4.6 Article

Preventing mind-wandering during driving: Predictions on potential interventions using a cognitive model

Journal

Publisher

ACADEMIC PRESS LTD- ELSEVIER SCIENCE LTD
DOI: 10.1016/j.ijhcs.2023.103164

Keywords

Cognitive model; Adaptive automation; Human-computer-interaction; Mind-wandering

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In this study, the effects of interventions by adaptive automation systems designed to prevent mind-wandering while driving were predicted. It was found that a simple secondary task can improve driving performance, but if the driving task is simple, people may start mind-wandering, which interferes with driving. The study showed that interventions eliciting mild cognitive load can mitigate the negative effects of mind-wandering on driving performance.
In this study, we made predictions on the effects of different interventions by adaptive automation systems designed to prevent mind-wandering while driving. Although cognitive load associated with secondary tasks tends to affect driving negatively, a simple secondary task can improve driving performance when the driving scenario is mundane. Nijboer and colleagues (2016) have hypothesized that if the driving task is simple, people might start mind-wandering, which interferes with driving. Furthermore, the authors proposed that a simple secondary task, which imposes less workload than mind-wandering, could prevent this from happening and thereby improve driving performance. Automation systems that are informed about and adapt to the cognitive state of the driver could leverage this effect by inducing mild cognitive load during mundane driving scenarios. To test suitable interventions, we combined an existing driver model with an existing model of mind-wandering implemented in the cognitive architecture ACT-R as executable theories of mind-wandering and cognitive processing in driving. Using these different models we show how mind-wandering harms driving performance at the behavioral level and that interventions eliciting mild cognitive load can mitigate this behavioral effect. However, the model indicates that some interventions incur a significant cognitive processing cost that adaptive automation systems must account for.

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