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Akbari, S, Pour Rahimian, F, Sheikhkhoshkar, M, Banihashemi, S and Khanzadi, M (2020) Dynamic sustainable success prediction model for infrastructure projects: a rough set based fuzzy inference system. Construction Innovation , 20(04), 545–67.

  • Type: Journal Article
  • Keywords: Infrastructure projects; Rough set theory; Sustainability; Project success; Fuzzy inference system;
  • ISBN/ISSN: 1471-4175
  • URL: https://doi.org/10.1108/CI-04-2019-0034
  • 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. Design/methodology/approach 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. Findings 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. Originality/value 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.

Lavikka, R , Seppänen, O, Peltokorpi, A and Lehtovaara, J (2020) Fostering process innovations in construction through industry–university consortium. Construction Innovation , 20(04), 569–86.

Marzouk, M and Zaher, M (2020) Artificial intelligence exploitation in facility management using deep learning. Construction Innovation , 20(04), 609–24.

O'Connor, J T and Mock, B (2020) Responsibilities and accountabilities for industrial facility commissioning and startup activities. Construction Innovation , 20(04), 625–45.

Suresh, M and Arun Ram Nathan, R (2020) Readiness for lean procurement in construction projects. Construction Innovation , 20(04), 587–608.

van den Berg, M, Voordijk, H and Adriaanse, A (2020) Information processing for end-of-life coordination: a multiple-case study. Construction Innovation , 20(04), 647–71.