Pattern analysis of physiological data for the assessment of mental workload

Author:

Bläsing Dominic

Abstract

AbstractMeasuring mental workload at the workplace using (psycho-) physiological measurement techniques seems desirable but is difficult to implement. Conventional analysis techniques are designed to cover longer measurement durations, neglecting the demands of modern work places: high worker flexibility and constantly fluctuating mental workload. As an alternative analysis approach, measurement (resp. analysis) duration can be shortened and event-based pattern analysis of various physiological parameters can be performed. The effects of such approaches are demonstrated by experimental examples. Furthermore, an event-timestamp independent framework is presented. Focusing on occasionally occurring peaks and longer lasting plateaus in mental workload trajectories, an automatized analysis of workload during work processes becomes possible.Practical relevance: With steadily increasing cognitive demands at work the risk of mental fatigue increases too. Mental workload is not directly observable at the workplace and the objective measurement and interpretation is complicated. Improving the overall assessment and analysis strategies for (physiological) mental workload indicators can benefit the quality of risk assessments of workplaces and processes as well as enable the possibility of demand-orientated control of (informational) assistance systems to prevent mental overload and resulting health constraints.

Funder

Universitätsmedizin Greifswald

Publisher

Springer Science and Business Media LLC

Reference44 articles.

1. Backs RW, Boucsein W (2000) Engineering psychophysiology: issues and applications. Lawrence Erlbaum, Mahwah

2. Backs RW, Ryan AM, Wilson GF (1994) Psychophysiological measures of workload during continuous manual performance. Hum Factors 36:514–531

3. Baddeley A (2003) Working memory: looking back and looking forward. Nat Rev Neurosci 4:829–839

4. Barua S, Begum S, Ahmed MU (2015) Supervised machine learning algorithms to diagnose stress for vehicle drivers based on physiological sensor signals. Stud Health Technol Inform 211:241–248

5. Barua S, Ahmed MU, Begum S (2020) Towards intelligent data analytics: a case study in driver cognitive load classification. Brain Sci 10:19

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