This paper concerns the quantitative evaluation of Stochastic Symmetric Nets (SSN) by means of a fluid approximation technique particularly suited to analyse systems with a huge state space. In particular a new efficient approach is proposed to derive the deterministic process approximating the original stochastic process through a system of Ordinary Differential Equations (ODE). The intrinsic symmetry of SSN models is exploited to significantly reduce the size of the ODE system while a symbolic calculus operating on the SSN arc functions is employed to derive such system efficiently, avoiding the complete unfolding of the SSN model into a Stochastic Petri Net (SPN).

Deriving Symbolic Ordinary Differential Equations from Stochastic Symmetric Nets Without Unfolding / M. Beccuti, L. Capra, M. De Pierro, G. Franceschinis, S. Pernice (LECTURE NOTES IN COMPUTER SCIENCE). - In: Computer Performance Engineering / [a cura di] R. Bakhshi, P. Ballarini, B. Barbot, H. Castel-Taleb, A. Remke. - Prima edizione. - [s.l] : Springer Verlag, 2018. - ISBN 9783030022266. - pp. 30-45 (( Intervento presentato al 15. convegno EPEW tenutosi a Paris nel 2018 [10.1007/978-3-030-02227-3_3].

Deriving Symbolic Ordinary Differential Equations from Stochastic Symmetric Nets Without Unfolding

L. Capra;
2018

Abstract

This paper concerns the quantitative evaluation of Stochastic Symmetric Nets (SSN) by means of a fluid approximation technique particularly suited to analyse systems with a huge state space. In particular a new efficient approach is proposed to derive the deterministic process approximating the original stochastic process through a system of Ordinary Differential Equations (ODE). The intrinsic symmetry of SSN models is exploited to significantly reduce the size of the ODE system while a symbolic calculus operating on the SSN arc functions is employed to derive such system efficiently, avoiding the complete unfolding of the SSN model into a Stochastic Petri Net (SPN).
No
English
Stochastic Symmetric Nets; Ordinary Differential Equations; Symmetries; Symbolic analysis; Symbolic structural techniques
Settore ING-INF/01 - Elettronica
Intervento a convegno
Esperti anonimi
Ricerca di base
Pubblicazione scientifica
Computer Performance Engineering
R. Bakhshi, P. Ballarini, B. Barbot, H. Castel-Taleb, A. Remke
Prima edizione
Springer Verlag
2018
30
45
16
9783030022266
11178
Volume a diffusione internazionale
No
EPEW
Paris
2018
15
Laboratoire d'Algorithmique, Complexité et Logique
telecom sudparis
universite paris est creteil val de marne
Convegno internazionale
Intervento inviato
scopus
crossref
Aderisco
M. Beccuti, L. Capra, M. De Pierro, G. Franceschinis, S. Pernice
Book Part (author)
reserved
273
Deriving Symbolic Ordinary Differential Equations from Stochastic Symmetric Nets Without Unfolding / M. Beccuti, L. Capra, M. De Pierro, G. Franceschinis, S. Pernice (LECTURE NOTES IN COMPUTER SCIENCE). - In: Computer Performance Engineering / [a cura di] R. Bakhshi, P. Ballarini, B. Barbot, H. Castel-Taleb, A. Remke. - Prima edizione. - [s.l] : Springer Verlag, 2018. - ISBN 9783030022266. - pp. 30-45 (( Intervento presentato al 15. convegno EPEW tenutosi a Paris nel 2018 [10.1007/978-3-030-02227-3_3].
info:eu-repo/semantics/bookPart
5
Prodotti della ricerca::03 - Contributo in volume
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/2434/603376
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