1 research outputs found
Efficient Multidimensional Regularization for Volterra Series Estimation
This paper presents an efficient nonparametric time domain nonlinear system
identification method. It is shown how truncated Volterra series models can be
efficiently estimated without the need of long, transient-free measurements.
The method is a novel extension of the regularization methods that have been
developed for impulse response estimates of linear time invariant systems. To
avoid the excessive memory needs in case of long measurements or large number
of estimated parameters, a practical gradient-based estimation method is also
provided, leading to the same numerical results as the proposed Volterra
estimation method. Moreover, the transient effects in the simulated output are
removed by a special regularization method based on the novel ideas of
transient removal for Linear Time-Varying (LTV) systems. Combining the proposed
methodologies, the nonparametric Volterra models of the cascaded water tanks
benchmark are presented in this paper. The results for different scenarios
varying from a simple Finite Impulse Response (FIR) model to a 3rd degree
Volterra series with and without transient removal are compared and studied. It
is clear that the obtained models capture the system dynamics when tested on a
validation dataset, and their performance is comparable with the white-box
(physical) models