Title of article :
Accident Modeling in Small-Scale Construction Projects Based on Artificial Neural Networks
Author/Authors :
Alizadeh Savareh, Behrouz Beheshti University of Medical Sciences - School of Management and Medical Education - Department of Medical Informatics , Mahdinia, Mohsen Qom University of Medical Sciences - Health School and Research Center for Environmental Pollutants - Department of Occupational Safety and Health Engineering , Ghiyasi, Samira Islamic Azad University, Central Tehran Branch - Department of Environmental Engineering , Rahimi, Jmshid Alborz University of Medical Sciences - Health School - Department of Occupational Safety and Health Engineering , Soltanzadeh, Ahmad Qom University of Medical Sciences - Health School and Research Center for Environmental Pollutants - Department of Occupational Safety and Health Engineering
Pages :
6
From page :
121
To page :
126
Abstract :
Background: Several factors contribute to accidents in small-scale construction projects (SSCPs). The present study aimed to assess the influential factors in SSCP accidents and introduce a model to predict their frequency. Methods: In total, 38 SSCPs were within the scope of this investigation. The safety index of accident frequency rate (AFR) causing 452 injury construction accidents during 12 years (2007-2018) was analyzed and modeled. Data analysis was performed based on feature selection using Pearson's χ2 coefficient and SPSS modeler, as well as the artificial neural networks (ANNs) in MATLAB software. Results: Mean AFR was estimated at 26.32 ± 14.83, and the results of both approaches revealed that individual factors, organizational factors, training factors, and risk management-related factors could predict the AFR involved in SSCPs. Conclusion: The findings of this research could be reliably applied in the decisionmaking regarding safety and health construction issues. Furthermore, Pearson's correlation-coefficient and ANN modeling are considered to be reliable tools for accident modeling in SSCPs.
Keywords :
Construction projects , Accident , Modeling
Journal title :
Journal of Human, Environment and Health Promotion
Serial Year :
2019
Record number :
2504756
Link To Document :
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