Full Text Available

Note: Clicking the button above will open the full text document at the original institutional repository in a new window.

A Machine Learning Framework for Predicting Fabrication Hours for Industrial Steel Structure Projects

Construction projects are considered high risk projects especially due to their required large capital making them require extreme attention in estimation as overestimating a project will lead to losing bids and underestimating them will lead to incurring more costs than budgeted resulting in losses...

Full description

Saved in:
Bibliographic Details
Main Author: Ibrahim, Dalia
Format: Thesis
Published: AUC Knowledge Fountain 2024
Subjects:
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1867613424024813568
access_status_str Open Access
author Ibrahim, Dalia
author_browse Ibrahim, Dalia
author_facet Ibrahim, Dalia
author_sort Ibrahim, Dalia
collection Thesis
description Construction projects are considered high risk projects especially due to their required large capital making them require extreme attention in estimation as overestimating a project will lead to losing bids and underestimating them will lead to incurring more costs than budgeted resulting in losses. However, estimators are often faced with very tight timelines to finish their estimates leading them to primarily rely on their experience disregarding some crucial factors resulting in inaccurate estimates. In the steel structures industry, the steel fabrication phase accounts for 30 to 40% of the overall project cost; in addition, the steel industry is labor driven; thus, steel structure companies usually estimate their fabrication stage by estimating the required labor hours and multiplying them by crew specific rates; thus, the primary task to enhance the estimates of steel structure fabrication projects is to enhance the duration estimates. This research is conducted to address the need of a collaborating company to enhance the estimates of their fabrication stage in which most of the losses in the supply only projects in the collaborating company resides. Thus, the objective of this research is to develop a machine learning model to estimate the fabrication hours for industrial steel structures projects; addressing a relatively understudied topic. The research aims to explore the potential utilization of periodical records available in steel fabricator companies to develop machine learning models that can enhance the accuracy of the duration estimates while providing a time efficient tool for estimation engineers to use. The objectives were achieved by employing combinations of six machine learning models and various pre-processing techniques to find the model that best enhances the estimates of the fabrication hours of the collaborating company. This research investigates the use of Ordinary Least Squares Multiple Linear Regression, Lasso Regression, Ridge Regression, K-Nearest Neighbors regression, Support Vector Machines Regression and Multi-layer perception Artificial Neural Networks in tandem with log transformation, polynomial features, Yeo-Johnson transformation, and data splitting in the pursuit of reaching the best model. The research also delves into the identification of the most important features affecting the model performance through sequential feature selection, investigation of linear regression models coefficients and spearman correlation. The research shows that the most important features are the number of attachments and the weight of plates followed by the weights of light, medium, heavy and extra heavy profiles and the type of steel (main steel, miscellaneous steel, built-up steel). The best modeling technique was the separation of the dataset into three datasets based on the type of steel, applying support vector regression with Yeo-Johnson transformation on the main steel and miscellaneous steel dataset and applying ordinary least squares linear regression on the built-up dataset. The best model has a MAPE of 30% and MAE of 291 hours resulting in a decrease in a 25% decrease in MAPE and a 52% decrease in the MAE compared to using the company’s conventional estimation techniques In addition, the machine learning model resulted in a 94.5% decrease in the percentage error of cost estimates compared to conventional estimation.
format Thesis
id oai:fount.aucegypt.edu:etds-3374
institution American University in Cairo (Egypt)
last_indexed 2026-06-10T12:35:55.364Z
license_str Not specified — see source repository
provenance_str_mv Harvested via OAI-PMH from AUC Knowledge Fountain — bepress
publishDate 2024
publishDateRange 2024
publishDateSort 2024
publisher AUC Knowledge Fountain
publisherStr AUC Knowledge Fountain
record_format dspace
source_str AUC Knowledge Fountain — bepress
spelling oai:fount.aucegypt.edu:etds-3374 A Machine Learning Framework for Predicting Fabrication Hours for Industrial Steel Structure Projects Ibrahim, Dalia Construction projects are considered high risk projects especially due to their required large capital making them require extreme attention in estimation as overestimating a project will lead to losing bids and underestimating them will lead to incurring more costs than budgeted resulting in losses. However, estimators are often faced with very tight timelines to finish their estimates leading them to primarily rely on their experience disregarding some crucial factors resulting in inaccurate estimates. In the steel structures industry, the steel fabrication phase accounts for 30 to 40% of the overall project cost; in addition, the steel industry is labor driven; thus, steel structure companies usually estimate their fabrication stage by estimating the required labor hours and multiplying them by crew specific rates; thus, the primary task to enhance the estimates of steel structure fabrication projects is to enhance the duration estimates. This research is conducted to address the need of a collaborating company to enhance the estimates of their fabrication stage in which most of the losses in the supply only projects in the collaborating company resides. Thus, the objective of this research is to develop a machine learning model to estimate the fabrication hours for industrial steel structures projects; addressing a relatively understudied topic. The research aims to explore the potential utilization of periodical records available in steel fabricator companies to develop machine learning models that can enhance the accuracy of the duration estimates while providing a time efficient tool for estimation engineers to use. The objectives were achieved by employing combinations of six machine learning models and various pre-processing techniques to find the model that best enhances the estimates of the fabrication hours of the collaborating company. This research investigates the use of Ordinary Least Squares Multiple Linear Regression, Lasso Regression, Ridge Regression, K-Nearest Neighbors regression, Support Vector Machines Regression and Multi-layer perception Artificial Neural Networks in tandem with log transformation, polynomial features, Yeo-Johnson transformation, and data splitting in the pursuit of reaching the best model. The research also delves into the identification of the most important features affecting the model performance through sequential feature selection, investigation of linear regression models coefficients and spearman correlation. The research shows that the most important features are the number of attachments and the weight of plates followed by the weights of light, medium, heavy and extra heavy profiles and the type of steel (main steel, miscellaneous steel, built-up steel). The best modeling technique was the separation of the dataset into three datasets based on the type of steel, applying support vector regression with Yeo-Johnson transformation on the main steel and miscellaneous steel dataset and applying ordinary least squares linear regression on the built-up dataset. The best model has a MAPE of 30% and MAE of 291 hours resulting in a decrease in a 25% decrease in MAPE and a 52% decrease in the MAE compared to using the company’s conventional estimation techniques In addition, the machine learning model resulted in a 94.5% decrease in the percentage error of cost estimates compared to conventional estimation. 2024-06-12T07:00:00Z thesis application/pdf https://fount.aucegypt.edu/etds/2332 https://fount.aucegypt.edu/context/etds/article/3374/viewcontent/Dalia_Ibrahim_Ibrahim_thesis.pdf Theses and Dissertations AUC Knowledge Fountain Construction Productivity Estimation Construction Cost Estimation Construction Duration Estimation Construction Project Management Steel Structures Steel Structures Fabrication Steel Structures Fabrication Hours Machine Learning in Construction Artificial Intelligence in Construction Construction Technology. Construction Engineering Construction Engineering and Management Data Science
spellingShingle Construction Productivity Estimation
Construction Cost Estimation
Construction Duration Estimation
Construction Project Management
Steel Structures
Steel Structures Fabrication
Steel Structures Fabrication Hours
Machine Learning in Construction
Artificial Intelligence in Construction
Construction Technology.
Construction Engineering
Construction Engineering and Management
Data Science
Ibrahim, Dalia
A Machine Learning Framework for Predicting Fabrication Hours for Industrial Steel Structure Projects
title A Machine Learning Framework for Predicting Fabrication Hours for Industrial Steel Structure Projects
title_full A Machine Learning Framework for Predicting Fabrication Hours for Industrial Steel Structure Projects
title_fullStr A Machine Learning Framework for Predicting Fabrication Hours for Industrial Steel Structure Projects
title_full_unstemmed A Machine Learning Framework for Predicting Fabrication Hours for Industrial Steel Structure Projects
title_short A Machine Learning Framework for Predicting Fabrication Hours for Industrial Steel Structure Projects
title_sort machine learning framework for predicting fabrication hours for industrial steel structure projects
topic Construction Productivity Estimation
Construction Cost Estimation
Construction Duration Estimation
Construction Project Management
Steel Structures
Steel Structures Fabrication
Steel Structures Fabrication Hours
Machine Learning in Construction
Artificial Intelligence in Construction
Construction Technology.
Construction Engineering
Construction Engineering and Management
Data Science
url https://fount.aucegypt.edu/etds/2332
https://fount.aucegypt.edu/context/etds/article/3374/viewcontent/Dalia_Ibrahim_Ibrahim_thesis.pdf
work_keys_str_mv AT ibrahimdalia amachinelearningframeworkforpredictingfabricationhoursforindustrialsteelstructureprojects
AT ibrahimdalia machinelearningframeworkforpredictingfabricationhoursforindustrialsteelstructureprojects