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A computationally inexpensive algorithm for determining outer and inner enclosures of nonlinear mappings of ellipsoidal domains

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Warianty tytułu
Języki publikacji
EN
Abstrakty
EN
A wide variety of approaches for set-valued simulation, parameter identification, state estimation as well as reachability, observability and stability analysis for nonlinear discrete-time systems involve the propagation of ellipsoids via nonlinear functions. It is well known that the corresponding image sets usually possess a complex shape and may even be nonconvex despite the convexity of the input data. For that reason, domain splitting procedures are often employed which help to reduce the phenomenon of overestimation that can be traced back to the well-known dependency and wrapping effects of interval analysis. In this paper, we propose a simple, yet efficient scheme for simultaneously determining outer and inner ellipsoidal range enclosures of the solution for the evaluation of multi-dimensional functions if the input domains are themselves described by ellipsoids. The Hausdorff distance between the computed enclosure and the exact solution set reduces at least linearly when decreasing the size of the input domains. In addition to algebraic function evaluations, the proposed technique is-for the first time, to our knowledge-employed for quantifying worst-case errors when extended Kalman filter-like, linearization-based techniques are used for forecasting confidence ellipsoids in a stochastic setting.
Rocznik
Strony
399--415
Opis fizyczny
Bibliogr. 51 poz., rys., tab., wykr.
Twórcy
autor
  • Lab-STICC, ENSTA Bretagne, 2 rue François Verny, 29806 Brest, France
autor
  • Lab-STICC, ENSTA Bretagne, 2 rue François Verny, 29806 Brest, France
Bibliografia
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  • [37] Rauh, A., Bourgois, A. and Jaulin, L. (2021a). Ellipsoidal enclosure techniques for a verified simulation of initial value problems for ordinary differential equations, 5th International Conference on Control, Automation and Diagnosis (ICCAD’21), Grenoble, France, (accepted for publication).
  • [38] Rauh, A., Bourgois, A. and Jaulin, L. (2021b). Union and intersection operators for thick ellipsoid state enclosures: Application to bounded-error discrete-time state observer design, Algorithms 14(3): 88.
  • [39] Rauh, A., Briechle, K. and Hanebeck, U.D. (2009). Nonlinear measurement update and prediction: Prior density splitting mixture estimator, IEEE International Conference on Control Applications CCA 2009, St. Petersburg, Russia, pp. 1421–1426.
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  • [41] Rauh, A. and Jaulin, L. (2021). A novel thick ellipsoid approach for verified outer and inner state enclosures of discrete-time dynamic systems, 19th IFAC Symposium on System Identification: Learning Models for Decision and Control, online.
  • [42] Rauh, A., Kletting, M., Aschemann, H. and Hofer, E.P. (2007). Reduction of overestimation in interval arithmetic simulation of biological wastewater treatment processes, Journal of Computational and Applied Mathematics 199(2): 207–212.
  • [43] Rauh, A., Weitschat, R. and Aschemann, H. (2010). Modellgestützter Beobachterentwurf zur Betriebszustands- und Alterungserkennung für Lithium-Ionen-Batterien, VDI-Berichte 2105: Innovative Fahrzeugantriebe 2010 Die Vielfalt der Mobilität: Vom Verbrenner bis zum E-Motor: 7. VDI-Tagung Innovative Fahrzeugantriebe, Dresden, Germany, pp. 377–382.
  • [44] Reuter, J., Mank, E., Aschemann, H. and Rauh, A. (2016). Battery state observation and condition monitoring using online minimization, 21st Internatioanl Conference on Methods and Models in Automation and Robotics, Miedzyzdroje, Poland, pp. 1223–1228.
  • [45] Romig, S., Jaulin, L. and Rauh, A. (2019). Using interval analysis to compute the invariant set of a nonlinear closed-loop control system, Algorithms 12(12): 262.
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  • [48] Tóth, B. and Csendes, T. (2005). Empirical investigation of the convergence speed of inclusion functions in a global optimization context, Reliable Computing 11: 253–273.
  • [49] Villanueva, M., Houska, B. and Chachuat, B. (2015). Unified framework for the propagation of continuous-time enclosures for parametric nonlinear ODEs, Journal of Global Optimization 62(3): 575–613.
  • [50] Wang, B., Shi, W. and Miao, Z. (2015). Confidence analysis of standard deviational ellipse and its extension into higher dimensional Euclidean space, PLOS ONE 10(3): 1–17.
  • [51] Yildirim, E.A. (2006). On the minimum volume covering ellipsoid of ellipsoids, SIAM Journal on Optimization 17(3): 621–641.
Uwagi
Opracowanie rekordu ze środków MNiSW, umowa Nr 461252 w ramach programu "Społeczna odpowiedzialność nauki" - moduł: Popularyzacja nauki i promocja sportu (2021).
Typ dokumentu
Bibliografia
Identyfikator YADDA
bwmeta1.element.baztech-22d7a790-abe9-4244-9a52-d49c0a6c54f7
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