Abstract
This paper introduces a formal architecture for onboard
diagnosis, prognosis and recovery called ARPHA.
ARPHA is designed as part of the ESA/ESTEC study
called VERIFIM (Verification of Failure Impact by
Model checking). The goal is to allow the design of an
innovative on-board FDIR (Fault Detection, Identification
and Recovery) process for autonomous systems, able
to deal with uncertain system/environment interactions,
uncertain dynamic system evolution, partial observability
and detection of recovery actions taking into account
imminent failures. We propose to base the inference engine
of ARPHA on Dynamic Decision Network (DDN),
a class of Probabilistic Graphical Models suitable to reason
about system evolution with control actions, over a finite
time horizon. The DDN model needed by ARPHA is
assumed to be derived from standard dependability modeling
exploiting an extension of the Dynamic Fault Tree
language, called EDFT. We finally discuss the software
architecture of ARPHA, where on-board FDIR is implemented.
Lingua originale | Inglese |
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Numero di pagine | 8 |
Stato di pubblicazione | Pubblicato - 1 gen 2011 |
Evento | AI in Space: Intelligence beyond planet Earth / IJCAI 2011 (22nd International Joint Conference on Artificial Intelligence) - Barcelona, Spain Durata: 1 gen 2011 → … |
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???event.eventtypes.event.conference??? | AI in Space: Intelligence beyond planet Earth / IJCAI 2011 (22nd International Joint Conference on Artificial Intelligence) |
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Città | Barcelona, Spain |
Periodo | 1/01/11 → … |
Keywords
- Fault detection identification and recovery
- Probabilistic Graphical Models