arXiv Analytics

Sign in

arXiv:0910.2187 [math.OC]AbstractReferencesReviewsResources

Computing abstractions of nonlinear systems

Gunther Reißig

Published 2009-10-12, updated 2011-02-15Version 3

Sufficiently accurate finite state models, also called symbolic models or discrete abstractions, allow one to apply fully automated methods, originally developed for purely discrete systems, to formally reason about continuous and hybrid systems, and to design finite state controllers that provably enforce predefined specifications. We present a novel algorithm to compute such finite state models for nonlinear discrete-time and sampled systems which depends on quantizing the state space using polyhedral cells, embedding these cells into suitable supersets whose attainable sets are convex, and over-approximating attainable sets by intersections of supporting half-spaces. We prove a novel recursive description of these half-spaces and propose an iterative procedure to compute them efficiently. We also provide new sufficient conditions for the convexity of attainable sets which imply the existence of the aforementioned embeddings of quantizer cells. Our method yields highly accurate abstractions and applies to nonlinear systems under mild assumptions, which reduce to sufficient smoothness in the case of sampled systems. Its practicability in the design of discrete controllers for nonlinear continuous plants under state and control constraints is demonstrated by an example.

Comments: This work has been accepted for publication in the IEEE Trans. Automatic Control. v3: minor modifications; accepted version
Journal: IEEE Trans. Automat. Control 56, no 11, Nov 2011, pp. 2583-2598
Categories: math.OC, cs.SY, math.DS
Subjects: 93C10, 93C55, 93C57, 93C15, 93B03
Related articles: Most relevant | Search more
arXiv:math/0501351 [math.OC] (Published 2005-01-21)
Remote Tracking via Encoded Information for Nonlinear Systems
arXiv:1311.4989 [math.OC] (Published 2013-11-20, updated 2014-06-23)
Classical and strong convexity of sublevel sets and application to attainable sets of nonlinear systems
arXiv:0810.0806 [math.OC] (Published 2008-10-05)
Robust Stabilization of Nonlinear Systems by Quantized and Ternary Control