A self-adaptation framework based on functional knowledge for augmented autonomy in robots

Journal Article (2018)
Author(s)

Carlos Hernandez Hernández (TU Delft - Robot Dynamics)

Julita Bermejo-Alonso (Universidad Politécnica de Madrid)

Ricardo Sanz (Universidad Politécnica de Madrid)

Research Group
Robot Dynamics
Copyright
© 2018 Carlos Hernández, Julita Bermejo-Alonso, Ricardo Sanz
DOI related publication
https://doi.org/10.3233/ICA-180565
More Info
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Publication Year
2018
Language
English
Copyright
© 2018 Carlos Hernández, Julita Bermejo-Alonso, Ricardo Sanz
Research Group
Robot Dynamics
Issue number
2
Volume number
25
Pages (from-to)
157-172
Reuse Rights

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Abstract

Robot control software endows robots with advanced capabilities for autonomous operation, such as navigation, object recognition or manipulation, in unstructured and dynamic environments. However, there is a steady need for more robust operation, where robots should perform complex tasks by reliably exploiting these novel capabilities. Mission-level resilience is required in the presence of component faults through failure recovery.To address this challenge, a novel self-adaptation framework based on functional knowledge for augmented autonomy is presented. A metacontroller is integrated on top of the robot control system,and it uses an explicit run-time model of the robot’s controller and its mission to adapt to operational changes. The model is grounded on a functional ontology that relates the robot’s mission with the robot’s architecture, and it is generated during the robot’s development from its engineering models. Advantages are discussed from both theoretical and practical viewpoints. An application example in a real autonomous mobile robot is provided. In this example, the generic metacontroller uses the robot’s functional model to adapt the control architecture to recover from a sensor failure.

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