Anda belum login :: 21 Oct 2025 21:45 WIB
Home
|
Logon
Hidden
»
Administration
»
Collection Detail
Detail
A Review on Machine Learning Techniques for Predictive Maintenance in Industry 4.0
Bibliografi
Author:
Sisode, Megha
;
Devare, Manoj
Topik:
Machine learning
;
predictive maintenance
;
manufacturing equipment
;
Industry 4.0
;
failure prediction
Bahasa:
(EN )
Edisi:
ICAMIDA 2022, ACSR 105
Penerbit:
Atlantis Press
Tahun Terbit:
2023
Jenis:
Article - diterbitkan di jurnal ilmiah internasional
Fulltext:
Predictive Maintenance in Industry 4.0.pdf
(552.97KB;
0 download
)
Abstract
Predictive maintenance is the process of continuously monitoring a system to prevent it from breaking down. Along with the traditional equipment maintenance which uses a periodic schedule instead of reacting to equipment failures, predictive maintenance predicts failure of an equipment. Adopting a suitable and reliable predictive maintenance strategy for equipment like automobile part manufacturing machines has remained a dif?culty for industry. To minimize the unplanned downtime of a machine caused by its failure in highly automated production line is very challenging piece of predictive maintenance. Recently the Industry 4.0 concept is becoming more widely adopted in manufacturing around the world. The survey emphases on different methods available for predictive maintenance and the various data used in the researches. Machine learning promises the better solutions over the traditional maintenance problem. In this research, intelligent approach is presented which is to be used to design proposed PdM planning model. To predict the failure state with respect to down time a weight optimized GRU model is proposed. And Whale Optimization with Seagull Algorithm has to be used to optimize the weight in GRU based learning. Thus the results are wellsuited for PdM planning and capable of accurately predicting future components for Mechanical part making machine.
Opini Anda
Klik untuk menuliskan opini Anda tentang koleksi ini!
Lihat Sejarah Pengadaan
Konversi Metadata
Kembali
Process time: 0.09375 second(s)