Abstract
AbstractPotential benefits of technology such as automation are oftentimes negated by improper use and application. Adaptive systems provide a means to calibrate the use of technological aids to the operator’s state, such as workload state, which can change throughout the course of a task. Such systems require a workload model which detects workload and specifies the level at which aid should be rendered. Workload models that use psychophysiological measures have the advantage of detecting workload continuously and relatively unobtrusively, although the inter-individual variability in psychophysiological responses to workload is a major challenge for many models. This study describes an approach to workload modeling with multiple psychophysiological measures that was generalizable across individuals, and yet accommodated inter-individual variability. Under this approach, several novel algorithms were formulated. Each of these underwent a process of evaluation which included comparisons of the algorithm’s performance to an at-chance level, and assessment of algorithm robustness. Further evaluations involved the sensitivity of the shortlisted algorithms at various threshold values for triggering an adaptive aid.
Publisher
Springer Science and Business Media LLC
Subject
Applied Mathematics,General Mathematics
Reference59 articles.
1. Abich J IV, Reinerman-Jones L, Taylor GS (2013) Investigating workload measures for adaptive training systems. In: Proceedings of the human factors and ergonomics society annual meeting. SAGE Publications Sage CA, Los Angeles, CA, pp 2091–2095
2. Ang DSC, Lang CC (2008) The prognostic value of the ECG in hypertension: where are we now? J Hum Hypertens 22:460–467
3. Backs RW, Walrathf LC (1992) Eye movement and pupillary response indices of mental workload during visual. Appl Ergon 23:243–254
4. Bailey NR, Scerbo MW, Freeman FG, Mikulka PJ, Scott LA (2006) Comparison of a brain-based adaptive system and a manual adaptable system for invoking automation. Hum Factors 48:693–709
5. Baldwin CL, Penaranda BN (2012) Adaptive training using an artificial neural network and EEG metrics for within- and cross-task workload classification. NeuroImage 59:48–56. https://doi.org/10.1016/j.neuroimage.2011.07.047
Cited by
12 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献