Data-driven simulation and control

@article{Markovsky2008DatadrivenSA,
  title={Data-driven simulation and control},
  author={I. Markovsky and P. Rapisarda},
  journal={International Journal of Control},
  year={2008},
  volume={81},
  pages={1946 - 1959}
}
Classical linear time-invariant system simulation methods are based on a transfer function, impulse response, or input/state/output representation. We present a method for computing the response of a system to a given input and initial conditions directly from a trajectory of the system, without explicitly identifying the system from the data. Similar to the classical approach for simulation, the classical approach for control is model-based: first a model representation is derived from given… Expand
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