Review
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KESTİRİMCİ BAKIMDA MAKİNE ÖĞRENMESİ: LİTERATÜR ARAŞTIRMASI

Year 2021, Volume: 29 Issue: 2, 256 - 276, 31.08.2021
https://doi.org/10.31796/ogummf.873963

Abstract

Endüstriyel sistemlerdeki makine arızalarını önleyerek üretimde oluşabilecek kesintilerden kaçınmak ve ilgili maliyetleri azaltmak etkin bir bakım yönetimi ile mümkündür. Etkin bakım yönetimi önleyici, düzeltici ve kestirimci bakım stratejilerinin yönetilmesi faaliyetlerini içermektedir. Son yıllarda, bilgisayar ve iletişim teknolojisindeki gelişmelerle kestirimci bakım stratejisi işletmeler için önem kazanmıştır. Kestirimci bakım kapsamında yapay zekâ teknikleri kullanılmaya ve geliştirilmeye başlamıştır. Bu çalışma, makine öğrenmesi (ML - machine learning) algoritmalarına dayalı kestirimci bakım (PdM - predictive maintenance) ile ilgili literatürdeki çalışmaların bir incelemesidir. İncelenen çalışmalar kullanılan makine öğrenmesi algoritmaları ve çalışmaların gerçekleştirildiği endüstri / ekipman kapsamında analiz edilmiştir. Literatürde kestirimci bakımda makine öğrenmesi algoritmalarını kullanan çalışmaları derleyen ve analiz eden bir çalışma bulunmadığından yapılan bu literatür çalışması ilgili konuda çalışacak araştırmacılara yol gösterecektir.

Supporting Institution

TÜBİTAK

Project Number

118C252

Thanks

Bu yayın TÜBİTAK 2232 Uluslararası Lider Araştırmacılar Programından (Proje No 118C252) yararlanılarak oluşturulmuştur. Ancak yayın ile ilgili tüm sorumluluk yayının sahibine aittir. TÜBİTAK’tan alınan maddi destek, yayının içeriğinin bilimsel anlamda TÜBİTAK tarafından onaylandığı anlamına gelmez.

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Year 2021, Volume: 29 Issue: 2, 256 - 276, 31.08.2021
https://doi.org/10.31796/ogummf.873963

Abstract

Project Number

118C252

References

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There are 111 citations in total.

Details

Primary Language Turkish
Subjects Computer Software
Journal Section Review Articles
Authors

Damla Rana Dündar 0000-0002-9286-2817

İnci Sarıçiçek 0000-0002-3528-7342

Eyüp Çinar 0000-0003-3189-7247

Ahmet Yazici 0000-0001-5589-2032

Project Number 118C252
Publication Date August 31, 2021
Acceptance Date June 13, 2021
Published in Issue Year 2021 Volume: 29 Issue: 2

Cite

APA Dündar, D. R., Sarıçiçek, İ., Çinar, E., Yazici, A. (2021). KESTİRİMCİ BAKIMDA MAKİNE ÖĞRENMESİ: LİTERATÜR ARAŞTIRMASI. Eskişehir Osmangazi Üniversitesi Mühendislik Ve Mimarlık Fakültesi Dergisi, 29(2), 256-276. https://doi.org/10.31796/ogummf.873963
AMA Dündar DR, Sarıçiçek İ, Çinar E, Yazici A. KESTİRİMCİ BAKIMDA MAKİNE ÖĞRENMESİ: LİTERATÜR ARAŞTIRMASI. ESOGÜ Müh Mim Fak Derg. August 2021;29(2):256-276. doi:10.31796/ogummf.873963
Chicago Dündar, Damla Rana, İnci Sarıçiçek, Eyüp Çinar, and Ahmet Yazici. “KESTİRİMCİ BAKIMDA MAKİNE ÖĞRENMESİ: LİTERATÜR ARAŞTIRMASI”. Eskişehir Osmangazi Üniversitesi Mühendislik Ve Mimarlık Fakültesi Dergisi 29, no. 2 (August 2021): 256-76. https://doi.org/10.31796/ogummf.873963.
EndNote Dündar DR, Sarıçiçek İ, Çinar E, Yazici A (August 1, 2021) KESTİRİMCİ BAKIMDA MAKİNE ÖĞRENMESİ: LİTERATÜR ARAŞTIRMASI. Eskişehir Osmangazi Üniversitesi Mühendislik ve Mimarlık Fakültesi Dergisi 29 2 256–276.
IEEE D. R. Dündar, İ. Sarıçiçek, E. Çinar, and A. Yazici, “KESTİRİMCİ BAKIMDA MAKİNE ÖĞRENMESİ: LİTERATÜR ARAŞTIRMASI”, ESOGÜ Müh Mim Fak Derg, vol. 29, no. 2, pp. 256–276, 2021, doi: 10.31796/ogummf.873963.
ISNAD Dündar, Damla Rana et al. “KESTİRİMCİ BAKIMDA MAKİNE ÖĞRENMESİ: LİTERATÜR ARAŞTIRMASI”. Eskişehir Osmangazi Üniversitesi Mühendislik ve Mimarlık Fakültesi Dergisi 29/2 (August 2021), 256-276. https://doi.org/10.31796/ogummf.873963.
JAMA Dündar DR, Sarıçiçek İ, Çinar E, Yazici A. KESTİRİMCİ BAKIMDA MAKİNE ÖĞRENMESİ: LİTERATÜR ARAŞTIRMASI. ESOGÜ Müh Mim Fak Derg. 2021;29:256–276.
MLA Dündar, Damla Rana et al. “KESTİRİMCİ BAKIMDA MAKİNE ÖĞRENMESİ: LİTERATÜR ARAŞTIRMASI”. Eskişehir Osmangazi Üniversitesi Mühendislik Ve Mimarlık Fakültesi Dergisi, vol. 29, no. 2, 2021, pp. 256-7, doi:10.31796/ogummf.873963.
Vancouver Dündar DR, Sarıçiçek İ, Çinar E, Yazici A. KESTİRİMCİ BAKIMDA MAKİNE ÖĞRENMESİ: LİTERATÜR ARAŞTIRMASI. ESOGÜ Müh Mim Fak Derg. 2021;29(2):256-7.

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