Yıl: 2020 Cilt: 7 Sayı: 2 Sayfa Aralığı: 906 - 922 Metin Dili: İngilizce DOI: 10.31202/ecjse.679113 İndeks Tarihi: 03-12-2021

Assessment and Application of Deep Learning Algorithms in Civil Engineering

Öz:
: In this study, the applicability of deep learning algorithms in the field of civil engineering has been investigated. Firstly, the information that is about deep learning algorithms has been given. Additionally, deep learning applications, which are made, in subjects such as classification, estimation, and interpretation in the field of civil engineering, have been examined. The applications are elaborated according to civil engineering's sub-branches that transportation, geotechnical and construction. The contributions of the realized applications' in view of success rates to civil engineering that were analyzed. As a result of the study, it is foreseen that in the studies where the number of data is high, high performance will be achieved in the use of deep algorithms.
Anahtar Kelime:

İnşaat Mühendisliğinde Derin Öğrenme Algoritmalarının Değerlendirilmesi ve Uygulanması

Öz:
Bu çalışmada inşaat mühendisliği alanına derin öğrenme algoritmalarının uygulanabilirliği araştırılmıştır. Öncelikle derin öğrenme algoritmaları hakkında bilgiler verilmiştir. Ayrıca inşaat mühendisliği alanında sınıflandırma, tahmin ve yorumlama gibi konularda yapılan derin öğrenme uygulamaları incelenmiştir. Uygulamalar inşaat mühendisliğinin ulaştırma, hidrolik, mekanik, geoteknik ve yapı alt bilim dallarına göre detaylandırılmıştır. Gerçekleştirilen uygulamaların başarı oranları üzerinden inşaat mühendisliğine katkıları analiz edilmiştir. Çalışmanın sonucunda veri sayısının fazla olduğu çalışmalarda derin öğrenme algoritmalarının kullanımında yüksek başarım elde edileceği ön görülmektedir.
Anahtar Kelime:

Belge Türü: Makale Makale Türü: Araştırma Makalesi Erişim Türü: Erişime Açık
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APA Alkan Cakiroglu M, SÜZEN A (2020). Assessment and Application of Deep Learning Algorithms in Civil Engineering. , 906 - 922. 10.31202/ecjse.679113
Chicago Alkan Cakiroglu Melda,SÜZEN Ahmet Ali Assessment and Application of Deep Learning Algorithms in Civil Engineering. (2020): 906 - 922. 10.31202/ecjse.679113
MLA Alkan Cakiroglu Melda,SÜZEN Ahmet Ali Assessment and Application of Deep Learning Algorithms in Civil Engineering. , 2020, ss.906 - 922. 10.31202/ecjse.679113
AMA Alkan Cakiroglu M,SÜZEN A Assessment and Application of Deep Learning Algorithms in Civil Engineering. . 2020; 906 - 922. 10.31202/ecjse.679113
Vancouver Alkan Cakiroglu M,SÜZEN A Assessment and Application of Deep Learning Algorithms in Civil Engineering. . 2020; 906 - 922. 10.31202/ecjse.679113
IEEE Alkan Cakiroglu M,SÜZEN A "Assessment and Application of Deep Learning Algorithms in Civil Engineering." , ss.906 - 922, 2020. 10.31202/ecjse.679113
ISNAD Alkan Cakiroglu, Melda - SÜZEN, Ahmet Ali. "Assessment and Application of Deep Learning Algorithms in Civil Engineering". (2020), 906-922. https://doi.org/10.31202/ecjse.679113
APA Alkan Cakiroglu M, SÜZEN A (2020). Assessment and Application of Deep Learning Algorithms in Civil Engineering. El-Cezerî Journal of Science and Engineering, 7(2), 906 - 922. 10.31202/ecjse.679113
Chicago Alkan Cakiroglu Melda,SÜZEN Ahmet Ali Assessment and Application of Deep Learning Algorithms in Civil Engineering. El-Cezerî Journal of Science and Engineering 7, no.2 (2020): 906 - 922. 10.31202/ecjse.679113
MLA Alkan Cakiroglu Melda,SÜZEN Ahmet Ali Assessment and Application of Deep Learning Algorithms in Civil Engineering. El-Cezerî Journal of Science and Engineering, vol.7, no.2, 2020, ss.906 - 922. 10.31202/ecjse.679113
AMA Alkan Cakiroglu M,SÜZEN A Assessment and Application of Deep Learning Algorithms in Civil Engineering. El-Cezerî Journal of Science and Engineering. 2020; 7(2): 906 - 922. 10.31202/ecjse.679113
Vancouver Alkan Cakiroglu M,SÜZEN A Assessment and Application of Deep Learning Algorithms in Civil Engineering. El-Cezerî Journal of Science and Engineering. 2020; 7(2): 906 - 922. 10.31202/ecjse.679113
IEEE Alkan Cakiroglu M,SÜZEN A "Assessment and Application of Deep Learning Algorithms in Civil Engineering." El-Cezerî Journal of Science and Engineering, 7, ss.906 - 922, 2020. 10.31202/ecjse.679113
ISNAD Alkan Cakiroglu, Melda - SÜZEN, Ahmet Ali. "Assessment and Application of Deep Learning Algorithms in Civil Engineering". El-Cezerî Journal of Science and Engineering 7/2 (2020), 906-922. https://doi.org/10.31202/ecjse.679113