LAPSE:2023.12106
Published Article

LAPSE:2023.12106
Resilience Neural-Network-Based Methodology Applied on Optimized Transmission Systems Restoration
February 28, 2023
Abstract
This paper presents an advanced methodology for restoration of the electric power transmission system after its partial or complete failure. This load-optimized restoration is dependent on sectioning of the transmission system based on artificial neural networks. The proposed methodology and the underlying algorithm consider the transmission system operation state just before the fallout and, based on this state, calculate the power grid parameters and suggest the methodology for system restoration for each individual interconnection area. The novel methodology proposes an optimization objective function as a maximum load recovery under a set of constraints. The grid is analyzed using a large amount of data, which results in an adequate number of training data for artificial neural networks. Once the artificial neural network is trained, it provides an almost instantaneous network recovery plan scheme by defining the direct switching order.
This paper presents an advanced methodology for restoration of the electric power transmission system after its partial or complete failure. This load-optimized restoration is dependent on sectioning of the transmission system based on artificial neural networks. The proposed methodology and the underlying algorithm consider the transmission system operation state just before the fallout and, based on this state, calculate the power grid parameters and suggest the methodology for system restoration for each individual interconnection area. The novel methodology proposes an optimization objective function as a maximum load recovery under a set of constraints. The grid is analyzed using a large amount of data, which results in an adequate number of training data for artificial neural networks. Once the artificial neural network is trained, it provides an almost instantaneous network recovery plan scheme by defining the direct switching order.
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Keywords
Artificial Intelligence, artificial neural networks, power system analysis, transmission power system optimization, transmission system restoration
Suggested Citation
Tosic J, Skok S, Teklic L, Balkovic M. Resilience Neural-Network-Based Methodology Applied on Optimized Transmission Systems Restoration. (2023). LAPSE:2023.12106
Author Affiliations
Tosic J: Toska Ltd., 10000 Zagreb, Croatia
Skok S: Department of Electrical Engineering, Algebra University College, 10000 Zagreb, Croatia [ORCID]
Teklic L: Croatian Transmission System Operator, 10000 Zagreb, Croatia
Balkovic M: Department of Electrical Engineering, Algebra University College, 10000 Zagreb, Croatia [ORCID]
Skok S: Department of Electrical Engineering, Algebra University College, 10000 Zagreb, Croatia [ORCID]
Teklic L: Croatian Transmission System Operator, 10000 Zagreb, Croatia
Balkovic M: Department of Electrical Engineering, Algebra University College, 10000 Zagreb, Croatia [ORCID]
Journal Name
Energies
Volume
15
Issue
13
First Page
4694
Year
2022
Publication Date
2022-06-26
ISSN
1996-1073
Version Comments
Original Submission
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PII: en15134694, Publication Type: Journal Article
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LAPSE:2023.12106
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https://doi.org/10.3390/en15134694
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Feb 28, 2023
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