Fast characterization of nonlinear feasible region based on deep neural network association mining

Dispatches of tie-line power between regional grids promote the use of natural resources. Therefore, the exact characterization of nonlinear tie-line feasible region becomes an important guarantee to ensure the power interaction. However, solving nonlinear problems using traditional methods usually...

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Main Authors: Wei Dai, Jiangyi Jian, Suhang Guo
Format: Article
Language:English
Published: Elsevier 2023-09-01
Series:Energy Reports
Subjects:
Online Access:http://www.sciencedirect.com/science/article/pii/S2352484723004523
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author Wei Dai
Jiangyi Jian
Suhang Guo
author_facet Wei Dai
Jiangyi Jian
Suhang Guo
author_sort Wei Dai
collection DOAJ
description Dispatches of tie-line power between regional grids promote the use of natural resources. Therefore, the exact characterization of nonlinear tie-line feasible region becomes an important guarantee to ensure the power interaction. However, solving nonlinear problems using traditional methods usually requires a solver with powerful computational capabilities. We herein propose a feature association mining for nonlinear constraints and feasible region boundary to directly identify the boundary points with deep neural network (DNN) assisted prediction, which divides the identification of feasible region into two stages. Firstly, the cardinal decision variables are identified using the DNN to alleviate the numerical annihilation problem. Secondly, under the guidance of the characteristics of the description results, the association between the input constraints and the output feasible region is obtained and the block feature library of the sample data is constructed to reduce the learning difficulty. Finally, the block mapping of some key decision variables is completed. In the second stage, some cardinal decision variables are used as indicators to straightly locate the points. Moreover, a round of accuracy rectification is carried out using segment translation method and the results are corrected for ensuring the accuracy. Case studies demonstrate the effectiveness of the proposed methods.
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spelling doaj.art-875208faad354170916baeadca89b1a22023-09-06T04:51:42ZengElsevierEnergy Reports2352-48472023-09-01911021111Fast characterization of nonlinear feasible region based on deep neural network association miningWei Dai0Jiangyi Jian1Suhang Guo2Corresponding author.; College of Electrical Engineering, Guangxi University, Nanning, 530004, ChinaCollege of Electrical Engineering, Guangxi University, Nanning, 530004, ChinaCollege of Electrical Engineering, Guangxi University, Nanning, 530004, ChinaDispatches of tie-line power between regional grids promote the use of natural resources. Therefore, the exact characterization of nonlinear tie-line feasible region becomes an important guarantee to ensure the power interaction. However, solving nonlinear problems using traditional methods usually requires a solver with powerful computational capabilities. We herein propose a feature association mining for nonlinear constraints and feasible region boundary to directly identify the boundary points with deep neural network (DNN) assisted prediction, which divides the identification of feasible region into two stages. Firstly, the cardinal decision variables are identified using the DNN to alleviate the numerical annihilation problem. Secondly, under the guidance of the characteristics of the description results, the association between the input constraints and the output feasible region is obtained and the block feature library of the sample data is constructed to reduce the learning difficulty. Finally, the block mapping of some key decision variables is completed. In the second stage, some cardinal decision variables are used as indicators to straightly locate the points. Moreover, a round of accuracy rectification is carried out using segment translation method and the results are corrected for ensuring the accuracy. Case studies demonstrate the effectiveness of the proposed methods.http://www.sciencedirect.com/science/article/pii/S2352484723004523Tie-line feasible regionDeep neutral networkNonlinear networksSegment translation method
spellingShingle Wei Dai
Jiangyi Jian
Suhang Guo
Fast characterization of nonlinear feasible region based on deep neural network association mining
Energy Reports
Tie-line feasible region
Deep neutral network
Nonlinear networks
Segment translation method
title Fast characterization of nonlinear feasible region based on deep neural network association mining
title_full Fast characterization of nonlinear feasible region based on deep neural network association mining
title_fullStr Fast characterization of nonlinear feasible region based on deep neural network association mining
title_full_unstemmed Fast characterization of nonlinear feasible region based on deep neural network association mining
title_short Fast characterization of nonlinear feasible region based on deep neural network association mining
title_sort fast characterization of nonlinear feasible region based on deep neural network association mining
topic Tie-line feasible region
Deep neutral network
Nonlinear networks
Segment translation method
url http://www.sciencedirect.com/science/article/pii/S2352484723004523
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AT jiangyijian fastcharacterizationofnonlinearfeasibleregionbasedondeepneuralnetworkassociationmining
AT suhangguo fastcharacterizationofnonlinearfeasibleregionbasedondeepneuralnetworkassociationmining