A kernel design approach to improve kernel subspace identification

Date

2020-05-27

Supervisor/s

Journal Title

Journal ISSN

Volume Title

Publisher

IEEE

Department

Type

Article

ISSN

0278-0046

Format

Free to read from

Citation

Salgado Pilario KE, Cao Y, Shafiee M. (2021) A kernel design approach to improve kernel subspace identification. IEEE Transactions on Industrial Electronics, Volume 68, Issue 7, July 2021, pp. 6171-6180

Abstract

Subspace identification methods, such as canonical variate analysis (CVA), are non-iterative tools suitable for the state-space modelling of multi-input, multi-output (MIMO) processes, e.g. industrial processes, using input-output data. To learn nonlinear system behavior, kernel subspace techniques are commonly used. However, the issue of kernel design must be given more attention because the type of kernel can influence the kind of nonlinearities that the model can capture. In this paper, a new kernel design is proposed for CVA based identification, which is a mixture of a global and local kernel to enhance generalization ability and includes a mechanism to vary the influence of each process variable into the model response. During validation, model hyper-parameters were tuned using random search. The overall method is called Feature-Relevant Mixed Kernel Canonical Variate Analysis (FR-MKCVA). Using an evaporator case study, the trained FR-MKCVA models show a better fit to observed data than those of single-kernel CVA, linear CVA, and neural net models under both interpolation and extrapolation scenarios. This work provides a basis for future exploration of deep and diverse kernel designs for system identification.

Description

Software Description

Software Language

Github

Keywords

system identification, kernel PCA, kernel PCA, Newell-Lee evaporator, random search

DOI

Rights

Attribution-NonCommercial 4.0 International

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