University of Oulu

Juuso, E. K. (2022). Advanced machine learning in recursive data-based modelling. SNE Simulation Notes Europe, 32(2), 113–120. https://doi.org/10.11128/sne.32.tn.10608

Advanced machine learning in recursive data-based modelling

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Author: Juuso, Esko K.1
Organizations: 1Control Engineering, Environmental and Chemical Engineering, Faculty of Technology, P.O. BOX 4300, 90014 University of Oulu, Finland
Format: article
Version: published version
Access: open
Online Access: PDF Full Text (PDF, 0.2 MB)
Persistent link: http://urn.fi/urn:nbn:fi-fe202301255790
Language: English
Published: ARGESIM, 2022
Publish Date: 2023-01-25
Description:

Abstract

Recursive data-based modelling is needed for making decision online in varying operating conditions. Recursive algorithms are useful in adapting the parameters within selected memory horizons. Abrupt changes can be handled when the situation change is approved to be drastic. The nonlinear scaling based on generalized norms includes additional alternatives: the norm orders adapt to the gradually changing operating conditions. The drastic shape changes of the scaling functions require full analyses of the orders. The orders can also be stored for different situations and re-used later. Fuzzy inequalities are useful in finding out if the feasible ranges of the most recent period are different from the current active ranges or similar with some of previous feasible ranges. Machine learning is integrated in the system in three levels: (1) finding the appropriate time windows, (2) interactions of feasible levels, and (3) finding decision support when some of feasible ranges need to change. These decisions are supported by expert knowledge. Other model parameters can be included in the analysis. The solution has been tested with measurement data from several application cases. The recursive approach is beneficial in the control and maintenance in varying operating conditions.

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Series: Simulation notes Europe
ISSN: 2305-9974
ISSN-E: 2306-0271
ISSN-L: 2305-9974
Volume: 32
Issue: 2
Pages: 113 - 120
DOI: 10.11128/sne.32.tn.10608
OADOI: https://oadoi.org/10.11128/sne.32.tn.10608
Type of Publication: A1 Journal article – refereed
Field of Science: 213 Electronic, automation and communications engineering, electronics
113 Computer and information sciences
214 Mechanical engineering
222 Other engineering and technologies
Subjects:
Copyright information: © 2022 The Authors and SNE Simulation Notes Europe.