Development of Digital Twin for Load Center on the Example of Distribution Network of an Urban District

The paper proposes a concept of building a digital twin based on the reinforcement learning method. This concept allows implementing an accurate digital model of an electrical network with bidirectional automatic data exchange, used for modeling, optimization, and control. The core of such a model i...

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Main Authors: Tomin Nikita, Kurbatsky Victor, Borisov Vadim, Musalev Sergey
Format: Article
Language:English
Published: EDP Sciences 2020-01-01
Series:E3S Web of Conferences
Online Access:https://www.e3s-conferences.org/articles/e3sconf/pdf/2020/69/e3sconf_energy-212020_02029.pdf
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spelling doaj-d38c02a6b1ec49a2b6bafde2deba54e42021-04-02T19:04:10ZengEDP SciencesE3S Web of Conferences2267-12422020-01-012090202910.1051/e3sconf/202020902029e3sconf_energy-212020_02029Development of Digital Twin for Load Center on the Example of Distribution Network of an Urban DistrictTomin Nikita0Kurbatsky Victor1Borisov Vadim2Musalev Sergey3Melentiev Energy Systems Institute, Electric Power System DepartmentMelentiev Energy Systems Institute, Electric Power System DepartmentIrkutsk Scientific Center of SB RASIrkutsk Scientific Center of SB RASThe paper proposes a concept of building a digital twin based on the reinforcement learning method. This concept allows implementing an accurate digital model of an electrical network with bidirectional automatic data exchange, used for modeling, optimization, and control. The core of such a model is an agent (potential digital twin). The agent, while constantly interacting with a physical object (electrical grid), searches for an optimal strategy for active network management, which involves short-term strategies capable of controlling the power supplied by generators and/ or consumed by the load to avoid overload or voltage problems. Such an agent can verify its training with the initial default policy, which can be considered as a teacher’s advice. The effectiveness of this approach is demonstrated on a test 77-node scheme and a real 17-node network diagram of the Akademgorodok microdistrict (Irkutsk) according to the data from smart electricity meters.https://www.e3s-conferences.org/articles/e3sconf/pdf/2020/69/e3sconf_energy-212020_02029.pdf
collection DOAJ
language English
format Article
sources DOAJ
author Tomin Nikita
Kurbatsky Victor
Borisov Vadim
Musalev Sergey
spellingShingle Tomin Nikita
Kurbatsky Victor
Borisov Vadim
Musalev Sergey
Development of Digital Twin for Load Center on the Example of Distribution Network of an Urban District
E3S Web of Conferences
author_facet Tomin Nikita
Kurbatsky Victor
Borisov Vadim
Musalev Sergey
author_sort Tomin Nikita
title Development of Digital Twin for Load Center on the Example of Distribution Network of an Urban District
title_short Development of Digital Twin for Load Center on the Example of Distribution Network of an Urban District
title_full Development of Digital Twin for Load Center on the Example of Distribution Network of an Urban District
title_fullStr Development of Digital Twin for Load Center on the Example of Distribution Network of an Urban District
title_full_unstemmed Development of Digital Twin for Load Center on the Example of Distribution Network of an Urban District
title_sort development of digital twin for load center on the example of distribution network of an urban district
publisher EDP Sciences
series E3S Web of Conferences
issn 2267-1242
publishDate 2020-01-01
description The paper proposes a concept of building a digital twin based on the reinforcement learning method. This concept allows implementing an accurate digital model of an electrical network with bidirectional automatic data exchange, used for modeling, optimization, and control. The core of such a model is an agent (potential digital twin). The agent, while constantly interacting with a physical object (electrical grid), searches for an optimal strategy for active network management, which involves short-term strategies capable of controlling the power supplied by generators and/ or consumed by the load to avoid overload or voltage problems. Such an agent can verify its training with the initial default policy, which can be considered as a teacher’s advice. The effectiveness of this approach is demonstrated on a test 77-node scheme and a real 17-node network diagram of the Akademgorodok microdistrict (Irkutsk) according to the data from smart electricity meters.
url https://www.e3s-conferences.org/articles/e3sconf/pdf/2020/69/e3sconf_energy-212020_02029.pdf
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