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Time Prediction Using a Neuro-Fuzzy Model for Projects in the Construction Industry
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نویسنده
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vahdani behnam ,mousavi meysam ,mousakhani morteza ,hashemi hassan
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منبع
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journal of optimization in industrial engineering - 2016 - دوره : 9 - شماره : 19 - صفحه:97 -103
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چکیده
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This paper presents a prediction model based on a new neuro-fuzzy algorithm for estimating time in construction projects. the output of the proposed prediction model, which is employed based on a locally linear neuro-fuzzy (llnf) model, is useful for assessing a project status at different time horizons. being trained by a locally linear model tree (lolimot) learning algorithm, the model is intended for use by members of the project team in performing the time control of projects in the construction industry. the present paper addresses the effects of different factors on the project time and schedule by using both fuzzy sets theory (fst) and artificial neural networks (anns) in a construction project in iran. the construction project is investigated to demonstrate the use and capabilities of the proposed model to see how it allows users and experts to actively interact and, consequently, make use of their own experience and knowledge in the estimation process. the proposed model is also compared to the well-known intelligent model (i.e., bpnn) to illustrate its performance in the construction industry.
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کلیدواژه
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Construction projects ,Time prediction ,Artificial neural networks ,locally linear neuro-fuzzy model
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آدرس
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islamic azad university, qazvin branch, industrial engineering research center, ایران, shahed university, faculty of engineering, department of industrial engineering, ایران, islamic azad university, science and research branch, faculty of management and economics, department of business management, ایران, islamic azad university, south tehran branch, young researchers and elite club, ایران
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Authors
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