Leveraging Transactional Business Data to predict Employee Workload Satisfaction in Operations: An Empirical Study – Part 1

Authors

Valmir Bekiri
OST - Ostschweizer Fachhochschule image/svg+xml
https://orcid.org/0009-0009-2820-8536
Stefan Stöckler
OST - Ostschweizer Fachhochschule image/svg+xml
Katrin Oettmeier
University of Liechtenstein image/svg+xml

Synopsis

We examine whether transactional Enterprise Resource Planning (ERP) data can predict employee-perceived workload satisfaction in a metal-processing facility. Drawing on 127 working days of daily employee surveys across four logistics gates, we link each day's responses to operational records from four SAP tables: (COOIS) production confirmations, (LT060) external transport orders, (LT061) internal transport orders, and (MB51) material movements. Two gates register mean stress scores five to six times higher than a third. Internal transport activity correlates negatively with perceived problems at two gates, suggesting a buffering effect; at others, material volume rather than transport frequency seems to drive stress. Mid-week workload is consistently elevated. Our results confirm that ERP metrics can explain a bounded but meaningful portion of subjective workload variance, and that workplace-/ gate-level modeling substantially outperforms generalized approaches. These findings offer actionable insights for operations managers seeking to proactively monitor workplace social sustainability through data already available in existing information systems.

Author Biographies

Valmir Bekiri, OST - Ostschweizer Fachhochschule

St. Gallen, Switzerland. E-mail: valmir.bekiri@ost.ch

Stefan Stöckler, OST - Ostschweizer Fachhochschule

St. Gallen, Switzerland. E-mail: stefan.stoeckler@ost.ch 

Katrin Oettmeier, University of Liechtenstein

Vaduz, Liechtenstein. E-mail: katrin.oettmeier@uni.li

Published

June 5, 2026

License

Creative Commons License

This work is licensed under a Creative Commons Attribution 4.0 International License.

How to Cite

Bekiri, V., Stöckler, S., & Oettmeier, K. (2026). Leveraging Transactional Business Data to predict Employee Workload Satisfaction in Operations: An Empirical Study – Part 1. In D. Vidmar, A. Pucihar, M. Kljajić Borštnar, R. W. H. Bons, M. Glowatz, & H.-D. Zimmermann (Eds.), & (Ed.), 39th Bled eConference: Co-Creating Human-Centred and Responsible Digital Futures; Conference Proceedings (Vols. 39., pp. 109-122). University of Maribor Press. https://doi.org/10.18690/um.fov.4.2026.7