A GRU-Based Model for Detecting Common Accidents of Construction Workers

Author:

Dzeng Ren-Jye1,Watanabe Keisuke2,Hsueh Hsien-Hui1,Fu Chien-Kai1

Affiliation:

1. Department of Civil Engineering, National Yang Ming Chiao Tung University, Hsinchu 30010, Taiwan

2. Department of Marine Science and Ocean Engineering, School of Marine Science and Technology, Tokai University, Shizuoka 424–8610, Japan

Abstract

Fall accidents in the construction industry have been studied over several decades and identified as a common hazard and the leading cause of fatalities. Inertial sensors have recently been used to detect accidents of workers in construction sites, such as falls or trips. IMU-based systems for detecting fall-related accidents have been developed and have yielded satisfactory accuracy in laboratory settings. Nevertheless, the existing systems fail to uphold consistent accuracy and produce a significant number of false alarms when deployed in real-world settings, primarily due to the intricate nature of the working environments and the behaviors of the workers. In this research, the authors redesign the aforementioned laboratory experiment to target situations that are prone to false alarms based on the feedback obtained from workers in real construction sites. In addition, a new algorithm based on recurrent neural networks was developed to reduce the frequencies of various types of false alarms. The proposed model outperforms the existing benchmark model (i.e., hierarchical threshold model) with higher sensitivities and fewer false alarms in detecting stumble (100% sensitivity vs. 40%) and fall (95% sensitivity vs. 65%) events. However, the model did not outperform the hierarchical model in detecting coma events in terms of sensitivity (70% vs. 100%), but it did generate fewer false alarms (5 false alarms vs. 13).

Funder

National Science and Technology Council, Taiwan

Publisher

MDPI AG

Reference17 articles.

1. OSHA Taiwan (2019). Yearbook of Labor Inspection Statistic 2019, Occupational Safety and Health Administration, Ministry of Labor. (In Chinese).

2. (2023, November 30). U.S. Bureau of Labor Statistics, Construction Death Due to Falls, Slips, and Trips Increased 5.9 Percent in 2021. TED: The Economics Daily, 1 May 2021, Available online: https://www.bls.gov/opub/ted/2023/construction-deaths-due-to-falls-slips-and-trips-increased-5-9-percent-in-2021.htm.

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4. Iervolino, R., Bonavolontà, F., and Cavallari, A. (2017, January 27–29). A wearable device for sport performance analysis and monitoring. Proceedings of the 2017 IEEE International Workshop on Measurement and Networking (M&N), Naples, Italy.

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