A Modeling Framework for Schedulability Analysis of Distributed Avionics Systems
March 27, 2018 Β· Declared Dead Β· π MARS/VPT
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Authors
Pujie Han, Zhengjun Zhai, Brian Nielsen, Ulrik Nyman
arXiv ID
1803.11050
Category
cs.SE: Software Engineering
Cross-listed
cs.DC
Citations
8
Venue
MARS/VPT
Last Checked
4 months ago
Abstract
This paper presents a modeling framework for schedulability analysis of distributed integrated modular avionics (DIMA) systems that consist of spatially distributed ARINC-653 modules connected by a unified AFDX network. We model a DIMA system as a set of stopwatch automata (SWA) in UPPAAL to analyze its schedulability by classical model checking (MC) and statistical model checking (SMC). The framework has been designed to enable three types of analysis: global SMC, global MC, and compositional MC. This allows an effective methodology including (1) quick schedulability falsification using global SMC analysis, (2) direct schedulability proofs using global MC analysis in simple cases, and (3) strict schedulability proofs using compositional MC analysis for larger state space. The framework is applied to the analysis of a concrete DIMA system.
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