Environmental Planning for Wind Power Plant Site Selection using a Fuzzy PROMETHEE-Based Outranking Method in Geographical Information System

Selection of suitable sites for wind power plants is one of the most important decision on wind resources development. Site selection for the establishment of large wind power plants requires spatial evaluation taking technical, economic, and environmental considerations into account. This study has...

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Main Authors: Morteza Ghobadi, Masumeh Ahmadipari
Format: Article
Language:English
Published: Iranian Association for Energy Economics 2018-05-01
Series:Environmental Energy and Economic Research
Subjects:
GIS
Online Access:http://www.eeer.ir/article_75550_65f5e45c3194daf4ba258cad2837af17.pdf
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spelling doaj-e777428a1eeb4be6899b2bcb8b79c4332020-11-25T01:06:04ZengIranian Association for Energy EconomicsEnvironmental Energy and Economic Research2538-49882676-49972018-05-0122758710.22097/eeer.2018.148760.104175550Environmental Planning for Wind Power Plant Site Selection using a Fuzzy PROMETHEE-Based Outranking Method in Geographical Information SystemMorteza Ghobadi0Masumeh Ahmadipari1Department of Environment, Lorestan University, IranDepartment of Environment, Tehran University, IranSelection of suitable sites for wind power plants is one of the most important decision on wind resources development. Site selection for the establishment of large wind power plants requires spatial evaluation taking technical, economic, and environmental considerations into account. This study has applied a combination of PROMETHEE and Fuzzy AHP methods in a geographical information system environment to carry out spatial site selection for wind power plants in Lorestan Province of Iran. The fuzzy analytic hierarchy process method is used to determine the weights of the criteria whereas the PROMETHEE method is used to prioritise the alternatives based on the weights obtained from the fuzzy AHP. The integration of GIS and MCDM makes a powerful tool for the selection of the best suitable sites because GIS provides efficient manipulation, analysis and presentation of spatial data while MCDM supplies consistent weight of alternatives and criteria.The results showed that about 7.38 % of the area of Lorestan province is most suitable for wind power plants development. Sensitivity analysis shows that suitable zones coincide with suitable divisions of the input layers. The sensitivity analysis showed satisfactory results for the combination of PROMETHEE and Fuzzy AHP methods in wind power plant site selection.http://www.eeer.ir/article_75550_65f5e45c3194daf4ba258cad2837af17.pdfEnvironmental PlanningPROMETHEEfuzzy AHPGISWind power plant
collection DOAJ
language English
format Article
sources DOAJ
author Morteza Ghobadi
Masumeh Ahmadipari
spellingShingle Morteza Ghobadi
Masumeh Ahmadipari
Environmental Planning for Wind Power Plant Site Selection using a Fuzzy PROMETHEE-Based Outranking Method in Geographical Information System
Environmental Energy and Economic Research
Environmental Planning
PROMETHEE
fuzzy AHP
GIS
Wind power plant
author_facet Morteza Ghobadi
Masumeh Ahmadipari
author_sort Morteza Ghobadi
title Environmental Planning for Wind Power Plant Site Selection using a Fuzzy PROMETHEE-Based Outranking Method in Geographical Information System
title_short Environmental Planning for Wind Power Plant Site Selection using a Fuzzy PROMETHEE-Based Outranking Method in Geographical Information System
title_full Environmental Planning for Wind Power Plant Site Selection using a Fuzzy PROMETHEE-Based Outranking Method in Geographical Information System
title_fullStr Environmental Planning for Wind Power Plant Site Selection using a Fuzzy PROMETHEE-Based Outranking Method in Geographical Information System
title_full_unstemmed Environmental Planning for Wind Power Plant Site Selection using a Fuzzy PROMETHEE-Based Outranking Method in Geographical Information System
title_sort environmental planning for wind power plant site selection using a fuzzy promethee-based outranking method in geographical information system
publisher Iranian Association for Energy Economics
series Environmental Energy and Economic Research
issn 2538-4988
2676-4997
publishDate 2018-05-01
description Selection of suitable sites for wind power plants is one of the most important decision on wind resources development. Site selection for the establishment of large wind power plants requires spatial evaluation taking technical, economic, and environmental considerations into account. This study has applied a combination of PROMETHEE and Fuzzy AHP methods in a geographical information system environment to carry out spatial site selection for wind power plants in Lorestan Province of Iran. The fuzzy analytic hierarchy process method is used to determine the weights of the criteria whereas the PROMETHEE method is used to prioritise the alternatives based on the weights obtained from the fuzzy AHP. The integration of GIS and MCDM makes a powerful tool for the selection of the best suitable sites because GIS provides efficient manipulation, analysis and presentation of spatial data while MCDM supplies consistent weight of alternatives and criteria.The results showed that about 7.38 % of the area of Lorestan province is most suitable for wind power plants development. Sensitivity analysis shows that suitable zones coincide with suitable divisions of the input layers. The sensitivity analysis showed satisfactory results for the combination of PROMETHEE and Fuzzy AHP methods in wind power plant site selection.
topic Environmental Planning
PROMETHEE
fuzzy AHP
GIS
Wind power plant
url http://www.eeer.ir/article_75550_65f5e45c3194daf4ba258cad2837af17.pdf
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AT masumehahmadipari environmentalplanningforwindpowerplantsiteselectionusingafuzzyprometheebasedoutrankingmethodingeographicalinformationsystem
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