| Literature DB >> 31661845 |
Yamei Zhang1, Mingyi Zhang2, Qun Fang3.
Abstract
Construction safety is critical in the success of a project. A considerable amount of effort has been placed on research and practice in order to reduce the potential risks on the construction site. Recent application of electroencephalogram (EEG) to construction research enables researchers to gain insight into construction workers' physical and mental status during construction tasks. By summarizing existing studies that involve EEG and construction safety, the literature review aims to provide practical suggestions for future research and on-site safety management. The literature search and inclusion process included eleven eligible studies. Comprehensive analysis was conducted based on primary and secondary measures. The primary measures considered the frequency bands of EEG and the channels for detecting electrical activity of the brain. The secondary measures that were involved with physical and mental status with respect to EEG signal variations as a result of task, working hour, and work conditions. Although the field of study that combines EEG measures with construction tasks is still emerging, it is worth continuous attention in the future, as relevant findings would be of great value to the safety management and risk control in the construction industry.Entities:
Keywords: EEG; construction industry; mental status; review; safety management
Year: 2019 PMID: 31661845 PMCID: PMC6862257 DOI: 10.3390/ijerph16214146
Source DB: PubMed Journal: Int J Environ Res Public Health ISSN: 1660-4601 Impact factor: 3.390
Figure 1Flowchart of the inclusion process.
Summary of study characteristics.
| Study | Sample Size | Apparatus | Primary Measures | Secondary Measures | Main Findings |
|---|---|---|---|---|---|
| Chen et al., 2016 [ | N = 5 | NeuroSky Think Gear | Frequency bands: | Mental workload in various construction tasks (ladder climbing, nuts selection, and bolts fastening) | Power spikes of engagement index can be seen in the process of ladder climbing and bolt fastening, which suggest lower risk perception ability and higher risk for accidents during the tasks. |
| Wang et al., 2017 [ | N = 10 | EPOC+ | Frequency bands: alpha, beta, and gamma waves; | Vigilance | Vigilance of construction workers is related to different tasks, which can be measured by EEG frequency bands and channels. The gamma frequency bands and left frontal channel clusters (AF3, F7, and F3) can reflect vigilance variations in EEG signals. |
| Aryal et al., 2017 [ | N = 12 | NeuroSky MindWave 2 | Frequency bands: | Physical fatigue monitored by skin temperature and heart rate | The ratio showed some increase along with the development of physical fatigue. However, no consistent changes were observed in the EEG signal among the participants. |
| Jebelli et al., 2017 [ | N = 8 | EPOC+ | Frequency bands: beta; | Physical exertion—Use EEG to differentiate physically active state from inactive state | Higher spectral power of the beta frequency band is associated with physical activities in construction tasks compared with inactive condition. |
| Chen et al., 2017 [ | N = 30 | NeuroSky Think Gear | Frequency bands: | Mental workload in various construction tasks (ladder climbing, nuts selection, and bolts fastening) | Mental workload can be reflected in EEG signals. In comparison with the alpha and beta bands, high-frequency gamma band is more suitable for task differentiation and is positively related to the mental demand. |
| Jebelli et al., 2017 [ | N = 8 | EPOC+ | Frequency bands: | Emotions in relation to various real work conditions (working at ground level, top of the ladder, and in confined space) | The valence index is negative with respect to working on top of the ladder and in a confined space, which suggests negative emotional states under the two work conditions. |
| Hwang et al., 2018 [ | N = 10 | EPOC+ | Frequency bands: alpha and beta; | Emotional state—valence and arousal—in relation to working conditions (working at ground level, on top of a ladder, and in a confined space) and hours (working after rest, 1 h, and 2 h) | Workers working at ground level for 1 h after rest display positive valence and arousal which imply positive emotions such as happiness and joy. Working in a confined space or at height for 2 h results in frustration and reduced alertness. |
| Jebelli et al., 2018 [ | N = 7 | EPOC+ | Frequency bands: alpha and beta; EEG channels: Frontal clusters (AF3, F3, AF4, and F4); Stress level based on EEG signal. | Cortisol level (a measure of stress) in relation to various real work conditions | EEG-based stress recognition, online multi-task learning algorithms (OMTL), indicated high accuracy of predicting new stressful situations in both lab environment and real construction sites. |
| Jebelli et al., 2018 [ | N = 7 | EPOC+ | Frequency bands: alpha and beta; EEG channels: Frontal clusters (AF3, F3, AF4, and F4); Stress level based on EEG signal. | Cortisol level (a measure of stress) in relation to various real work conditions (working at ground level, top of the ladder, and in confined space) | EEG signals based on the fixed windowing approach and the Gaussian Support Vector Machine indicated the highest classification accuracy (80.32%) of stress identification. |
| Li et al., 2019 [ | N = 15 | EPOC+ | Frequency bands: theta, alpha, and beta; | Mental fatigue level | EEG indicators are effective in assessing mental fatigue level and filtering construction workers who are not qualified for the on-site work due to mental fatigue. |
| Wang et al., 2019 [ | N = 10 | EPOC+ | Frequency bands: alpha, beta, and gamma waves; EEG channels: All 14 channels of the device. Vigilance was measured by candidate indices. | Vigilance | Among 30 candidate indices of vigilance, three indices showed highest correlation to construction workers’ vigilance. |