Using graph theory to resolve state estimator issues faced by deregulated power systems

Power industry is undergoing a transition from the traditional regulated environment to the competitive power market. To have a reliable state estimator (SE) in the power market environment, two major challenges are emerging, i.e. to keep SE running reliably even under a contingency and to run SE ov...

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Main Author: Lei, Jiansheng
Other Authors: Huang, Garng M.
Format: Others
Language:en_US
Published: 2010
Subjects:
Online Access:http://hdl.handle.net/1969.1/ETD-TAMU-1292
http://hdl.handle.net/1969.1/ETD-TAMU-1292
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spelling ndltd-tamu.edu-oai-repository.tamu.edu-1969.1-ETD-TAMU-12922013-01-08T10:40:20ZUsing graph theory to resolve state estimator issues faced by deregulated power systemsLei, JianshengGraph TheoryState EstimationPower SystemPower MarketContingencyInformation IntegrationTextured Distributed AlgorithmData ExchangePower industry is undergoing a transition from the traditional regulated environment to the competitive power market. To have a reliable state estimator (SE) in the power market environment, two major challenges are emerging, i.e. to keep SE running reliably even under a contingency and to run SE over a grid with extremely large size. The objective of this dissertation is to use graph theory to address the above two challenges. To keep SE running reliably under a contingency, a novel topological approach is first proposed to identify critical measurements and examine network observability under a contingency. To advance the classical topological observability analysis, a new concept of contingency observability graph (COG) is introduced and it is proven that a power system network maintains its observability under a contingency if and only if its COG satisfies some conditions. As an application of COG, a two-stage heuristic topological approach is further developed based on the new concept of qualified COG (QCOG) to minimize the number of measurements and RTUs under the constraint that the system remains observable under any single contingency. To overcome the disadvantages of existing SE over extremely large networks, a textured distributed state estimator (DSE), which consists of the off-line textured architecture design and the on-line textured computation, is proposed based on COG and a new concept of Bus Credibility Index (BCI). The textured DSE is non-recursive, asynchronous and avoids central controlling node. Numerical tests verify that the performance of the new textured DSE algorithm improves greatly compared with existing DSE algorithms in respect of bad data detection and identification. Furthermore, the software implementation for DSE is formulated as an information integration problem over regional power markets, and is very challenging because of its size and complexity. A new concept of semantic knowledge warehouse (SKW), together with the proposed concepts of semantic reasoning software component (SRSC) and deduction credibility, is developed to implement such an information integration system.Huang, Garng M.2010-01-14T23:59:32Z2010-01-16T01:35:26Z2010-01-14T23:59:32Z2010-01-16T01:35:26Z2007-052009-05-15BookThesisElectronic Dissertationtextelectronicapplication/pdfborn digitalhttp://hdl.handle.net/1969.1/ETD-TAMU-1292http://hdl.handle.net/1969.1/ETD-TAMU-1292en_US
collection NDLTD
language en_US
format Others
sources NDLTD
topic Graph Theory
State Estimation
Power System
Power Market
Contingency
Information Integration
Textured Distributed Algorithm
Data Exchange
spellingShingle Graph Theory
State Estimation
Power System
Power Market
Contingency
Information Integration
Textured Distributed Algorithm
Data Exchange
Lei, Jiansheng
Using graph theory to resolve state estimator issues faced by deregulated power systems
description Power industry is undergoing a transition from the traditional regulated environment to the competitive power market. To have a reliable state estimator (SE) in the power market environment, two major challenges are emerging, i.e. to keep SE running reliably even under a contingency and to run SE over a grid with extremely large size. The objective of this dissertation is to use graph theory to address the above two challenges. To keep SE running reliably under a contingency, a novel topological approach is first proposed to identify critical measurements and examine network observability under a contingency. To advance the classical topological observability analysis, a new concept of contingency observability graph (COG) is introduced and it is proven that a power system network maintains its observability under a contingency if and only if its COG satisfies some conditions. As an application of COG, a two-stage heuristic topological approach is further developed based on the new concept of qualified COG (QCOG) to minimize the number of measurements and RTUs under the constraint that the system remains observable under any single contingency. To overcome the disadvantages of existing SE over extremely large networks, a textured distributed state estimator (DSE), which consists of the off-line textured architecture design and the on-line textured computation, is proposed based on COG and a new concept of Bus Credibility Index (BCI). The textured DSE is non-recursive, asynchronous and avoids central controlling node. Numerical tests verify that the performance of the new textured DSE algorithm improves greatly compared with existing DSE algorithms in respect of bad data detection and identification. Furthermore, the software implementation for DSE is formulated as an information integration problem over regional power markets, and is very challenging because of its size and complexity. A new concept of semantic knowledge warehouse (SKW), together with the proposed concepts of semantic reasoning software component (SRSC) and deduction credibility, is developed to implement such an information integration system.
author2 Huang, Garng M.
author_facet Huang, Garng M.
Lei, Jiansheng
author Lei, Jiansheng
author_sort Lei, Jiansheng
title Using graph theory to resolve state estimator issues faced by deregulated power systems
title_short Using graph theory to resolve state estimator issues faced by deregulated power systems
title_full Using graph theory to resolve state estimator issues faced by deregulated power systems
title_fullStr Using graph theory to resolve state estimator issues faced by deregulated power systems
title_full_unstemmed Using graph theory to resolve state estimator issues faced by deregulated power systems
title_sort using graph theory to resolve state estimator issues faced by deregulated power systems
publishDate 2010
url http://hdl.handle.net/1969.1/ETD-TAMU-1292
http://hdl.handle.net/1969.1/ETD-TAMU-1292
work_keys_str_mv AT leijiansheng usinggraphtheorytoresolvestateestimatorissuesfacedbyderegulatedpowersystems
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