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DALIAN UNIVERSITY OF TECHNOLOGY Login 中文
张明媛

Associate Professor
Supervisor of Doctorate Candidates
Supervisor of Master's Candidates


Title : 建设管理系 系主任
Gender:Female
Alma Mater:Dalian University of Technology
Degree:Doctoral Degree
School/Department:Department of Construction Management
Discipline:Project Management
Business Address:综合实验4号楼509室
E-Mail:myzhang@dlut.edu.cn
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Current position: Home >> Scientific Research >> Paper Publications

A study of using smartphone to detect and identify construction workers' near-miss falls based on ANN

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Indexed by:会议论文

Date of Publication:2018-01-01

Included Journals:CPCI-S

Volume:10599

Key Words:near-miss falls; construction safety; smartphone; machine-learning; ANN

Abstract:As an effective fall accident preventive method, insight into near-miss falls provides an efficient solution to find out the causes of fall accidents, classify the type of near-miss falls and control the potential hazards. In this context, the paper proposes a method to detect and identify near-miss falls that occur when a worker walks in a workplace based on artificial neural network (ANN). The energy variation generated by workers who meet with near-miss falls is measured by sensors embedded in smart phone. Two experiments were designed to train the algorithm to identify various types of near-miss falls and test the recognition accuracy, respectively. At last, a test was conducted by workers wearing smart phones as they walked around a simulated construction workplace. The motion data was collected, processed and inputted to the trained ANN to detect and identify near-miss falls. Thresholds were obtained to measure the relationship between near-miss falls and fall accidents in a quantitate way. This approach, which integrates smart phone and ANN, will help detect near-miss fall events, identify hazardous elements and vulnerable workers, providing opportunities to eliminate dangerous conditions in a construction site or to alert possible victims that need to change their behavior before the occurrence of a fall accident.