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Time-cost optimization model proposal for construction projects with genetic algorithm and fuzzy logic approach
Author(s) -
Hatice Acar Yildirim,
Cemil Akçay
Publication year - 2019
Publication title -
revista de la construcción
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.232
H-Index - 10
eISSN - 0718-915X
pISSN - 0717-7925
DOI - 10.7764/rdlc.18.3.554
Subject(s) - fuzzy logic , genetic algorithm , duration (music) , scheduling (production processes) , operations research , project plan , mathematical optimization , pareto principle , computer science , risk analysis (engineering) , industrial engineering , reliability engineering , engineering , mathematics , economics , artificial intelligence , medicine , art , procurement , literature , management
DOI: 10.7764/RDLC.18.3.554 Considering the construction industry holds ten percent on average in the gross national product over the world, the importance of efficient use of resources emerges. To alleviate the possibility of the risk factors and various uncertaintiesu0027 negative impact on the project, the usage of the scheduling tools should be supported for planning as well as risk management. In todayu0027s construction perspective, the quality is not a primary objective; construction projects have to be completed within the cost and duration limits. During the construction progress, the inserting of extra activities affects to construction delays. Project success; from the planning stage to the completion of the building, it is possible to plan the resources, use them efficiently, and realize the determined time and cost objectives. In this study, a model is developed by using a fuzzy logic approach and genetic algorithm in order to provide time-cost optimization in construction projects under uncertainties. Firstly, fuzzy sets are used to take into account the effects of time and cost uncertainties on construction works. Fuzzy sets are used to model uncertainties, and the genetic algorithm is used to acquire minimum Project cost and duration. Thus, by establishing a fuzzy time-cost optimization model, optimum time-cost results are obtained according to different risk levels determined by the decision-makers. At the final stage, Pareto fronts from different risk levels that contain both minimum costs and durations are obtained and plotted.

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