Identification of time-varying biological systems from ensemble data (joint dynamics application)

@article{Macneil1992IdentificationOT,
  title={Identification of time-varying biological systems from ensemble data (joint dynamics application)},
  author={J. Macneil and R. Kearney and I. Hunter},
  journal={IEEE Transactions on Biomedical Engineering},
  year={1992},
  volume={39},
  pages={1213-1225}
}
The theory underlying a new method for the identification of time-varying systems is described. The method uses singular value decomposition to obtain least-squares estimates of time-varying impulse response functions from an ensemble of input-output realizations. No a priori assumptions regarding the system structure or form of the time-variation are required and there are few restrictions on the input signal. Simulation studies, using a model of time-varying joint dynamics, show that the… CONTINUE READING

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