Full Text Available

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

Applying data analytics for enhanced construction project performance through structural concrete rework predictive models.

Thesis (MEng)--Stellenbosch University, 2021.

Saved in:
Bibliographic Details
Main Author: Mukondwa, Fionah Mazvita
Other Authors: Wium, Jan
Format: Thesis
Language:en_ZA
Published: Stellenbosch : Stellenbosch University 2021
Subjects:
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1867613925296570368
access_status_str Open Access
author Mukondwa, Fionah Mazvita
author2 Wium, Jan
author_browse Mukondwa, Fionah Mazvita
Wium, Jan
author_facet Wium, Jan
Mukondwa, Fionah Mazvita
author_sort Mukondwa, Fionah Mazvita
collection Thesis
dc_rights_str_mv Stellenbosch University
description Thesis (MEng)--Stellenbosch University, 2021.
format Thesis
id oai:scholar.sun.ac.za:10019.1/123619
institution Stellenbosch University (South Africa)
language en_ZA
last_indexed 2026-06-10T12:43:53.285Z
license_str Other — see source repository
provenance_str_mv Harvested via OAI-PMH from SUNScholar — Stellenbosch University Repository
publishDate 2021
publishDateRange 2021
publishDateSort 2021
publisher Stellenbosch : Stellenbosch University
publisherStr Stellenbosch : Stellenbosch University
record_format dspace
source_str SUNScholar — Stellenbosch University Repository
spelling oai:scholar.sun.ac.za:10019.1/123619 Applying data analytics for enhanced construction project performance through structural concrete rework predictive models. Mukondwa, Fionah Mazvita Wium, Jan Stellenbosch University. Faculty of Engineering. Dept. of Civil Engineering. Structural concrete UCTD Engineering -- Machine learning Construction projects Failure analysis (Engineering) Survival analysis (Biometry) Analytics, Predictive Thesis (MEng)--Stellenbosch University, 2021. ENGLISH ABSTRACT: Today’s world is driven by data-based decision-making that needs to be accurate to effectively solve engineering problems involving the prediction of failure, defects, and errors. Motivated by the fourth industrial revolution (Industry 4.0) that has enhanced the performance of construction industries on a global scale, this study discusses the development of a predictive machine learning model that can be used during the construction phase to manage structural concrete rework during site inspections. This model seeks to reduce uncertainties and minimise structural concrete rework during construction to enhance project performance. To develop the model, the research approach included an exploratory case study together with interviews with experienced professionals in structural concrete construction at the Hwange Expansion Project, a mega thermal power plant construction project in Hwange, Zimbabwe. The exploratory case study and expert interviews were conducted to establish a better understanding of the risk triggers that influence structural concrete rework in a typical construction project. A fictitious modelling dataset was then generated based on the results of a questionnaire survey conducted on structural concrete experts due to the lack of sufficient project data. Various data mining techniques were also employed to develop the prediction model following some steps of the Cross Industry Standard Practise for Data Mining (CRISP-DM) framework. This fictitious dataset was modelled on five classification algorithms whose performance was evaluated using the 20-fold cross-validation test. The Neural Network classifier recorded the highest performance with accuracy and precision of over 95%. To validate the performance of the Neural Network prediction model, the confusion matrix validation test was carried out on six datasets of varying size ranging from 500 to 10 000 data points. The results from the confusion matrix validation test indicated, as expected, that the larger the dataset, the more accurate and robust the model becomes in predicting new data outcomes. Based on these findings, it was established that data analytics in the form of predictive modelling can be used by organisations to reduce uncertainties and promote data-driven decision-making during structural concrete quality checks on site. It is recommended that construction industries employ data analytics as a project management tool not only to enhance the performance of construction projects but to build reference databases for further development of big data in the industry. AFRIKAANSE OPSOMMING: Geen opsomming beskikbaar Masters 2021-07-12T06:58:36Z 2021-12-22T14:12:31Z 2021-07-12T06:58:36Z 2021-12-22T14:12:31Z 2021-12 Thesis http://hdl.handle.net/10019.1/123619 en_ZA Stellenbosch University 145 pages application/pdf Stellenbosch : Stellenbosch University
spellingShingle Structural concrete
UCTD
Engineering -- Machine learning
Construction projects
Failure analysis (Engineering)
Survival analysis (Biometry)
Analytics, Predictive
Mukondwa, Fionah Mazvita
Applying data analytics for enhanced construction project performance through structural concrete rework predictive models.
title Applying data analytics for enhanced construction project performance through structural concrete rework predictive models.
title_full Applying data analytics for enhanced construction project performance through structural concrete rework predictive models.
title_fullStr Applying data analytics for enhanced construction project performance through structural concrete rework predictive models.
title_full_unstemmed Applying data analytics for enhanced construction project performance through structural concrete rework predictive models.
title_short Applying data analytics for enhanced construction project performance through structural concrete rework predictive models.
title_sort applying data analytics for enhanced construction project performance through structural concrete rework predictive models
topic Structural concrete
UCTD
Engineering -- Machine learning
Construction projects
Failure analysis (Engineering)
Survival analysis (Biometry)
Analytics, Predictive
url http://hdl.handle.net/10019.1/123619
work_keys_str_mv AT mukondwafionahmazvita applyingdataanalyticsforenhancedconstructionprojectperformancethroughstructuralconcretereworkpredictivemodels