Chapter
Nov 9, 2020
Construction Research Congress 2020

Multi-Level Assessment of Occupational Stress in the Field Using a Wearable EEG Headset

Publication: Construction Research Congress 2020: Safety, Workforce, and Education

ABSTRACT

The construction industry is among the most stressful of occupations. Traditional techniques to evaluate worker stress (e.g., self-assessment and observational checklists) may not be effective in the field because of their potential to interrupt workers’ ongoing tasks. Additionally, these methods are subject to biases. Research in neuroscience confirms that the human brain responds to various stressors, so studying patterns of brainwave activity can lead to strong assessments of subjects’ stress. The authors’ earlier research has monitored worker stress using a wearable electroencephalography (EEG) headset by applying supervised learning algorithms in a binary stress level (i.e., low and high). Despite the success of earlier work identifying excessive stress, there is a gap in knowledge in assessing medium-level stresses. It has been proven that intermittent exposure to medium-level stress decreases not only performance but also concentration and focus. This research attempts to identify multiple levels of worker stress using signals recorded from a wearable EEG headset by applying two supervised learning algorithms, multi-class support vector machines (SVM) and fully connected neural network (FCNN). A stress-related hormone, cortisol, was used as a baseline to label subjects’ stress levels. In classifying three levels of stress, the FCNN yielded a prediction accuracy of 79.26%, which is competitive with previous EEG-based stress recognition methods in a binary setting. This research should help in identifying multiple levels of stress at construction sites and aid early detection and mitigation of high stress in the field.

Get full access to this article

View all available purchase options and get full access to this chapter.

Acknowledgment

The authors would also like to recognize the assistance that they received from their collaborators from industry and the anonymous workers who participated in the data collection.

References

Ahn, C.R., Lee, S., Sun, C., Jebelli, H., Yang, K., Choi, B., 2019. Wearable Sensing Technology Applications in Construction Safety and Health. Journal of Construction Engineering and Management 145, 03119007. https://doi.org/10.1061/(ASCE)CO.1943-7862.0001708
Al-Shargie, F., Tang, T.B., Kiguchi, M., 2017. Assessment of mental stress effects on prefrontal cortical activities using canonical correlation analysis: an fNIRS-EEG study. Biomedical Optics Express 8, 2583–2598. https://doi.org/10.1364/BOE.8.002583
Bowen, P., Edwards, P., Lingard, H., Cattell, K., 2013. Workplace stress, stress effects, and coping mechanisms in the construction industry. Journal of Construction Engineering and Management 140, 04013059.
Boyd, S., Vandenberghe, L., 2004. Convex optimization. Cambridge university press.
Burke, R.J., Richardsen, A.M., 1996. Stress, burnout, and health, in: Handbook of Stress, Medicine, and Health. Wiley, New York, pp. 101–117.
Campbell, F., 2006. Occupational stress in the construction industry. Berkshire, UK: Chartered Institute of Building.
Chen, J., Ren, B., Song, X., Luo, X., 2015. Revealing the “Invisible Gorilla” in Construction: Assessing Mental Workload through Time-frequency Analysis, in: 32nd International Symposium on Automation and Robotics in Construction and Mining (ISARC 2015). International Association for Automation & Robotics in Construction (IAARC), Oulu, Finland. https://doi.org/10.22260/ISARC2015/0104
Choi, B., Jebelli, H., Lee, S., 2019. Feasibility analysis of electrodermal activity (EDA) acquired from wearable sensors to assess construction workers’ perceived risk. Safety Science 115, 110–120.
Croft, R., Barry, R., 2000. Removal of ocular artifact from the EEG: a review. Neurophysiologie Clinique/Clinical Neurophysiology 30, 5–19.
Dash, M., Liu, H., 1997. Feature selection for classification. Intelligent data analysis 1, 131–156. https://doi.org/10.1016/S1088-467X(97)00008-5
Djebarni, R., 1996. The impact of stress in site management effectiveness. Construction Management & Economics 14, 281–293.
Habibnezhad, M., Puckett, J., Fardhosseini, M.S., Jebelli, H., Stentz, T., Pratama, L.A., 2019. Experiencing Extreme Height for The First Time: The Influence of Height, Self-Judgment of Fear and a Moving Structural Beam on the Heart Rate and Postural Sway During the Quiet Stance. arXiv preprint arXiv:1906.08682.
Habibnezhad, M., Puckett, J., Fardhosseini, M. S., and Pratama, L. A. (2019). “A Mixed VR and Physical Framework to Evaluate Impacts of Virtual Legs and Elevated Narrow Working Space on Construction Workers Gait Pattern.” arXiv preprint arXiv:1906.08670.
Hwang, S., Jebelli, H., Choi, B., Choi, M., Lee, S., 2018. Measuring Workers’ Emotional State during Construction Tasks Using Wearable EEG. Journal of Construction Engineering and Management 144, 04018050. https://doi.org/10.1061/(ASCE)CO.1943-7862.0001506
Ibem, E.O., Anosike, N., Azuh, D.E., Mosaku, T.O., 2011. Work stress among professionals in the building construction industry in Nigeria. Australasian Journal of Construction Economics and Building 11, 45–57.
Ille, N., Berg, P., Scherg, M., 2002. Artifact correction of the ongoing EEG using spatial filters based on artifact and brain signal topographies. Journal of clinical neurophysiology 19, 113–124.
Islam, M.K., Rastegarnia, A., Yang, Z., 2016. Methods for artifact detection and removal from scalp EEG: A review. Neurophysiologie Clinique/Clinical Neurophysiology 46, 287–305.
Jebelli, H., Choi, B., Lee, S.H., 2020. Application of Wearable Biosensors to Construction Sites. I: Assessing Workers’ Stress. Journal of Construction Engineering and Management. https://doi.org/10.1061/(ASCE)CO.1943-7862.0001729.
Jebelli, H., Hwang, S., Lee, S., 2018a. EEG-based Workers’ Stress Recognition at Construction Sites. Automation in Construction 93, 315–324. https://doi.org/doi.org/10.1016/j.autcon.2018.05.027
Jebelli, H., Hwang, S., Lee, S., 2018b. EEG Signal-Processing Framework to Obtain High-Quality Brain Waves from an Off-the-Shelf Wearable EEG Device. Journal of Computing in Civil Engineering 32, 04017070. https://doi.org/10.1061/(ASCE)CP.1943-5487.0000719
Jebelli, H., Khalili, M.M., Hwang, S., Lee, S., 2018c. A Supervised Learning-Based Construction Workers’ Stress Recognition Using a Wearable Electroencephalography (EEG) Device, in: Construction Research Congress 2018. ASCE, Reston, VA, pp. 40–50. https://doi.org/10.1061/9780784481288.005
Jebelli, H., Khalili, M.M., Lee, S., 2018d. A Continuously Updated, Computationally Efficient Stress Recognition Framework Using Electroencephalogram (EEG) by Applying Online Multi-Task Learning Algorithms (OMTL). IEEE Journal of Biomedical and Health Informatics. https://doi.org/10.1109/JBHI.2018.2870963
Jebelli, H., Khalili, M.M., Lee, S., 2018e. Mobile EEG-based Workers’ Stress Recognition by Applying Deep Neural Network, in: 35th CIB W78 2018 Conference IT in Design, Construction, and Management (CIB W78 2018). Chicago, Illinois.
Jie, X., Cao, R., Li, L., 2014. Emotion recognition based on the sample entropy of EEG. Bio-medical materials and engineering 24, 1185–1192. https://doi.org/10.3233/BME-130919
Joyce, C.A., Gorodnitsky, I.F., Kutas, M., 2004. Automatic removal of eye movement and blink artifacts from EEG data using blind component separation. Psychophysiology 41, 313–325.
Kohavi, R., John, G.H., 1997. Wrappers for feature subset selection. Artificial intelligence 97, 273–324.
Lazarus, R.S., 1995. Psychological stress in the workplace. Occupational stress: A handbook 1, 3–14.
Lee, G., Choi, B., Jebelli, H., Ahn, C.R., Lee, S., 2019. Reference Signal-Based Method to Remove Respiration Noise in Electrodermal Activity (EDA) Collected from the Field, in: Computing in Civil Engineering 2019: Data, Sensing, and Analytics. American Society of Civil Engineers Reston, VA, pp. 17–25.
Lee, W., Lin, K.-Y., Seto, E., Migliaccio, G.C., 2017. Wearable sensors for monitoring on-duty and off-duty worker physiological status and activities in construction. Automation in Construction.
Leung, M.Y., Liang, Q., Olomolaiye, P., 2015. Impact of job stressors and stress on the safety behavior and accidents of construction workers. Journal of Management in Engineering 32, 04015019. https://doi.org/10.1061/(ASCE)ME.1943-5479.0000373
Levine, A., Zagoory-Sharon, O., Feldman, R., Lewis, J.G., Weller, A., 2007. Measuring cortisol in human psychobiological studies. Physiology & behavior 90, 43–53. https://doi.org/10.1016/j.physbeh.2006.08.025
Manoilov, P., 2006. EEG eye-blinking artefacts power spectrum analysis, in: Proceedings of International Conference on Computer Systems and Technologies. University of Veliko Tarnovo, Bulgaria, pp. 15–16.
Masood, K., Ahmed, B., Choi, J., Gutierrez-Osuna, R., 2012. Consistency and validity of self-reporting scores in stress measurement surveys, in: Engineering in Medicine and Biology Society (EMBC), 2012 Annual International Conference of the IEEE. IEEE, pp. 4895–4898.
Repovs, G., 2010. Dealing with noise in EEG recording and data analysis. Informatica Medica Slovenica 15, 18–25.
Shen, K.-Q., Ong, C.-J., Li, X.-P., Hui, Z., Wilder-Smith, E.P., 2007. A feature selection method for multilevel mental fatigue EEG classification. IEEE Transactions on Biomedical Engineering 54, 1231–1237. https://doi.org/10.1109/TBME.2007.890733
Spielberger, C.D., 2010. Job stress survey. Corsini Encyclopedia of Psychology.
Spielberger, C.D., Vagg, P.R., 1994. Job stress survey (JSS). Odessa, FL: Physiological Assessment Resources.
Wang, D., Chen, J., Zhao, D., Dai, F., Zheng, C., Wu, X., 2017. Monitoring workers’ attention and vigilance in construction activities through a wireless and wearable electroencephalography system. Automation in Construction. https://doi.org/10.1016/j.autcon.2017.02.001

Information & Authors

Information

Published In

Go to Construction Research Congress 2020
Construction Research Congress 2020: Safety, Workforce, and Education
Pages: 140 - 148
Editors: Mounir El Asmar, Ph.D., Arizona State University, David Grau, Ph.D., Arizona State University, and Pingbo Tang, Ph.D., Arizona State University
ISBN (Online): 978-0-7844-8287-2

History

Published online: Nov 9, 2020
Published in print: Nov 9, 2020

Permissions

Request permissions for this article.

Authors

Affiliations

Houtan Jebelli [email protected]
Dept. of Architectural Engineering, Pennsylvania State Univ., PA. E-mail: [email protected]
Mahmoud Habibnezhad [email protected]
Dept. of Architectural Engineering, Pennsylvania State Univ., PA. E-mail: [email protected]
Mohammad Mahdi Khalili [email protected]
Dept. of Electrical Engineering and Computer Science, Univ. of Michigan, Ann Arbor, MI. E-mail: [email protected]
Mohammad Sadra Fardhosseini [email protected]
College of Built Environments, Univ. of Washington, Seattle, WA. E-mail: [email protected]
Sanghyun Lee [email protected]
Tishman Construction Management Program, Dept. of Civil and Environmental Engineering, Univ. of Michigan, Ann Arbor, MI. E-mail: [email protected]

Metrics & Citations

Metrics

Citations

Download citation

If you have the appropriate software installed, you can download article citation data to the citation manager of your choice. Simply select your manager software from the list below and click Download.

View Options

Get Access

Access content

Please select your options to get access

Log in/Register Log in via your institution (Shibboleth)
ASCE Members: Please log in to see member pricing

Purchase

Save for later Information on ASCE Library Cards
ASCE Library Cards let you download journal articles, proceedings papers, and available book chapters across the entire ASCE Library platform. ASCE Library Cards remain active for 24 months or until all downloads are used. Note: This content will be debited as one download at time of checkout.

Terms of Use: ASCE Library Cards are for individual, personal use only. Reselling, republishing, or forwarding the materials to libraries or reading rooms is prohibited.
ASCE Library Card (5 downloads)
$105.00
Add to cart
ASCE Library Card (20 downloads)
$280.00
Add to cart
Buy Single Paper
$35.00
Add to cart
Buy E-book
$180.00
Add to cart

Get Access

Access content

Please select your options to get access

Log in/Register Log in via your institution (Shibboleth)
ASCE Members: Please log in to see member pricing

Purchase

Save for later Information on ASCE Library Cards
ASCE Library Cards let you download journal articles, proceedings papers, and available book chapters across the entire ASCE Library platform. ASCE Library Cards remain active for 24 months or until all downloads are used. Note: This content will be debited as one download at time of checkout.

Terms of Use: ASCE Library Cards are for individual, personal use only. Reselling, republishing, or forwarding the materials to libraries or reading rooms is prohibited.
ASCE Library Card (5 downloads)
$105.00
Add to cart
ASCE Library Card (20 downloads)
$280.00
Add to cart
Buy Single Paper
$35.00
Add to cart
Buy E-book
$180.00
Add to cart

Media

Figures

Other

Tables

Share

Share

Copy the content Link

Share with email

Email a colleague

Share