• DocumentCode
    1720293
  • Title

    A new approach to piecewise linear modeling of time series

  • Author

    Mattavelli, M. ; Vesin, J.M. ; Amaldi, E. ; Grüter, R.

  • Author_Institution
    Signal Process. Lab., Swiss Federal Inst. of Technol., Lausanne, Switzerland
  • fYear
    1996
  • Firstpage
    502
  • Lastpage
    505
  • Abstract
    Due to the inherent non-linearity and non-stationarity of a wide class of time series, nonlinear models have been the object of an increasing interest over the past years. Piecewise linear models, in which a linear sub-model is associated with each region of a state-space decomposition, have been proposed as an attractive alternative to threshold autoregressive models. However, it is still unclear how this type of models can be actually estimated. We show how a new combinatorial optimization approach, which we devised for the general problem of piecewise linear model estimation, can be successfully applied to piecewise linear modeling of time series. The idea is to focus on the inconsistent linear system that arises when considering a simple linear model and to partition it into a minimum number of consistent subsystems (MIN PCS). Although the resulting problem (MIN PCS) is NP-hard, satisfactory approximate solutions can be obtained using simple variants of the perceptron algorithm studied in the artificial neural network literature. Simulation results for two well-known chaotic time series are reported
  • Keywords
    autoregressive processes; combinatorial mathematics; computational complexity; linear systems; multilayer perceptrons; optimisation; parameter estimation; piecewise-linear techniques; state-space methods; topology; NP-hard problem; approximate solutions; artificial neural network; chaotic time series; combinatorial optimization; greedy algorithm; inconsistent linear system; linear submodel; minimum number of consistent subsystems; nonlinear models; nonlinearity; nonstationarity; perceptron algorithm; piecewise linear model estimation; piecewise linear modeling; simulation results; state-space decomposition; threshold autoregressive models; Artificial neural networks; Ear; Laboratories; Linear systems; Mathematical model; Mathematics; Operations research; Piecewise linear approximation; Piecewise linear techniques; Power system modeling;
  • fLanguage
    English
  • Publisher
    ieee
  • Conference_Titel
    Digital Signal Processing Workshop Proceedings, 1996., IEEE
  • Conference_Location
    Loen
  • Print_ISBN
    0-7803-3629-1
  • Type

    conf

  • DOI
    10.1109/DSPWS.1996.555572
  • Filename
    555572