• DocumentCode
    2278749
  • Title

    An Identification Technique for Linear Systems: Application on a Hydraulic Testbed

  • Author

    Contreras, B.M.G. ; Pulido, L.F. ; Lumbreras, M.A.M. ; Contreras, I.H. ; Aguilar, M.A.C.

  • Author_Institution
    Fac. de Cienc. Basicas, Ing. y Tecnol., Univ. Autonoma de Tlaxcala (UAT), Tlaxcala, Mexico
  • fYear
    2012
  • fDate
    19-23 Nov. 2012
  • Firstpage
    237
  • Lastpage
    242
  • Abstract
    Practitioner engineers in both academic and industrial areas, are often faced with the challenge of identifying the model of a given system or process in order to setup a controller or to extract some useful information. Among the existing identification algorithms, those being numerically simple and stable are more attractive for practitioners. This paper deals with identification of state-space models, i.e., the state space matrices A, B, C and D for multivariable dynamic systems directly from test data (data-driven). In order to guarantee numerical reliability and modest computational complexity compared with other identification techniques, in this paper, we propose a synergistic identification technique based on the principal components analysis (PCA) and subspace identification method (SIM) under white noise assumptions. The proposed technique identifies the parity space - PS (or null space) from input/output data, and from there, the matrices related to the system through the extended observability matrix and a block triangular Toeplitz matrix. In order to show its capability, the proposed identification technique is applied to an academic test bed that is related to a hydraulic process.
  • Keywords
    Toeplitz matrices; computational complexity; hydraulic systems; identification; linear systems; multivariable control systems; observability; principal component analysis; state-space methods; PCA; SIM; academic areas; block triangular Toeplitz matrix; computational complexity; extended observability matrix; hydraulic process; hydraulic testbed; identification algorithms; identification techniques; industrial areas; input-output data; linear system identification technique; multivariable dynamic systems; noise assumptions; null space; numerical reliability; parity space; practitioner engineers; principal components analysis; state space matrices; state-space model identification; subspace identification method; synergistic identification technique; test data; Linear system; identification system; linear control; sub-space methods;
  • fLanguage
    English
  • Publisher
    ieee
  • Conference_Titel
    Electronics, Robotics and Automotive Mechanics Conference (CERMA), 2012 IEEE Ninth
  • Conference_Location
    Cuernavaca
  • Print_ISBN
    978-1-4673-5096-9
  • Type

    conf

  • DOI
    10.1109/CERMA.2012.45
  • Filename
    6524584