Dual-stage constructed random graph algorithm to generate random graphs featuring the same topological characteristics with power grids

Abstract It is a common practice to simulate some historical or test systems to validate the efficiency of new methods or concepts. However, there are only a small number of existing power system test cases, and validation and evaluation results, obtained using such a limited number of test cases, m...

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Main Authors: Shiqian MA, Yixin YU, Lei ZHAO
Format: Article
Language:English
Published: IEEE 2017-09-01
Series:Journal of Modern Power Systems and Clean Energy
Subjects:
Online Access:http://link.springer.com/article/10.1007/s40565-017-0318-8
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spelling doaj-e773ab8efa814f8c88a0d8e01ec8b09c2021-05-03T04:25:36ZengIEEEJournal of Modern Power Systems and Clean Energy2196-56252196-54202017-09-015568369510.1007/s40565-017-0318-8Dual-stage constructed random graph algorithm to generate random graphs featuring the same topological characteristics with power gridsShiqian MA0Yixin YU1Lei ZHAO2State Grid Tianjin Electric Power Research InstituteKey Laboratory of Smart Grid of Ministry of Education, Tianjin UniversityKey Laboratory of Smart Grid of Ministry of Education, Tianjin UniversityAbstract It is a common practice to simulate some historical or test systems to validate the efficiency of new methods or concepts. However, there are only a small number of existing power system test cases, and validation and evaluation results, obtained using such a limited number of test cases, may not be deemed sufficient or convincing. In order to provide more available test cases, a new random graph generation algorithm, named “dual-stage constructed random graph” algorithm, is proposed to effectively model the power grid topology. The algorithm generates a spanning tree to guarantee the connectivity of random graphs and is capable of controlling the number of lines precisely. No matter how much the average degree is, whether sparse or not, random graphs can be quickly formed to satisfy the requirements. An approach is developed to generate random graphs with prescribed numbers of connected components, in order to simulate the power grid topology under fault conditions. Our experimental study on several realistic power grid topologies proves that the proposed algorithm can quickly generate a large number of random graphs with the topology characteristics of real-world power grid.http://link.springer.com/article/10.1007/s40565-017-0318-8Power gird topologyDual-stage constructed random graph (DSCRG) algorithmRandom graph generationConnectivityAverage degreeConnected component
collection DOAJ
language English
format Article
sources DOAJ
author Shiqian MA
Yixin YU
Lei ZHAO
spellingShingle Shiqian MA
Yixin YU
Lei ZHAO
Dual-stage constructed random graph algorithm to generate random graphs featuring the same topological characteristics with power grids
Journal of Modern Power Systems and Clean Energy
Power gird topology
Dual-stage constructed random graph (DSCRG) algorithm
Random graph generation
Connectivity
Average degree
Connected component
author_facet Shiqian MA
Yixin YU
Lei ZHAO
author_sort Shiqian MA
title Dual-stage constructed random graph algorithm to generate random graphs featuring the same topological characteristics with power grids
title_short Dual-stage constructed random graph algorithm to generate random graphs featuring the same topological characteristics with power grids
title_full Dual-stage constructed random graph algorithm to generate random graphs featuring the same topological characteristics with power grids
title_fullStr Dual-stage constructed random graph algorithm to generate random graphs featuring the same topological characteristics with power grids
title_full_unstemmed Dual-stage constructed random graph algorithm to generate random graphs featuring the same topological characteristics with power grids
title_sort dual-stage constructed random graph algorithm to generate random graphs featuring the same topological characteristics with power grids
publisher IEEE
series Journal of Modern Power Systems and Clean Energy
issn 2196-5625
2196-5420
publishDate 2017-09-01
description Abstract It is a common practice to simulate some historical or test systems to validate the efficiency of new methods or concepts. However, there are only a small number of existing power system test cases, and validation and evaluation results, obtained using such a limited number of test cases, may not be deemed sufficient or convincing. In order to provide more available test cases, a new random graph generation algorithm, named “dual-stage constructed random graph” algorithm, is proposed to effectively model the power grid topology. The algorithm generates a spanning tree to guarantee the connectivity of random graphs and is capable of controlling the number of lines precisely. No matter how much the average degree is, whether sparse or not, random graphs can be quickly formed to satisfy the requirements. An approach is developed to generate random graphs with prescribed numbers of connected components, in order to simulate the power grid topology under fault conditions. Our experimental study on several realistic power grid topologies proves that the proposed algorithm can quickly generate a large number of random graphs with the topology characteristics of real-world power grid.
topic Power gird topology
Dual-stage constructed random graph (DSCRG) algorithm
Random graph generation
Connectivity
Average degree
Connected component
url http://link.springer.com/article/10.1007/s40565-017-0318-8
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AT yixinyu dualstageconstructedrandomgraphalgorithmtogeneraterandomgraphsfeaturingthesametopologicalcharacteristicswithpowergrids
AT leizhao dualstageconstructedrandomgraphalgorithmtogeneraterandomgraphsfeaturingthesametopologicalcharacteristicswithpowergrids
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