A convex OPF approximation for selecting the best candidate nodes for optimal location of power sources on DC resistive networks

This paper proposes a convex approximation approach for solving the optimal power flow (OPF) problem in direct current (DC) networks with constant power loads by using a sequential quadratic programming approach. A linearization method based on the Taylor series is used for the convexification of th...

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Main Author: Oscar Danilo Montoya
Format: Article
Language:English
Published: Elsevier 2020-06-01
Series:Engineering Science and Technology, an International Journal
Subjects:
Online Access:http://www.sciencedirect.com/science/article/pii/S2215098619303167
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spelling doaj-d9ef74e69dc8466abc1fbb56fdb445492020-11-25T03:04:28ZengElsevierEngineering Science and Technology, an International Journal2215-09862020-06-01233527533A convex OPF approximation for selecting the best candidate nodes for optimal location of power sources on DC resistive networksOscar Danilo Montoya0Programa de Ingeniería Eléctrica e Ingeniería Electrónica, Universidad Tecnológica de Bolívar, Km 1 vía Turbaco, Cartagena, ColombiaThis paper proposes a convex approximation approach for solving the optimal power flow (OPF) problem in direct current (DC) networks with constant power loads by using a sequential quadratic programming approach. A linearization method based on the Taylor series is used for the convexification of the power balance equations. For selecting the best candidate nodes for optimal location of distributed generators (DGs) on a DC network, a relaxation of the binary variables that represent the DGs location is proposed. This relaxation allows identifying the most important nodes for reducing power losses as well as the unimportant nodes. The optimal solution obtained by the proposed convex model is the best possible solution and serves for adjusting combinatorial optimization techniques for recovering the binary characteristics of the decision variables. The solution of the non-convex OPF model is achieved via GAMS software in conjunction with the CONOPT solver; in addition the sequential quadratic programming model is solved via quadprog from MATLAB for reducing the estimation errors in terms of calculation of the power losses. To compare the results of the proposed convex model, three metaheuristic approaches were employed using genetic algorithms, particle swarm optimization, continuous genetic algorithms, and black hole optimizers.http://www.sciencedirect.com/science/article/pii/S2215098619303167Direct current networksLinear power flow approximationConvex modelRelaxation of binary variablesOptimal power flowPower loss reduction
collection DOAJ
language English
format Article
sources DOAJ
author Oscar Danilo Montoya
spellingShingle Oscar Danilo Montoya
A convex OPF approximation for selecting the best candidate nodes for optimal location of power sources on DC resistive networks
Engineering Science and Technology, an International Journal
Direct current networks
Linear power flow approximation
Convex model
Relaxation of binary variables
Optimal power flow
Power loss reduction
author_facet Oscar Danilo Montoya
author_sort Oscar Danilo Montoya
title A convex OPF approximation for selecting the best candidate nodes for optimal location of power sources on DC resistive networks
title_short A convex OPF approximation for selecting the best candidate nodes for optimal location of power sources on DC resistive networks
title_full A convex OPF approximation for selecting the best candidate nodes for optimal location of power sources on DC resistive networks
title_fullStr A convex OPF approximation for selecting the best candidate nodes for optimal location of power sources on DC resistive networks
title_full_unstemmed A convex OPF approximation for selecting the best candidate nodes for optimal location of power sources on DC resistive networks
title_sort convex opf approximation for selecting the best candidate nodes for optimal location of power sources on dc resistive networks
publisher Elsevier
series Engineering Science and Technology, an International Journal
issn 2215-0986
publishDate 2020-06-01
description This paper proposes a convex approximation approach for solving the optimal power flow (OPF) problem in direct current (DC) networks with constant power loads by using a sequential quadratic programming approach. A linearization method based on the Taylor series is used for the convexification of the power balance equations. For selecting the best candidate nodes for optimal location of distributed generators (DGs) on a DC network, a relaxation of the binary variables that represent the DGs location is proposed. This relaxation allows identifying the most important nodes for reducing power losses as well as the unimportant nodes. The optimal solution obtained by the proposed convex model is the best possible solution and serves for adjusting combinatorial optimization techniques for recovering the binary characteristics of the decision variables. The solution of the non-convex OPF model is achieved via GAMS software in conjunction with the CONOPT solver; in addition the sequential quadratic programming model is solved via quadprog from MATLAB for reducing the estimation errors in terms of calculation of the power losses. To compare the results of the proposed convex model, three metaheuristic approaches were employed using genetic algorithms, particle swarm optimization, continuous genetic algorithms, and black hole optimizers.
topic Direct current networks
Linear power flow approximation
Convex model
Relaxation of binary variables
Optimal power flow
Power loss reduction
url http://www.sciencedirect.com/science/article/pii/S2215098619303167
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