Abstract

Construction site overhead costs are key components of cost estimation in construction projects. The estimates are expected to be accurate, but there is a growing demand to shorten the time necessary to deliver cost estimates. The balancing (symmetry) between time of calculation and satisfaction of reliable estimation was the reason for developing a new model for cost estimation in construction. This paper reports some results from the authors’ broad research on the modelling processes in engineering related to estimation of construction costs using artificial intelligence tools. The aim of this work was to develop a model capable of predicting a construction site cost index that would benefit from combining several artificial neural networks into an ensemble. Combining selected neural networks and forming the ensemble-based models compromised their strengths and weaknesses. With the use of data including training patterns collected on the basis of studies of completed construction projects, the authors investigated various types of neural networks in order to select the members of the ensemble. Finally, three models that were assessed in terms of performance and prediction quality were proposed. The results revealed that the developed models based on ensemble averaging and stacked generalisation met the expectations of knowledge generalisation and accuracy of prediction of site overhead cost index. The proposed models offer predictions of cost in an accepted error range and prove to deliver better predictions than those based on single neural networks. The developed tools can be used in the decision-making process regarding construction cost estimation.

Highlights

  • The success of a construction project is determined by obtaining three fundamental goals of a project—completion within the budget, completion within planned time, and achieving the expected quality of construction works

  • The aim of this paper is to present the results of the research on artificial neural networks (ANNs) ensembles as artificial intelligence tools for fast analysis and prediction of site overhead costs

  • The aim of the authors’ work was to develop a regression model based on the ANNs ensembles, capable of the prediction of site overhead cost index, and, able to support the estimation of site overhead costs in construction projects

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Summary

Introduction

The success of a construction project is determined by obtaining three fundamental goals of a project—completion within the budget, completion within planned time, and achieving the expected quality of construction works. The aim of the authors’ work was to develop a regression model based on the ANNs ensembles, capable of the prediction of site overhead cost index, and, able to support the estimation of site overhead costs in construction projects. The novelty of the approach proposed in this paper relies on the use of knowledge and information from the completed construction projects to train several neural networks, combine them into an ensemble, and assess the site overhead costs on the basis of the predictions produced by the ensemble of neural networks. In the three subsections, the authors systematically present the background of the research and the main assumptions of the model development process

Ensemble Averaging
Stacked Generalisation
Construction
Models’ Development Strategy
Schemeofofthe thestrategy strategy of
Results and Discussion
Summary and Conclusions

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