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Assessment and prioritization of renewable energy alternatives to achieve sustainable development goals in Türkiye: Based on fuzzy AHP approach

Year 2024, Volume: 9 Issue: 4, 809 - 847, 25.12.2024
https://doi.org/10.58559/ijes.1494256

Abstract

The aim of this study is to prioritize renewable energy sources to achieve sustainable development in Türkiye by using fuzzy AHP method. In our study, we used 30 criteria that affect the investment in renewable energy sources. We also calculated the weights of these criteria in investment decisions. In addition, we analyzed the advantageous renewable energy sources according to each criterion. Thus, it was determined which renewable energy source is advantageous according to which criteria. The results show that the most important main criteria for renewable energy investments in Türkiye are economic, political, technical, environmental and social criteria, respectively. The most appropriate renewable energy sources according to economic, political, technical and social criteria are solar, wind, hydroelectric,
biomass and geothermal respectively.

References

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Year 2024, Volume: 9 Issue: 4, 809 - 847, 25.12.2024
https://doi.org/10.58559/ijes.1494256

Abstract

References

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  • [23] Şengül Ü, Eren M, Shiraz SE, Gezder V, Şengül AB. Fuzzy TOPSIS method for ranking renewable energy supply systems in Turkey. Renewable Energy 2015; 75(1): 617-625.
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  • [32] Büyüközkan G, Karabulut Y, Güler M. Strategic Renewable Energy Source Selection for Turkey with Hesitant Fuzzy MCDM Method. In: Kahraman C, Kayakutlu G, editors. Energy Management—Collective and Computational Intelligence with Theory and Applications, vol. 149. Cham: Springer International Publishing; 2018. p. 229-250.
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  • [39] Solangi YA, Tan Q, Mirjat NH, Valasai GD, Khan MWA, Ikram M. Analyzing renewable energy sources of a developing country for sustainable development: An integrated fuzzy based decision methodology. Processes 2020; 8(7): 825.
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There are 88 citations in total.

Details

Primary Language English
Subjects Political Science (Other)
Journal Section Research Article
Authors

Emre Akusta 0000-0002-6147-5443

Raif Cergibozan 0000-0001-7557-5309

Publication Date December 25, 2024
Submission Date June 1, 2024
Acceptance Date November 1, 2024
Published in Issue Year 2024 Volume: 9 Issue: 4

Cite

APA Akusta, E., & Cergibozan, R. (2024). Assessment and prioritization of renewable energy alternatives to achieve sustainable development goals in Türkiye: Based on fuzzy AHP approach. International Journal of Energy Studies, 9(4), 809-847. https://doi.org/10.58559/ijes.1494256
AMA Akusta E, Cergibozan R. Assessment and prioritization of renewable energy alternatives to achieve sustainable development goals in Türkiye: Based on fuzzy AHP approach. Int J Energy Studies. December 2024;9(4):809-847. doi:10.58559/ijes.1494256
Chicago Akusta, Emre, and Raif Cergibozan. “Assessment and Prioritization of Renewable Energy Alternatives to Achieve Sustainable Development Goals in Türkiye: Based on Fuzzy AHP Approach”. International Journal of Energy Studies 9, no. 4 (December 2024): 809-47. https://doi.org/10.58559/ijes.1494256.
EndNote Akusta E, Cergibozan R (December 1, 2024) Assessment and prioritization of renewable energy alternatives to achieve sustainable development goals in Türkiye: Based on fuzzy AHP approach. International Journal of Energy Studies 9 4 809–847.
IEEE E. Akusta and R. Cergibozan, “Assessment and prioritization of renewable energy alternatives to achieve sustainable development goals in Türkiye: Based on fuzzy AHP approach”, Int J Energy Studies, vol. 9, no. 4, pp. 809–847, 2024, doi: 10.58559/ijes.1494256.
ISNAD Akusta, Emre - Cergibozan, Raif. “Assessment and Prioritization of Renewable Energy Alternatives to Achieve Sustainable Development Goals in Türkiye: Based on Fuzzy AHP Approach”. International Journal of Energy Studies 9/4 (December 2024), 809-847. https://doi.org/10.58559/ijes.1494256.
JAMA Akusta E, Cergibozan R. Assessment and prioritization of renewable energy alternatives to achieve sustainable development goals in Türkiye: Based on fuzzy AHP approach. Int J Energy Studies. 2024;9:809–847.
MLA Akusta, Emre and Raif Cergibozan. “Assessment and Prioritization of Renewable Energy Alternatives to Achieve Sustainable Development Goals in Türkiye: Based on Fuzzy AHP Approach”. International Journal of Energy Studies, vol. 9, no. 4, 2024, pp. 809-47, doi:10.58559/ijes.1494256.
Vancouver Akusta E, Cergibozan R. Assessment and prioritization of renewable energy alternatives to achieve sustainable development goals in Türkiye: Based on fuzzy AHP approach. Int J Energy Studies. 2024;9(4):809-47.