Abstract

The workforce shortage is one of the significant problems in the construction industry. To overcome the challenges due to workforce shortage, various researchers have proposed wearable sensor-based systems in the area of construction safety and health. Although sensors provide rich and detailed information, not all sensors can be used for construction applications. This study evaluates the data quality and reliability of forearm electromyography (EMG) and inertial measurement unit (IMU) of armband sensors for construction activity classification. To achieve the proposed objective, the forearm EMG and IMU data collected from eight participants while performing construction activities such as screwing, wrenching, lifting, and carrying on two different days were used to analyze the data quality and reliability for activity recognition through seven different experiments. The results of these experiments show that the armband sensor data quality is comparable to the conventional EMG and IMU sensors with excellent relative and absolute reliability between trials for all the five activities. The activity classification results were highly reliable, with minimal change in classification accuracies for both the days. Moreover, the results conclude that the combined EMG and IMU models classify activities with higher accuracies compared to individual sensor models.

Highlights

  • The construction industry is one of the leading industries in the world, which spends $10 trillion on construction-related goods and services every year [1]

  • The signal-to-noise ratio (SNR) values of gyroscope and EMG armband data are comparable to conventional sensors (Table 1)

  • The results show that the noise level slightly increased in case of gyroscope (SDIndoor = 0.121, and SDOutdoor = 0.138) and EMG (SDIndoor = 3.006, and SDOutdoor = 2.974) data for outdoor environment (Table 2)

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Summary

Introduction

The construction industry is one of the leading industries in the world, which spends $10 trillion on construction-related goods and services every year [1]. The construction industry is facing a massive workforce shortage of skilled craft workers [2]. One of the significant causes of workforce shortage is the premature retirement of skilled craft workers due to safety and health issues. Due to a lack of proper safety training and monitoring systems, the construction workforce is exposed to various fatal and non-fatal injuries such as work-related musculoskeletal disorders (WMSDs). To overcome these challenges, various researchers have proposed wearable sensor-based systems in the area of construction safety and health [3,4,5,6,7,8]. All these applications can be categorized as a classification problem since they involve identifying different postures, classifying different physical and mental workloads, Sensors 2020, 20, 5264; doi:10.3390/s20185264 www.mdpi.com/journal/sensors

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