Hybrid‐adaptive differential evolution with decay function applied to transmission network expansion planning with renewable energy resources generation

Abstract As the country implements the reform of the electricity market and a large number of renewable energy resources (RES) are connected to the grid, the model and algorithm of traditional transmission network expansion planning (TNEP) are not suitable. A model of TNEP is built, in which the inv...

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Main Authors: Xuexia Zhang, Xiaomei Wang
Format: Article
Language:English
Published: Wiley 2022-07-01
Series:IET Generation, Transmission & Distribution
Online Access:https://doi.org/10.1049/gtd2.12296
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author Xuexia Zhang
Xiaomei Wang
author_facet Xuexia Zhang
Xiaomei Wang
author_sort Xuexia Zhang
collection DOAJ
description Abstract As the country implements the reform of the electricity market and a large number of renewable energy resources (RES) are connected to the grid, the model and algorithm of traditional transmission network expansion planning (TNEP) are not suitable. A model of TNEP is built, in which the investment cost of new lines and the market‐based annual congestion surplus are selected as objective functions. A probabilistic DC power flow method is used to describe uncertainties of RES generation. A new algorithm, Hybrid‐Adaptive Differential Evolution with Decay Function (HyDE‐DF), is applied to solve the model of TNEP for the first time. Analysis and comparison in the IEEE 18‐bus system and the 52‐bus system in an area of Sichuan Province prove the feasibility, effectivity, and practicability of the model and solving algorithm. Some comparisons are performed using other variants of Differential Evolution (DE) and a swarm intelligence optimization algorithm to demonstrate the performance superiority of the new algorithm and new application. It is worth mentioning that in the 52‐bus system of an area of Sichuan Province, the investment cost obtained by the new algorithm is at least one or two orders of magnitude lower than other algorithms.
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spelling doaj.art-d7b0c1a8e1a444fb86e823c1b8f500862022-12-22T03:17:16ZengWileyIET Generation, Transmission & Distribution1751-86871751-86952022-07-0116142829283910.1049/gtd2.12296Hybrid‐adaptive differential evolution with decay function applied to transmission network expansion planning with renewable energy resources generationXuexia Zhang0Xiaomei Wang1School of Electrical Engineering Southwest Jiaotong University Chengdu ChinaSchool of Electrical Engineering Southwest Jiaotong University Chengdu ChinaAbstract As the country implements the reform of the electricity market and a large number of renewable energy resources (RES) are connected to the grid, the model and algorithm of traditional transmission network expansion planning (TNEP) are not suitable. A model of TNEP is built, in which the investment cost of new lines and the market‐based annual congestion surplus are selected as objective functions. A probabilistic DC power flow method is used to describe uncertainties of RES generation. A new algorithm, Hybrid‐Adaptive Differential Evolution with Decay Function (HyDE‐DF), is applied to solve the model of TNEP for the first time. Analysis and comparison in the IEEE 18‐bus system and the 52‐bus system in an area of Sichuan Province prove the feasibility, effectivity, and practicability of the model and solving algorithm. Some comparisons are performed using other variants of Differential Evolution (DE) and a swarm intelligence optimization algorithm to demonstrate the performance superiority of the new algorithm and new application. It is worth mentioning that in the 52‐bus system of an area of Sichuan Province, the investment cost obtained by the new algorithm is at least one or two orders of magnitude lower than other algorithms.https://doi.org/10.1049/gtd2.12296
spellingShingle Xuexia Zhang
Xiaomei Wang
Hybrid‐adaptive differential evolution with decay function applied to transmission network expansion planning with renewable energy resources generation
IET Generation, Transmission & Distribution
title Hybrid‐adaptive differential evolution with decay function applied to transmission network expansion planning with renewable energy resources generation
title_full Hybrid‐adaptive differential evolution with decay function applied to transmission network expansion planning with renewable energy resources generation
title_fullStr Hybrid‐adaptive differential evolution with decay function applied to transmission network expansion planning with renewable energy resources generation
title_full_unstemmed Hybrid‐adaptive differential evolution with decay function applied to transmission network expansion planning with renewable energy resources generation
title_short Hybrid‐adaptive differential evolution with decay function applied to transmission network expansion planning with renewable energy resources generation
title_sort hybrid adaptive differential evolution with decay function applied to transmission network expansion planning with renewable energy resources generation
url https://doi.org/10.1049/gtd2.12296
work_keys_str_mv AT xuexiazhang hybridadaptivedifferentialevolutionwithdecayfunctionappliedtotransmissionnetworkexpansionplanningwithrenewableenergyresourcesgeneration
AT xiaomeiwang hybridadaptivedifferentialevolutionwithdecayfunctionappliedtotransmissionnetworkexpansionplanningwithrenewableenergyresourcesgeneration