LAPSE:2023.18603
Published Article

LAPSE:2023.18603
An Online Security Prediction and Control Framework for Modern Power Grids
March 8, 2023
Abstract
The proliferation of renewable energy sources distributed generation (RES-DG) into the grid results in time-varying inertia constant. To ensure the security of the grid under varying inertia, techniques for fast security assessment are required. In addition, considering the high penetration of RES-DG units into the modern grids, security prediction using varying grid features is crucial. The computation burden concerns of conventional time-domain security assessment techniques make it unsuitable for real-time security prediction. This paper, therefore, proposes a fast security monitoring model that includes security prediction and load shedding for security control. The attributes considered in this paper include the load level, inertia constant, fault location, and power dispatched from the renewable energy sources generator. An incremental Naïve Bayes algorithm is applied on the training dataset developed from the responses of the grid to transient stability simulations. An additive Gaussian process regression (GPR) model is proposed to estimate the load shedding required for the predicted insecure states. Finally, an algorithm based on the nodes’ security margin is proposed to determine the optimal node (s) for the load shedding. The average security prediction and load shedding estimation model training times are 1.2 s and 3 s, respectively. The result shows that the proposed model can predict the security of the grid, estimate the amount of load shed required, and determine the specific node for load shedding operation.
The proliferation of renewable energy sources distributed generation (RES-DG) into the grid results in time-varying inertia constant. To ensure the security of the grid under varying inertia, techniques for fast security assessment are required. In addition, considering the high penetration of RES-DG units into the modern grids, security prediction using varying grid features is crucial. The computation burden concerns of conventional time-domain security assessment techniques make it unsuitable for real-time security prediction. This paper, therefore, proposes a fast security monitoring model that includes security prediction and load shedding for security control. The attributes considered in this paper include the load level, inertia constant, fault location, and power dispatched from the renewable energy sources generator. An incremental Naïve Bayes algorithm is applied on the training dataset developed from the responses of the grid to transient stability simulations. An additive Gaussian process regression (GPR) model is proposed to estimate the load shedding required for the predicted insecure states. Finally, an algorithm based on the nodes’ security margin is proposed to determine the optimal node (s) for the load shedding. The average security prediction and load shedding estimation model training times are 1.2 s and 3 s, respectively. The result shows that the proposed model can predict the security of the grid, estimate the amount of load shed required, and determine the specific node for load shedding operation.
Record ID
Keywords
distributed generation, incremental machine learning, renewable energy sources, security
Subject
Suggested Citation
Oladeji I, Zamora R, Lie TT. An Online Security Prediction and Control Framework for Modern Power Grids. (2023). LAPSE:2023.18603
Author Affiliations
Oladeji I: Electrical and Electronic Engineering Department, Auckland University of Technology (AUT), Auckland 1010, New Zealand
Zamora R: Electrical and Electronic Engineering Department, Auckland University of Technology (AUT), Auckland 1010, New Zealand [ORCID]
Lie TT: Electrical and Electronic Engineering Department, Auckland University of Technology (AUT), Auckland 1010, New Zealand [ORCID]
Zamora R: Electrical and Electronic Engineering Department, Auckland University of Technology (AUT), Auckland 1010, New Zealand [ORCID]
Lie TT: Electrical and Electronic Engineering Department, Auckland University of Technology (AUT), Auckland 1010, New Zealand [ORCID]
Journal Name
Energies
Volume
14
Issue
20
First Page
6639
Year
2021
Publication Date
2021-10-14
ISSN
1996-1073
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Original Submission
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PII: en14206639, Publication Type: Journal Article
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LAPSE:2023.18603
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https://doi.org/10.3390/en14206639
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Mar 8, 2023
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