Utilizing Artificial Neural Networks for Predictive KPI Analysis in Bridge Projects

Authors

  • Faiq M.S. Al-Zwainy Forensic DNA Center for Research and Training, Al-Nahrain University, Baghdad, Iraq
  • Maryam G.S. Al-khazrajy Civil Engineering Department, Al-Nahrain University, Baghdad-Iraq
  • Nidal M. Hussein Department of Civil Engineering, Faculty of Engineering, University of Petra, Amman, Jordan
  • Sherif Mohamed School of Surveying and Built Environment, University of Southern, Queensland, QLD, Australia
  • Mazin M. Sarhan Civil Engineering Department, College of Engineering, Mustansiriyah University, Baghdad, Iraq
  • Tariq J. Al-Musawi Building and Construction Techniques Engineering Department, Al-Mustaqbal University College, 51001 Hillah, Babylon, Iraq
  • Gasim Hayder Department of Civil Engineering, College of Engineering, Universiti Tenaga Nasional (UNITEN), Kajang 43000, Selangor Darul Ehsan, Malaysia

Keywords:

Bridge Projects, Artuficial Neural Networks, KPI, SPI, CPI, CSI.

Abstract

KPI Analysis is a very important element in the process of construction project management especially with regard to the predictive of duration of bridge projects, main objective of this study is to develop intelligent prediction models, using Artificial Neural Network (ANN), to forecast earned value indicators in the early stages of the lifecycle of bridge projects in Republic of Iraq. Data used to develop neural network model for estimation of earned value indicators were past bridge contract data from Iraq, where, Iraqi Ministry of Construction, Housing, Municipalities, and Public Works launched bridges projects in 2021 and is expected to continue until 2025. variables affecting on earned value indicators of bridge projects were divided into two main categories; First category called Independent Variables, which include three variables, as the following; Schedule Performance Index (SPI), Cost Performance Index (CPI), and Cost-Schedule Index (CSI). While, second category called Dependent Variables, which include four variables as the following; Planned Cost (PC), Planned Duration (PD), Total Area (TA), and, Total Bridge Length (TBL). Three model was built for the prediction of earned value indectors of bridge projects. It was found that ANN models have the ability to predict SPI, CPI and CSI  with excellent degree of accuracy of the coefficient of correlation (R) 0.8853%, 0.8037%, 0.81094%, and average accuracy percentage of 89.91%, 69.829%, 83.794% respectivily. This indicates that the relationship between the independent and independent variables of the developed models is good and the predicted values from a forecast model fit with the real-life data.

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Published

2024-09-24

How to Cite

Faiq M.S. Al-Zwainy, Maryam G.S. Al-khazrajy, Nidal M. Hussein, Sherif Mohamed, Mazin M. Sarhan, Tariq J. Al-Musawi, & Gasim Hayder. (2024). Utilizing Artificial Neural Networks for Predictive KPI Analysis in Bridge Projects. Journal of Computational Analysis and Applications (JoCAAA), 33(07), 1290–1304. Retrieved from http://eudoxuspress.com/index.php/pub/article/view/1211

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