Biblio

Filters: Author is Jochem Rieger  [Clear All Filters]
2021-08-12
Anirudh Unni, Jochem Rieger.  2021.  Characterizing and modeling human states in human-CPS interactions at the brain-level.
presented at workshop ‘Safety Critical Human-Cyber-Physical Systems’, Oct 29, 2020
2021-08-13
Rimo Arndt, Anirudh Unni, Jochem Rieger.  2021.  Investigating Effects of a n-back Task on Decision-Making using Eye-Tracking in a Driving Simulator.
‘Investigating Effects of a n-back Task on Decision-Making using Eye-Tracking in a Driving Simulator’ at TeaP – Tagung Experimentell Arbeitender Psychologen, Mar 15, 2021
Moritz Held, Jelmer Borst, Anirudh Unni, Jochem Rieger.  2021.  Utilizing ACT-R to investigate interactions between working memory and visuospatial attention while driving.
(POSTER PRESENTATION) Utilizing ACT-R to investigate interactions between working memory and visuospatial attention while driving at 2021 ICCM - International Conference on Cognitive Modeling, July 08, 2021
Moritz Held, Jelmer Borst, Anirudh Unni, Jochem Rieger.  2021.  Utilizing ACT-R to investigate interactions between working memory and visuospatial attention while driving. Proceedings of the Annual Meeting of the Cognitive Science Society. 43(1)
In an effort towards predicting mental workload while driving, previous research found interactions between working memory load and visuospatial demands, which complicates the accurate prediction of momentary mental workload. To investigate this interaction, the cognitive concepts working memory load and visuospatial attention were integrated into a cognitive driving model using the cognitive architecture ACT-R. The model was developed to safely drive on a multi-lane highway with ongoing traffic while performing a secondary n-back task using speed signs. To manipulate visuospatial demands, the model must drive through a construction site with reduced lane-width in certain blocks of the experiment. Furthermore, it is able to handle complex driving situations such as overtaking traffic while adjusting the speed according to the n-back task. The behavioral results show a negative effect on driving performance with increasing task difficulty of the secondary task. Additionally, the model indicates an interaction at a common, task-unspecific level.
2021-08-12
Klaus Bengler, Bianca Biebl, Werner Damm, Martin Fränzle, Willem Hagemann, Moritz Held, Klas Ihme, Severin Kacianka, Sebastian Lehnhoff, Andreas Luedtke et al..  2021.  A Metamodel of Human Cyber Physical Systems. Working Document of the PIRE Project on Assuring Individual, Social, and Cultural Embeddedness of Autonomous Cyber-Physical Systems (ISCE-ACPS). :41.
2021-08-11
Alexander Trende, Anirudh Unni, Jochem Rieger, Martin Fraenzle.  2021.  Modelling Turning Intention in Unsignalized Intersections with Bayesian Networks. International Conference on Human-Computer Interaction. :289-296.
Turning through oncoming traffic at unsignalized intersections can lead to safety-critical situations contributing to 7.4% of all non-severe vehicle crashes. One of the main reasons for these crashes are human errors in the form of incorrect estimation of the gap size with respect to the Principle Other Vehicle (POV). Vehicle-to-vehicle (V2V) technology promises to increase safety in various traffic situations. V2V infrastructure combined with further integration of sensor technology and human intention prediction could help reduce the frequency of these safety-critical situations by predicting dangerous turning manoeuvres in advance, thus, allowing the POV to prepare an appropriate reaction. We performed a driving simulator study to investigate turning decisions at unsignalized intersections. Over the course of the experiments, we recorded over 5000 turning decisions with respect to different gap sizes. Afterwards, the participants filled out a questionnaire featuring demographic and driving style related items. The behavioural and questionnaire data was then used to fit a Bayesian Network model to predict the turning intention of the subject vehicle. We evaluate the model and present the results of a feature importance analysis. The model is able to correctly predict the turning intention with an accuracy of 74%. Furthermore, the feature importance analysis indicates that user specific information is a valuable contribution to the model. We discuss how a working turning intension prediction could reduce the number of safety-critical situations.
2019-09-27
Janos Sztipanovits, Xenofon Koutsoukos, Gabor Karsai, Shankar Sastry, Claire Tomlin, Werner Damm, Martin Fränzle, Jochem Rieger, Alexander Pretschner, Frank Köster.  2019.  Science of design for societal-scale cyber-physical systems: challenges and opportunities. Cyber-Physical Systems. 5:145-172.

Emerging industrial platforms such as the Internet of Things (IoT), Industrial Internet (II) in the US and Industrie 4.0 in Europe have tremendously accelerated the development of new generations of Cyber-Physical Systems (CPS) that integrate humans and human organizations (H-CPS) with physical and computation processes and extend to societal-scale systems such as traffic networks, electric grids, or networks of autonomous systems where control is dynamically shifted between humans and machines. Although such societal-scale CPS can potentially affect many aspect of our lives, significant societal strains have emerged about the new technology trends and their impact on how we live. Emerging tensions extend to regulations, certification, insurance, and other societal constructs that are necessary for the widespread adoption of new technologies. If these systems evolve independently in different parts of the world, they will ‘hard-wire’ the social context in which they are created, making interoperation hard or impossible, decreasing reusability, and narrowing markets for products and services. While impacts of new technology trends on social policies have received attention, the other side of the coin – to make systems adaptable to social policies – is nearly absent from engineering and computer science design practice. This paper focuses on technologies that can be adapted to varying public policies and presents (1) hard problems and technical challenges and (2) some recent research approaches and opportunities. The central goal of this paper is to discuss the challenges and opportunities for constructing H-CPS that can be parameterized by social context. The focus in on three major application domains: connected vehicles, transactive energy systems, and unmanned aerial vehicles.Abbreviations: CPS: Cyber-physical systems; H-CPS: Human-cyber-physical systems; CV: Connected vehicle; II: Industrial Internet; IoT: Internet of Things

2019-08-21
Alexander Trende, Anirudh Unni, Lars Weber, Jochem Rieger, Andreas Lüdtke.  2019.  An investigation into human-autonomous vs. human-human vehicle interaction in time-critical situations. 12th Pervasive Technologies Related to Assistive Environments Conference. :303-304.

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.
 

Janos Sztipanovits, Xenofon Koutsoukos, Gabor Karsai, Shankar Sastry, Claire Tomlin, Werner Damm, Martin Frönzle, Jochem Rieger, Alexander Pretschner, Frank Köster.  2019.  Science of design for societal-scale cyber-physical systems: challenges and opportunities. Cyber-Physical Systems. 5:145-172.

Emerging industrial platforms such as the Internet of Things (IoT), Industrial Internet (II) in the US and Industrie 4.0 in Europe have tremendously accelerated the development of new generations of Cyber-Physical Systems (CPS) that integrate humans and human organizations (H-CPS) with physical and computation processes and extend to societal-scale systems such as traffic networks, electric grids, or networks of autonomous systems where control is dynamically shifted between humans and machines. Although such societal-scale CPS can potentially affect many aspect of our lives, significant societal strains have emerged about the new technology trends and their impact on how we live. Emerging tensions extend to regulations, certification, insurance, and other societal constructs that are necessary for the widespread adoption of new technologies. If these systems evolve independently in different parts of the world, they will ‘hard-wire’ the social context in which they are created, making interoperation hard or impossible, decreasing reusability, and narrowing markets for products and services. While impacts of new technology trends on social policies have received attention, the other side of the coin – to make systems adaptable to social policies – is nearly absent from engineering and computer science design practice. This paper focuses on technologies that can be adapted to varying public policies and presents (1) hard problems and technical challenges and (2) some recent research approaches and opportunities. The central goal of this paper is to discuss the challenges and opportunities for constructing H-CPS that can be parameterized by social context. The focus in on three major application domains: connected vehicles, transactive energy systems, and unmanned aerial vehicles.Abbreviations: CPS: Cyber-physical systems; H-CPS: Human-cyber-physical systems; CV: Connected vehicle; II: Industrial Internet; IoT: Internet of Things