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Predicting Safety Risk of Working at Heights Using Bayesian Networks
Journal article   Peer reviewed

Predicting Safety Risk of Working at Heights Using Bayesian Networks

Long D Nguyen, Dai Q Tran and Martin P Chandrawinata
Journal of construction engineering and management, Vol.142(9), p.4016041
09-01-2016
Appears in  United Nations Sustainable Development Goals @ FGCU

Abstract

Technical Papers
AbstractAlthough the construction industry has shown significant improvements in safety performance over the past 30 years, falls are still a leading cause of fatalities and serious injuries. Previous studies have focused on identifying factors affecting the risk of falls, but remained silent on investigating the evidential relationships among these factors to better prevent fall accidents. This research proposes a Bayesian network (BN) based approach to diagnose the accident risk of working at heights. The proposed approach consists of a conceptual and generic model with a protocol for assessing the risk of falls and a computational module. The generic BN model was developed on the basis of an extensive review and evaluation of causal factors leading to falls. The computational module was developed on the basis of Bayes’ rule for inference to customize model input and job site characteristics. The results of the proposed approach provide probabilities associated with different states of safety risk. Additionally, sensitivity analysis allows practitioners to identify appropriate preventive actions and safety strategies to reduce risk of fall. The proposed approach was verified and tested with a construction operation in a condo-hotel project. This study contributes to the construction safety body of knowledge by providing an effective quantitative risk assessment tool to predict the safety risk of falls from heights. Researchers and practitioners may customize the model to assess and benchmark the fall risk for different operations in the construction industry.

Metrics

63 Record Views
75 Times Cited - Scopus

Details

UN Sustainable Development Goals (SDGs)

This output has contributed to the advancement of the following goals:

#3 Good Health and Well-Being
#8 Decent Work and Economic Growth

Source: SDGs in the Output

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