Data-Driven Internal Model Control of Second-Order Discrete Volterra Systems
Abstract
The increase in system complexity paired with a growing availability of operational data has motivated a change in the traditional control design paradigm. Instead of modeling the system by first principles and then proceeding with a (model-based) control design, the data-driven control paradigm proposes to directly characterize the controller from data. By exploiting a fundamental result of Willems and collaborators, this approach has been successfully applied to linear systems, yielding data-based formulas for many classical linear controllers. In the present paper, the data-driven approach is extended to a class of nonlinear systems, namely second-order discrete Volterra systems. Two main contributions are made for this class of systems. At first, we show that - under a necessary and sufficient condition on the input data excitation - a data-based system representation can be derived from input-output data and used to replace an explicit system model. That is, the fundamental result of Willems et al. is extended to this class of systems. Subsequently a data-driven internal model control formula for output-tracking is derived. The approach is illustrated via two simulation examples.
Cite
@article{arxiv.2003.14158,
title = {Data-Driven Internal Model Control of Second-Order Discrete Volterra Systems},
author = {Juan G. Rueda-Escobedo and Johannes Schiffer},
journal= {arXiv preprint arXiv:2003.14158},
year = {2020}
}
Comments
8 pages, 7 figures, conference