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A model utilizing the artificial neural network in cost estimation of construction projects in Jordan

Author(s):


Medium: journal article
Language(s): English
Published in: Engineering, Construction and Architectural Management, , n. 9, v. 28
Page(s): 2466-2488
DOI: 10.1108/ecam-06-2020-0402
Abstract:

Purpose

Cost estimation is one of the most significant steps in construction planning, which must be undertaken in the preliminary stages of any project; it is required for all projects to establish the project's budget. Confidence in these initial estimates is low, primarily due to the limited availability of suitable data, which leads the construction projects to frequently end up over budget. This paper investigated the efficacy of artificial neural networks (ANNs) methodologies in overcoming cost estimation problems in the early phases of the building design process.

Design/methodology/approach

Cost and design data from 104 projects constructed over the past five years in Jordan were used to develop, train and test ANN models. At the detailed design stage, 53 design factors were utilized to develop the first ANN model; then the factors were reduced to 41 and were utilized to develop the second predictive model at the schematic design stage. Finally, 27 design factors available at the concept design stage were utilized for the third ANN model.

Findings

The models achieved average cost estimation accuracy of 98, 98 and 97% in the detailed, schematic and concept design stages, respectively.

Research limitations/implications

This paper formulated the aims and objectives to be applicable only in Jordan using historical data of building projects.

Originality/value

The ANN approach introduced as a management tool is expected to provide the stakeholders in the engineering business with an indispensable tool for predicting the cost with limited data at the early stages of construction projects.

Structurae cannot make the full text of this publication available at this time. The full text can be accessed through the publisher via the DOI: 10.1108/ecam-06-2020-0402.
  • About this
    data sheet
  • Reference-ID
    10577090
  • Published on:
    26/02/2021
  • Last updated on:
    29/11/2021
 
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