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Wave Energy Production and Artificial Intelligence: The Potential of Asia, Europe and Türkiye

Year 2024, Volume: 29 Issue: 2, 798 - 822, 31.08.2024
https://doi.org/10.53433/yyufbed.1445985

Abstract

In recent years, there has been a growing need to reduce our reliance on non-renewable energy sources for a more sustainable world. The use of renewable energy sources is increasing as we move towards cleaner energy options and away from fossil fuels. Wave energy technology is gaining particular attention for generating energy sustainably. Under optimal conditions, wave energy projects have the potential to contribute significantly to a country's well-being. In addition to traditional methods, artificial intelligence techniques are widely used in wave energy technology due to the high costs and labor-intensive nature of experimental field measurements and the preparation of parameters and inputs for numerical methods. One such technique involves artificial neural networks to solve problems in this field. This study examines existing research on water-based energy production in Asia and Europe, evaluates Türkiye’s wave energy potential based on the available literature, and discusses the application of artificial neural networks in wave energy technology and the methods employed in the literature.

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Su Dalga Enerjisi Üretimi ve Yapay Zekâ: Asya, Avrupa ve Türkiye’nin Potansiyeli

Year 2024, Volume: 29 Issue: 2, 798 - 822, 31.08.2024
https://doi.org/10.53433/yyufbed.1445985

Abstract

Son yıllarda, sürdürülebilir bir dünya için yenilenemeyen enerji kaynaklarının kullanımının azaltılması gerekliliği giderek daha belirgin hale gelmektedir. Fosil yakıt tüketiminden, daha temiz bir enerjiye geçiş döneminde, yenilenebilir enerji kaynakları hızla gelişme göstermektedir. Bu gelişmeler ışığında su enerjisi teknolojilerine odak artmaktadır. Enerji potansiyeli için gerekli şartlar karşılandığı sürece; su kaynaklı enerji üretim projelerinin uygulanması ülkelerin refahına katkı sağlama potansiyeli taşımaktadır. Yenilenebilir enerji üretiminde rekabete konu olan su kaynaklı enerji üretimi için; literatürde kıtalar arası enerjinin incelendiği, su potansiyelinin ölçüldüğü, santraller için uygun yer seçiminin yapıldığı, dalga – iklim ilişkisinin incelendiği, okyanus enerjisi teknolojileri konularını içeren çalışmalarda geleneksel teknikler yanı sıra yapay zekâ tekniklerine de yer verilmektedir. Deneysel modelleme saha ölçüm tekniklerinin yüksek maliyetli olduğu, sayısal yöntemlerin parametre ve girdi hazırlık sürecinin zahmetli olması sebebiyle çeşitli yapay zekâ yöntemleri, su kaynaklı enerji üretimi teknolojisinde yoğun şekilde kullanılmaktadır. Yapay sinir ağları da bu alanda karşılaşılan problemlerin çözümünde kullanılan tekniklerden birisi olarak yer almaktadır. Bu derlemede, Asya ve Avrupa kıtasında su kaynaklı enerji üretimi hakkında yapılmış mevcut çalışmalardan bahsedilmekte, Türkiye’nin su enerjisi potansiyelini, mevcut literatür incelenerek ortaya konulmaktadır. Ayrıca yapay zekâ tekniklerinden yapay sinir ağı metodunun su enerjisi teknolojilerinde ne şekilde ve hangi ölçüde kullanıldığı ve kullanılan yöntemlerle ilgili literatüre yer verilmiştir.

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There are 101 citations in total.

Details

Primary Language Turkish
Subjects Ocean Engineering, Renewable Energy Resources
Journal Section Review Articles / Derleme Makaleler
Authors

Selma Kaymaz 0009-0002-6342-871X

Tuğrul Bayraktar 0000-0001-5620-5804

Çağrı Sel 0000-0002-8657-2303

Publication Date August 31, 2024
Submission Date March 2, 2024
Acceptance Date June 4, 2024
Published in Issue Year 2024 Volume: 29 Issue: 2

Cite

APA Kaymaz, S., Bayraktar, T., & Sel, Ç. (2024). Su Dalga Enerjisi Üretimi ve Yapay Zekâ: Asya, Avrupa ve Türkiye’nin Potansiyeli. Yüzüncü Yıl Üniversitesi Fen Bilimleri Enstitüsü Dergisi, 29(2), 798-822. https://doi.org/10.53433/yyufbed.1445985