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Collective sensing of workers' gait patterns to identify fall hazards in construction
AbstractCurrent hazard-identification efforts in construction mostly rely on human judgment, a reality that leaves a significant number of hazards unidentified or not well-assessed. This situation highlights a need for enhancing hazard-identification capabilities in dynamic and unpredictable construction environments. Given the fact that hazards cause disruptions in workers' behaviors and responses, capturing such disruptions offers opportunities for identifying hazards. This study proposes a collective sensing approach that senses and assesses workers' gait abnormalities in order to identify physical fall hazards in a construction jobsite. Laboratory experiments simulating an ironworkers' working environment were designed and conducted to examine the feasibility of the proposed approach. A wearable inertial measurement unit (WIMU) attached to a subject's ankle collected kinematic gait data. The results indicated that the aggregated gait abnormality score from multiple subjects have a strong correlation with the existence of installed fall hazards such as obstacles and slippery surfaces. This outcome highlights the opportunity for future devices to use workers' abnormal gait responses to reveal safety hazards in construction environments.
HighlightA hazard identification approach based on worker response is proposed.Gait abnormality of each stride is assessed from wearable inertial measurement unit.Collective gait abnormalities of multiple workers are quantified in each location.A strong correlation between collective abnormalities and hazard locations is found,
Collective sensing of workers' gait patterns to identify fall hazards in construction
AbstractCurrent hazard-identification efforts in construction mostly rely on human judgment, a reality that leaves a significant number of hazards unidentified or not well-assessed. This situation highlights a need for enhancing hazard-identification capabilities in dynamic and unpredictable construction environments. Given the fact that hazards cause disruptions in workers' behaviors and responses, capturing such disruptions offers opportunities for identifying hazards. This study proposes a collective sensing approach that senses and assesses workers' gait abnormalities in order to identify physical fall hazards in a construction jobsite. Laboratory experiments simulating an ironworkers' working environment were designed and conducted to examine the feasibility of the proposed approach. A wearable inertial measurement unit (WIMU) attached to a subject's ankle collected kinematic gait data. The results indicated that the aggregated gait abnormality score from multiple subjects have a strong correlation with the existence of installed fall hazards such as obstacles and slippery surfaces. This outcome highlights the opportunity for future devices to use workers' abnormal gait responses to reveal safety hazards in construction environments.
HighlightA hazard identification approach based on worker response is proposed.Gait abnormality of each stride is assessed from wearable inertial measurement unit.Collective gait abnormalities of multiple workers are quantified in each location.A strong correlation between collective abnormalities and hazard locations is found,
Collective sensing of workers' gait patterns to identify fall hazards in construction
Yang, Kanghyeok (Autor:in) / Ahn, Changbum R. (Autor:in) / Vuran, Mehmet C. (Autor:in) / Kim, Hyunsoo (Autor:in)
Automation in Construction ; 82 ; 166-178
07.04.2017
13 pages
Aufsatz (Zeitschrift)
Elektronische Ressource
Englisch
Collective sensing of workers' gait patterns to identify fall hazards in construction
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