Biblio
Autonomous driving is getting more common and easily accessible with rapid improvements in technology. Prospective buyers of autonomous vehicles need to adapt to this technology equally rapidly to feel comfortable in them. However, this is not always the case, since taking away control from the user often correlates with loss of comfort. Detecting uncomfortable and stressful situations while driving could improve driving quality and overall acceptance of autonomous vehicles through adaption of driving style, interface and other methods. In this paper, we test a range of methods, which measure the discomfort of a user of an autonomous vehicle in real-time. We propose a portable set of sensors that measure heart rate, skin conductance, sitting position, g-forces and subjective discomfort. Preliminary results will be examined and next steps will be discussed.
We performed a driving simulator study to investigate merging decisions with respect to an interaction partner in time-critical situations. The experimental paradigm was a two-alternative forced choice, where the subjects could choose to merge before human vehicles or highly automated vehicles (HAV). Under time pressure, subjects showed a significantly higher gap acceptance during merging situations when interacting with HAV. This confirmed our original hypothesis that when interacting with HAV, drivers would exploit the HAV's technological advantages and defensive programming in time-critical situations.
Causal Models are increasingly suggested as a mean to reason about the behavior of cyber-physical systems in socio-technical contexts. They allow us to analyze courses of events and reason about possible alternatives. Until now, however, such reasoning is confined to the technical domain and limited to single systems or at most groups of systems. The humans that are an integral part of any such socio-technical system are usually ignored or dealt with by “expert judgment”. We show how a technical causal model can be extended with models of human behavior to cover the complexity and interplay between humans and technical systems. This integrated socio-technical causal model can then be used to reason not only about actions and decisions taken by the machine, but also about those taken by humans interacting with the system. In this paper we demonstrate the feasibility of merging causal models about machines with causal models about humans and illustrate the usefulness of this approach with a highly automated vehicle example.
In the future, mixed traffic Highly Automated Vehicles (HAV) will have to resolve interactions with human operated traffic. A particular problem for HAVs is the detection of human states influencing safety, critical decisions, and driving behavior of humans. We demonstrate the value proposition of neurophysiological sensors and driver models for optimizing performance of HAVs under safety constraints in mixed traffic applications.