用作粗集的输入,粗集返回一组规则作为输出。生成的规则集在模糊推理系统(FIS)中进行过滤,然后作为决策支持系统的基础。开发的预测工具通过应用实际基础设施项目的数据进行了测试和验证。结果表明,所建立的粗糙集模糊方法对项目成功与否具有较强的评价和预测能力。因此,决策支持系统的有效性与基于规则的系统有很大关系,该系统应用RST来生成规则,并且通过运行案例研究发现FIS的结果是有效的。利用决策支持系统预测建设项目的可持续成功正日益受到关注。在为无懈可击的预测开发健壮的规则集方面,开创性的文献也提倡RST和FIS的集成。然而,从可持续性的角度来预测项目成功,目前还没有采用这种整合的研究。本研究开发的系统可以作为一个工具,帮助决策者在整个项目生命周期中根据不同的可持续性标准动态评估和预测自己项目的成功。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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