A unified modelling and operational framework for fault detection, identification, and recovery in autonomous spacecrafts

Andrea Bobbio, Daniele Codetta-Raiteri, Luigi Portinale, Andrea Guiotto, Yuri Yushtein

Risultato della ricerca: Capitolo in libro/report/atti di convegnoContributo in volume (Capitolo o Saggio)peer review

Abstract

Recent studies have focused on spacecraft autonomy. The traditional approach for FDIR (Fault Detection, Identification, Recovery) consists of the Run-Time observation of the operational status to detect faults; the initiation of recovery actions uses static Pre-Compiled tables. This approach is purely reactive, puts the spacecraft into a safe configuration, and transfers control to the ground. ARPHA is an FDIR engine based on probabilistic models. ARPHA integrates a High-Level, a Low-Level, and an Inference-Oriented formalism (DFT, DBN, JT, respectively). The Off-Board process of ARPHA consists of the DFT construction by reliability engineers, the automatic transformation into DBN, the manual enrichment of the DBN, and the JT automatic generation. The JT is the On-Board model undergoing analysis conditioned by sensor and plan data. The goal is the current and future state evaluation and the choice of the most suitable recovery policies according to their future effects without the assistance of the ground control.

Lingua originaleInglese
Titolo della pubblicazione ospiteTheory and Application of Multi-Formalism Modeling
EditoreIGI GLOBAL
Pagine239-258
Numero di pagine20
ISBN (elettronico)9781466646605
ISBN (stampa)1466646594, 9781466646599
DOI
Stato di pubblicazionePubblicato - 31 ott 2013

Fingerprint

Entra nei temi di ricerca di 'A unified modelling and operational framework for fault detection, identification, and recovery in autonomous spacecrafts'. Insieme formano una fingerprint unica.

Cita questo