Artificial Neural Networks for Construction Management: A Review

Construction Management (CM) has to deal with a variety of uncertainties related to Time, Cost, Quality, and Safety, to name a few. Such uncertainties make the entire construction process highly unpredictable. It, therefore, falls under the purview of artificial neural networks (ANNs) in which the g...

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Main Authors: Preeti Kulkarni, Shreenivas Londhe, Makarand Deo
Format: Article
Language:English
Published: Pouyan Press 2017-10-01
Series:Journal of Soft Computing in Civil Engineering
Subjects:
Online Access:http://www.jsoftcivil.com/article_49580_de93dbb5e88d37842a26b0c1c53f17c5.pdf
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spelling doaj-64e195be91084589a1fc66cdde1345ad2021-03-21T06:54:49ZengPouyan PressJournal of Soft Computing in Civil Engineering2588-28722588-28722017-10-0112708810.22115/scce.2017.4958049580Artificial Neural Networks for Construction Management: A ReviewPreeti Kulkarni0Shreenivas Londhe1Makarand Deo2Associate Professor, Vishwakarma Institute of Information Technology, Pune, IndiaProfessor, Vishwakarma Institute of Information Technology, Pune, IndiaProfessor, Indian Institute of Technology, Mumbai, IndiaConstruction Management (CM) has to deal with a variety of uncertainties related to Time, Cost, Quality, and Safety, to name a few. Such uncertainties make the entire construction process highly unpredictable. It, therefore, falls under the purview of artificial neural networks (ANNs) in which the given hazy information can be effectively interpreted in order to arrive at meaningful conclusions. This paper reviews the application of ANNs in construction activities related to the prediction of costs, risk, and safety, tender bids, as well as labor and equipment productivity. The review suggests that the ANN’s had been highly beneficial in correctly interpreting inadequate input information. It was seen that most of the investigators used the feed forward back propagation type of the network; however, if a single ANN architecture was found to be insufficient, then hybrid modeling in association with other machine learning tools such as genetic programming and support vector machines were much useful. It was however clear that the authenticity of data and experience of the modeler are important in obtaining good results.http://www.jsoftcivil.com/article_49580_de93dbb5e88d37842a26b0c1c53f17c5.pdfconstruction managementartificial neural networkstraining algorithmsensitivity analysis
collection DOAJ
language English
format Article
sources DOAJ
author Preeti Kulkarni
Shreenivas Londhe
Makarand Deo
spellingShingle Preeti Kulkarni
Shreenivas Londhe
Makarand Deo
Artificial Neural Networks for Construction Management: A Review
Journal of Soft Computing in Civil Engineering
construction management
artificial neural networks
training algorithm
sensitivity analysis
author_facet Preeti Kulkarni
Shreenivas Londhe
Makarand Deo
author_sort Preeti Kulkarni
title Artificial Neural Networks for Construction Management: A Review
title_short Artificial Neural Networks for Construction Management: A Review
title_full Artificial Neural Networks for Construction Management: A Review
title_fullStr Artificial Neural Networks for Construction Management: A Review
title_full_unstemmed Artificial Neural Networks for Construction Management: A Review
title_sort artificial neural networks for construction management: a review
publisher Pouyan Press
series Journal of Soft Computing in Civil Engineering
issn 2588-2872
2588-2872
publishDate 2017-10-01
description Construction Management (CM) has to deal with a variety of uncertainties related to Time, Cost, Quality, and Safety, to name a few. Such uncertainties make the entire construction process highly unpredictable. It, therefore, falls under the purview of artificial neural networks (ANNs) in which the given hazy information can be effectively interpreted in order to arrive at meaningful conclusions. This paper reviews the application of ANNs in construction activities related to the prediction of costs, risk, and safety, tender bids, as well as labor and equipment productivity. The review suggests that the ANN’s had been highly beneficial in correctly interpreting inadequate input information. It was seen that most of the investigators used the feed forward back propagation type of the network; however, if a single ANN architecture was found to be insufficient, then hybrid modeling in association with other machine learning tools such as genetic programming and support vector machines were much useful. It was however clear that the authenticity of data and experience of the modeler are important in obtaining good results.
topic construction management
artificial neural networks
training algorithm
sensitivity analysis
url http://www.jsoftcivil.com/article_49580_de93dbb5e88d37842a26b0c1c53f17c5.pdf
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