• English
  • Deutsch
  • Log In
    Password Login
    Research Outputs
    Fundings & Projects
    Researchers
    Institutes
    Statistics
Repository logo
Fraunhofer-Gesellschaft
  1. Home
  2. Fraunhofer-Gesellschaft
  3. Konferenzschrift
  4. Architectural Patterns for Handling Runtime Uncertainty of Data-Driven Models in Safety-Critical Perception
 
  • Details
  • Full
Options
2022
Conference Paper
Title

Architectural Patterns for Handling Runtime Uncertainty of Data-Driven Models in Safety-Critical Perception

Abstract
Data-driven models (DDM) based on machine learning and other AI techniques play an important role in the perception of increasingly autonomous systems. Due to the merely implicit definition of their behavior mainly based on the data used for training, DDM outputs are subject to uncertainty. This poses a challenge with respect to the realization of safety-critical perception tasks by means of DDMs. A promising approach to tackling this challenge is to estimate the uncertainty in the current situation during operation and adapt the system behavior accordingly. In previous work, we focused on runtime estimation of uncertainty and discussed approaches for handling uncertainty estimations. In this paper, we present additional architectural patterns for handling uncertainty. Furthermore, we evaluate the four patterns qualitatively and quantitatively with respect to safety and performance gains. For the quantitative evaluation, we consider a distance controller for vehicle platooning where performance gains are measured by considering how much the distance can be reduced in different operational situations. We conclude that the consideration of context information concerning the driving situation makes it possible to accept more or less uncertainty depending on the inherent risk of the situation, which results in performance gains.
Author(s)
Groß, Janek  
Fraunhofer-Institut für Experimentelles Software Engineering IESE  
Adler, Rasmus  
Fraunhofer-Institut für Experimentelles Software Engineering IESE  
Kläs, Michael  
Fraunhofer-Institut für Experimentelles Software Engineering IESE  
Reich, Jan  
Fraunhofer-Institut für Experimentelles Software Engineering IESE  
Jöckel, Lisa  
Fraunhofer-Institut für Experimentelles Software Engineering IESE  
Gansch, Roman
Mainwork
Computer Safety, Reliability, and Security. 41st International Conference, SAFECOMP 2022. Proceedings  
Conference
International Conference on Computer Safety, Reliability and Security 2022  
DOI
10.1007/978-3-031-14835-4_19
Language
English
Fraunhofer-Institut für Experimentelles Software Engineering IESE  
Keyword(s)
  • Architectural patterns

  • Autonomous systems

  • Machine learning

  • Safety

  • Uncertainty quantification

  • Cookie settings
  • Imprint
  • Privacy policy
  • Api
  • Contact
© 2024