Author:
Demazure Théophile,Karran Alexander,Léger Pierre-Majorique,Labonté-LeMoyne Élise,Sénécal Sylvain,Fredette Marc,Babin Gilbert
Abstract
AbstractArguably, automation is fast transforming many enterprise business processes, transforming operational jobs into monitoring tasks. Consequently, the ability to sustain attention during extended periods of monitoring is becoming a critical skill. This manuscript presents a Brain-Computer Interface (BCI) prototype which seeks to combat decrements in sustained attention during monitoring tasks within an enterprise system. A brain-computer interface is a system which uses physiological signals output by the user as an input. The goal is to better understand human responses while performing tasks involving decision and monitoring cycles, finding ways to improve performance and decrease on-task error. Decision readiness and the ability to synthesize complex and abundant information in a brief period during critical events has never been more important. Closed-loop control and motivational control theory were synthesized to provide the basis from which a framework for a prototype was developed to demonstrate the feasibility and value of a BCI in critical enterprise activities. In this pilot study, the BCI was implemented and evaluated through laboratory experimentation using an ecologically valid task. The results show that the technological artifact allowed users to regulate sustained attention positively while performing the task. Levels of sustained attention were shown to be higher in the conditions assisted by the BCI. Furthermore, this increased cognitive response seems to be related to increased on-task action and a small reduction in on-task errors. The research concludes with a discussion of the future research directions and their application in the enterprise.
Publisher
Springer Science and Business Media LLC
Reference83 articles.
1. Adam MT, Gimpel H, Maedche A, Riedl R (2017) Design blueprint for stress-sensitive adaptive enterprise systems. Bus Inf Syst Eng 59(4):277–291
2. Andujar M, Gilbert JE (2013) Let's learn! enhancing user's engagement levels through passive brain-computer interfaces. In: CHI'13 extended abstracts on human factors in computing systems, pp 703–708
3. Astor PJ, Adam MTP, Jerčić P, Schaaff K, Weinhardt C (2013) Integrating biosignals into information systems: a neurois tool for improving emotion regulation. J Manag Inf Syst 30(3):247–278
4. Autor DH (2015) Why are there still so many jobs? the history and future of workplace automation. J Econ Perspect 29(3):3–30
5. Barachant A, Andreev A, Congedo M (2013) The Riemannian Potato: an automatic and adaptive artifact detection method for online experiments using Riemannian geometry. In: TOBI Workshop lV, pp 19–20
Cited by
9 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