Back to Search Start Over

Initialization Approach for Nonlinear State-Space Identification via the Subspace Encoder Approach

Authors :
Ramkannan, Rishi
Beintema, Gerben I.
Tóth, Roland
Schoukens, Maarten
Publication Year :
2023

Abstract

The SUBNET neural network architecture has been developed to identify nonlinear state-space models from input-output data. To achieve this, it combines the rolled-out nonlinear state-space equations and a state encoder function, both parameterised as neural networks The encoder function is introduced to reconstruct the current state from past input-output data. Hence, it enables the forward simulation of the rolled-out state-space model. While this approach has shown to provide high-accuracy and consistent model estimation, its convergence can be significantly improved by efficient initialization of the training process. This paper focuses on such an initialisation of the subspace encoder approach using the Best Linear Approximation (BLA). Using the BLA provided state-space matrices and its associated reconstructability map, both the state-transition part of the network and the encoder are initialized. The performance of the improved initialisation scheme is evaluated on a Wiener-Hammerstein simulation example and a benchmark dataset. The results show that for a weakly nonlinear system, the proposed initialisation based on the linear reconstructability map results in a faster convergence and a better model quality.<br />Comment: Accepted for presentation at the IFAC World Congress 2023

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2304.02119
Document Type :
Working Paper