ABSTRACT
In this research stud) , the
investigation of building details on the construction project cost (Naira) and
duration (days) using artificial neural network (ANN) which possesses the
ability to generalize complex input-output relationships between given datasets
was carried out. From relevant literature review, expertjudgment and extensive
Held survey, system database were generated with six input factors namely;
number ofactivities (Act.), building area (BA), tvpe offoundation (FT), number
of floors (storey), class of clients and contractors, and twooutput parameters
(duration and cost). The results obtained indicated higher cost and duration
variations for the projects given to sole and mini contractors. This is due to
inadequate modernization, technical advancements and quality of resource
personnel provided by the company to coordinate and manage the construction
project activities. The medium and multi companies possess sophisticated tools
and equipment which they utilize to achieve optimal results in terms of desired
quality within planned time and resources to enable efficient execution ofthe
project. This helps to prevent cost overrun and enable proper cost estimation.
The bidding cost and negotiation fees were also observed to effect the choice
of class of contractors recruited for the construction job as the clients with
higher financial capacity such as government and cooperate organizations
negotiated and hired the multi and medium companies. Feed-Forward Back
propagation network was used in the smart intelligent modeling development in
MATLAB using Lcvenbcrg-Marquardt training algorithm and mean squared error
(MSE) performance criteria to achieve (6-22-2) optimized network architecture.
Using loss function parameters (mean absolute error (MAE) and root mean squared
error (RMSE) and multiple linear regression (MLR) statistical method, the
developed ANN-model prediction performance was evaluated. The computed results
indicate a good correlation between ANN-model and actual results with average
R2 of 0.99995 better than MLR result of 0.6986. Also, MAE of 0.2952 and RMSE of
0.5638 were calculated which indicate a robust model.
MICHAEL, U (2026). Evaluation of Building Information Effects on Projects Duration and Cost Using Artificial Neural Network:- Ujong, Jesam A. Mouau.afribary.org: Retrieved Apr 22, 2026, from https://repository.mouau.edu.ng/work/view/evaluation-of-building-information-effects-on-projects-duration-and-cost-using-artificial-neural-network-ujong-jesam-a-7-2
UNIVERSITY, MICHAEL. "Evaluation of Building Information Effects on Projects Duration and Cost Using Artificial Neural Network:- Ujong, Jesam A" Mouau.afribary.org. Mouau.afribary.org, 22 Apr. 2026, https://repository.mouau.edu.ng/work/view/evaluation-of-building-information-effects-on-projects-duration-and-cost-using-artificial-neural-network-ujong-jesam-a-7-2. Accessed 22 Apr. 2026.
UNIVERSITY, MICHAEL. "Evaluation of Building Information Effects on Projects Duration and Cost Using Artificial Neural Network:- Ujong, Jesam A". Mouau.afribary.org, Mouau.afribary.org, 22 Apr. 2026. Web. 22 Apr. 2026. < https://repository.mouau.edu.ng/work/view/evaluation-of-building-information-effects-on-projects-duration-and-cost-using-artificial-neural-network-ujong-jesam-a-7-2 >.
UNIVERSITY, MICHAEL. "Evaluation of Building Information Effects on Projects Duration and Cost Using Artificial Neural Network:- Ujong, Jesam A" Mouau.afribary.org (2026). Accessed 22 Apr. 2026. https://repository.mouau.edu.ng/work/view/evaluation-of-building-information-effects-on-projects-duration-and-cost-using-artificial-neural-network-ujong-jesam-a-7-2