Systems and Means of Informatics
2021, Volume 31, Issue 1, pp 133-144
EMPLOYING DEEP LEARNING NEURAL NETWORKS IN MATHEMATICAL BASIS OF DIGITAL TWINS OF ELECTRICAL POWER SYSTEMS
Abstract
Development problems for digital twins of contemporary active power distribution systems are considered. Approaches to employing deep learning neural networks in digital twin-based intelligent control of these systems are highlighted. A brief review of relevant neural network architectures is outlined. Examples of neural network tools for solving a number of key intelligent control problems are presented, including load forecasting, electricity price forecasting, economic dispatch, power machine health assessment and prediction, and faults and disasters diagnosis. Recommendations are provided regarding alternative deployment modes of the presented neural network tools, such as inclusion into a digital twin basic mathematical software, or supply as auxiliary applications for certain categories of users.
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[+] About this article
Title
EMPLOYING DEEP LEARNING NEURAL NETWORKS IN MATHEMATICAL BASIS OF DIGITAL TWINS OF ELECTRICAL POWER SYSTEMS
Journal
Systems and Means of Informatics
Volume 31, Issue 1, pp 133-144
Cover Date
2021-04-20
DOI
10.14357/08696527210111
Print ISSN
0869-6527
Publisher
Institute of Informatics Problems, Russian Academy of Sciences
Additional Links
Key words
digital twin; electrical distribution system; deep learning neural network; forecasting; fault diagnosis
Authors
S. P. Kovalyov
Author Affiliations
V. A. Trapeznikov Institute of Control Sciences, Russian Academy of Sciences, 65 Profsoyuznaya Str., Moscow 117997, Russian Federation
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