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  • Faculty of Science and Technology / Fakulteten för naturvetenskap och teknik
  • Department of Computer Science and Engineering / Institutionen för data- och informationsteknik
  • Articles, chapters, papers, reports Department of Computer Science and Engineering
  • Redigera dokument
  •   Startsida
  • Faculty of Science and Technology / Fakulteten för naturvetenskap och teknik
  • Department of Computer Science and Engineering / Institutionen för data- och informationsteknik
  • Articles, chapters, papers, reports Department of Computer Science and Engineering
  • Redigera dokument
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Compositional Verification of Stigmergic Collective System

Sammanfattning
Collective adaptive systems may be broadly defined as en sembles of autonomous agents, whose interaction may lead to the emer gence of global features and patterns. Formal verification may provide strong guarantees about the emergence of these features, but may suffer from scalability issues caused by state space explosion. Compositional verification techniques, whereby the state space of a system is generated by combining (an abstraction of) those of its components, have shown to be a promising countermeasure to the state space explosion problem. Therefore, in this work we apply these techniques to the problem of verifying collective adaptive systems with stigmergic interaction. Specif ically, we automatically encode these systems into networks of LNT pro cesses, apply a static value analysis to prune the state space of individual agents, and then reuse compositional verification procedures provided by the CADP toolbox. We demonstrate the effectiveness of our approach by verifying a collection of representative systems.
URL:
https://hdl.handle.net/2077/81551
Samlingar
  • Articles, chapters, papers, reports Department of Computer Science and Engineering
Fil(er)
vmcai2023.pdf (562.4Kb)
Datum
2023
Författare
Di Stefano, Luca
Lang, Frédéric
Publikationstyp
article, peer reviewed scientific
Språk
eng
Metadata
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