Machine Learning for Occupational Slip-Trip-Fall Incidents Classification Within Commercial Grain Elevators
Document Type
Conference Proceeding
Publication Date
7-2021
Publisher
Springer
Abstract
The grain handling industry plays a significant role in U.S. agriculture by storing, distributing, and processing a variety of agricultural commodities. Commercial grain elevators are hazardous agro-manufacturing work environments where workers are prone to severe injuries, due to the nature of the activities and workplace. One of the leading causes of occupational incidents in all industries, including grain elevators, is slip, trip, and fall (STF). Therefore, prediction of STF incidents prior to occurrence is significant in occupational safety analysis. Despite high frequency of STF incidents at work, exploring their dominant factors via machine learning algorithms in agro-manufacturing environments is relatively new or unaddressed. Safety professionals may utilize the prediction and analysis of determinant factors of occupational incidents for actionable prevention and safety mitigation planning and practices. The objective of this research is to describe the slip-trip-fall (STF) injuries and trends in a population of agribusiness operations workers within commercial grain elevators in the Midwest of the United States, identify risk factors for STF injuries, and develop prevention strategies for STF hazards.
Chapter of
Advances in Safety Management and Human Performance
Editor
Pedro M. Arezes
Ronald L. Boring
Recommended Citation
Davoudi Kakhki, F., Freeman, S. A., & Mosher, G. A. (2021). Machine Learning for Occupational Slip-Trip-Fall Incidents Classification Within Commercial Grain Elevators. In P. M. Arezes & R. L. Boring (Eds.), Advances in Safety Management and Human Performance (pp. 154–160). Springer International Publishing. https://doi.org/10.1007/978-3-030-80288-2_18
Comments
Proceedings of the AHFE 2021 Virtual Conferences on Safety Management and Human Factors, and Human Error, Reliability, Resilience, and Performance, July 25-29, 2021, USA