Investigation of Proper Orthogonal Decomposition for Echo State Networks

11/30/2022
by   Jean Panaioti Jordanou, et al.
0

Echo State Networks (ESN) are a type of Recurrent Neural Networks that yields promising results in representing time series and nonlinear dynamic systems. Although they are equipped with a very efficient training procedure, Reservoir Computing strategies, such as the ESN, require the use of high order networks, i.e. large number of layers, resulting in number of states that is magnitudes higher than the number of model inputs and outputs. This not only makes the computation of a time step more costly, but also may pose robustness issues when applying ESNs to problems such as Model Predictive Control (MPC) and other optimal control problems. One such way to circumvent this is through Model Order Reduction strategies such as the Proper Orthogonal Decomposition (POD) and its variants (POD-DEIM), whereby we find an equivalent lower order representation to an already trained high dimension ESN. The objective of this work is to investigate and analyze the performance of POD methods in Echo State Networks, evaluating their effectiveness. To this end, we evaluate the Memory Capacity (MC) of the POD-reduced network in comparison to the original (full order) ENS. We also perform experiments on two different numerical case studies: a NARMA10 difference equation and an oil platform containing two wells and one riser. The results show that there is little loss of performance comparing the original ESN to a POD-reduced counterpart, and also that the performance of a POD-reduced ESN tend to be superior to a normal ESN of the same size. Also we attain speedups of around 80% in comparison to the original ESN.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
10/08/2020

On Optimal Pointwise in Time Error Bounds and Difference Quotients for the Proper Orthogonal Decomposition

In this paper, we resolve several long standing issues dealing with opti...
research
06/18/2021

A new approach to proper orthogonal decomposition with difference quotients

In a recent work [B. Koc et al., arXiv:2010.03750, SIAM J. Numer. Anal.,...
research
01/27/2021

Echo State Network for two-dimensional turbulent moist Rayleigh-Bénard convection

Recurrent neural networks are machine learning algorithms which are suit...
research
09/11/2023

Robust Nonlinear Reduced-Order Model Predictive Control

Real-world systems are often characterized by high-dimensional nonlinear...
research
07/27/2022

A Proper Orthogonal Decomposition approach for parameters reduction of Single Shot Detector networks

As a major breakthrough in artificial intelligence and deep learning, Co...

Please sign up or login with your details

Forgot password? Click here to reset