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A Study on the Analysis and Estimation of the Construction Cost by Using Deep learning in the SMART Educational Facilities - Focused on Planning and Design Stage -

딥러닝을 이용한 스마트 교육시설 공사비 분석 및 예측 - 기획·설계단계를 중심으로 -

  • Jung, Seung-Hyun (Dept. of Architectural Engineering, Hongik Univ.) ;
  • Gwon, Oh-Bin (Dept. of Architectural Engineering, Hongik Univ.) ;
  • Son, Jae-Ho (Dept. of Architectural Engineering, Hongik Univ.)
  • Received : 2018.11.15
  • Accepted : 2018.11.29
  • Published : 2018.11.30

Abstract

The purpose of this study is to predict more accurate construction costs and to support efficient decision making in the planning and design stages of smart education facilities. The higher the error in the projected cost, the more risk a project manager takes. If the manager can predict a more accurate construction cost in the early stages of a project, he/she can secure a decision period and support a more rational decision. During the planning and design stages, there is a limited amount of variables that can be selected for the estimating model. Moreover, since the number of completed smart schools is limited, there is little data. In this study, various artificial intelligence models were used to accurately predict the construction cost in the planning and design phase with limited variables and lack of performance data. A theoretical study on an artificial neural network and deep learning was carried out. As the artificial neural network has frequent problems of overfitting, it is found that there is a problem in practical application. In order to overcome the problem, this study suggests that the improved models of Deep Neural Network and Deep Belief Network are more effective in making accurate predictions. Deep Neural Network (DNN) and Deep Belief Network (DBN) models were constructed for the prediction of construction cost. Average Error Rate and Root Mean Square Error (RMSE) were calculated to compare the error and accuracy of those models. This study proposes a cost prediction model that can be used practically in the planning and design stages.

Keywords

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Fig. 1. Steps of the research process

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Fig. 2. Diagram of Single-Layer Perceptron(Rosenblatt, 1958)

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Fig. 4. Back Propagation Algorithm Process

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Fig. 3. Diagram of Multi-Layer Perceptron

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Fig. 5. ReLU & TanH

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Fig. 6. DBN Process

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Fig. 7. Cost factor in Design planning Step

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Fig. 8. Hyper Parameter in R and Java

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Fig. 9. ANN Modeling by Hyper Parameter

Table 1. Research using artificial intelligence

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Table 2. Selection of Variables in Prior Research

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Table 3. Example of Application (Step 2, 3)

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Table 4. Data Summary

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Table 5. Construction Cost Index by year

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Table 6. Hyper-Parameter results (ANN)

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Table 7. Error rate & RMSE of ANN model

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Table 8. Hyper-Parameter results (DNN)

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Table 9. Error rate & RMSE of DNN model

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Table 10. Hidden layer test of DBN model

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Table 11 Error rate & RMSE of DBN model

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Table 12. Comparison of DBN, DNN, ANN

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