Yeniden İşlevlendirmede Teknolojilerin Geliştirilmesi: Yapay Zeka Destekli Sistemler

Yazarlar

DOI:

https://doi.org/10.53463/ecopers.20240278

Anahtar Kelimeler:

Yeniden İşlevlendirme- Yapay Zeka (AI)- Makine Öğrenimi (ML)- Endüstriyel Miras- Sürdürülebilir Kentsel Gelişim

Özet

Yeniden işlevlendirme, tarihi binaların sürdürülebilir kentsel gelişimi için önemli bir rol oynamaktadır. Bu yaklaşım, kültürel mirasın korunmasını, çevresel etkilerin azaltılmasını ve çağdaş ihtiyaçların karşılanmasını mümkün kılmaktadır. Bu çalışma, yapay zeka (AI), makine öğrenimi (ML) ve karar ağaçları gibi ileri teknolojilerin yeniden işlevlendirme sürecine nasıl entegre edilebileceğini incelemektedir. Bu teknolojilerin karar alma süreçlerini iyileştirme, tasarım çözümlerini geliştirme ve sürdürülebilir yönetimi destekleme konusundaki potansiyelleri vurgulanmaktadır. Çalışmanın temel amacı, yapay zekâ ve makine öğrenimi gibi teknolojilerin, tarihi binaların yeniden işlevlendirilmesinde sürecin iyileştirebileceğini ve kentsel gelişimde sürdürülebilirliği üzerine etkileri araştırmaktır. Bulgular, bu teknolojilerin mimarlık, koruma ve inşaat kavramlarında önemli dönüşümler yaratma potansiyeline sahip olduğunu ve miras ile yenilik arasında denge sağlamak için bilinçli ve etik bir şekilde uygulanması gerektiğini ortaya koymaktadır.

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Yayınlanmış

2024-12-23

Nasıl Atıf Yapılır

Akyol, G., & Şimşek, S. (2024). Yeniden İşlevlendirmede Teknolojilerin Geliştirilmesi: Yapay Zeka Destekli Sistemler. Ecological Perspective, 4(1), 1–16. https://doi.org/10.53463/ecopers.20240278

Sayı

Bölüm

Araştırma Makalesi