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dynoNet: a neural network architecture for learning dynamical systems

Authors :
Forgione, Marco
Piga, Dario
Publication Year :
2020

Abstract

This paper introduces a network architecture, called dynoNet, utilizing linear dynamical operators as elementary building blocks. Owing to the dynamical nature of these blocks, dynoNet networks are tailored for sequence modeling and system identification purposes. The back-propagation behavior of the linear dynamical operator with respect to both its parameters and its input sequence is defined. This enables end-to-end training of structured networks containing linear dynamical operators and other differentiable units, exploiting existing deep learning software. Examples show the effectiveness of the proposed approach on well-known system identification benchmarks. Examples show the effectiveness of the proposed approach against well-known system identification benchmarks.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2006.02250
Document Type :
Working Paper