Learning Data-Driven Stable Corrections of Dynamical Systems—Application to the Simulation of the Top-Oil Temperature Evolution of a Power Transformer

Author:

Ghnatios Chady1ORCID,Kestelyn Xavier2,Denis Guillaume3ORCID,Champaney Victor4,Chinesta Francisco56

Affiliation:

1. SKF Chair, PIMM Lab, Arts et Metiers Institute of Technology, 151 Boulevard de l’Hôpital, 75013 Paris, France

2. ULR 2697-L2EP, Centrale Lille, Junia ISEN Lille, Arts et Metiers Institute of Technology, University of Lille, 59000 Lille, France

3. RTE R&D, 7C Place du Dôme, 92073 Paris La Defense, CEDEX, France

4. ESI Chair, PIMM Lab, Arts et Métiers Institute of Technology, 151 Boulevard de l’Hôpital, 75013 Paris, France

5. RTE Chair, PIMM Lab, Arts et Métiers Institute of Technology, 151 Boulevard de l’Hôpital, 75013 Paris, France

6. CNRS@CREATE, 1 Create Way, 04-05 Create Tower, Singapore 138602, Singapore

Abstract

Many engineering systems can be described by using differential models whose solutions, generally obtained after discretization, can exhibit a noticeable deviation with respect to the response of the physical systems that those models are expected to represent. In those circumstances, one possibility consists of enriching the model in order to reproduce the physical system behavior. The present paper considers a dynamical system and proposes enriching the model solution by learning the dynamical model of the gap between the system response and the model-based prediction while ensuring that the time integration of the learned model remains stable. The proposed methodology was applied in the simulation of the top-oil temperature evolution of a power transformer, for which experimental data provided by the RTE, the French electricity transmission system operator, were used to construct the model enrichment with the hybrid rationale, ensuring more accurate predictions.

Publisher

MDPI AG

Subject

Energy (miscellaneous),Energy Engineering and Power Technology,Renewable Energy, Sustainability and the Environment,Electrical and Electronic Engineering,Control and Optimization,Engineering (miscellaneous),Building and Construction

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5. Deep learning in neural networks: An overview;Schmidhuber;Neural Netw.,2015

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