Machine learning prediction of footwear slip resistance on glycerol-contaminated surfaces: A pilot study.

Journal: Applied ergonomics
PMID:

Abstract

Slippery surfaces due to oil spills pose a significant risk in various environments, including industrial workplaces, kitchens, garages, and outdoor areas. These situations can lead to accidents and falls, resulting in injuries that range from minor bruises to severe fractures or head trauma. To mitigate such risks, the use of slip resistant footwear plays a crucial role. In this study, we aimed to develop an Artificial Intelligence model capable of classifying footwear as having either high or low slip resistance based on the geometric characteristics and material parameters of their outsoles. Our model was trained on a unique dataset comprising images of 37 indoor work footwear outsoles made of rubber. To evaluate the slip resistant property of the footwear, all samples were tested using a cart-type friction measurement device, and the static and dynamic Coefficient of Frictions (COFs) of each outsole was determined on a glycerol-contaminated surface. Machine learning techniques were implemented, and a classification model was developed to determine high and low slip resistant footwear. Among the various models evaluated, the Support Vector Classifier (SVC) obtained the best results. This model achieved an accuracy of 0.68 ± 0.15 and an F1-score of 0.68 ± 0.20. Our results indicate that the proposed model effectively yet modestly identified outsoles with high and low slip resistance. This model is the first step in developing a model that footwear manufacturers can utilize to enhance product quality and reduce slip and fall incidents.

Authors

  • Kaylie Lau
    Toronto Rehabilitation Institute, University Health Network, Toronto, Canada; University of Toronto, Institute of Biomaterials and Biomedical Engineering, Toronto, Canada. Electronic address: kaylie.lau@mail.utoronto.ca.
  • Takeshi Yamaguchi
    Division of Medical Oncology, Japanese Red Cross Musashino Hospital.
  • Kei Shibata
    National Institute of Occupational Safety and Health, Japan, Kiyose, Tokyo, Japan.
  • Toshiaki Nishi
    Tohoku University, Department of Finemechanics, Sendai, Miyagi, Japan.
  • Geoff Fernie
    The Kite Research Institute, Toronto Rehabilitation Institute-University Health Network, University of Toronto, Toronto, ON M5G 2A2, Canada.
  • Atena Roshan Fekr
    Toronto Rehabilitation Institute, University Health Network, Toronto, Canada; University of Toronto, Institute of Biomaterials and Biomedical Engineering, Toronto, Canada.