Applications of deep learning for fault detection in industrial cold forging
Year of publication: |
2021
|
---|---|
Authors: | Glaeser, Andrew ; Selvaraj, Vignesh ; Lee, Sooyoung ; Hwang, Yunseob ; Lee, Kangsan ; Lee, Namjeong ; Lee, Seungchul ; Min, Sangkee |
Subject: | cold forging | convolutional neural network | deep learning | process monitoring | Smart manufacturing | Neuronale Netze | Neural networks | Künstliche Intelligenz | Artificial intelligence | Lernprozess | Learning process | Industrie | Manufacturing industries |
-
Integrated explainable deep learning prediction of harmful algal blooms
Lee, Donghyun, (2022)
-
A deep learning approach for assessing stress levels in patients using electroencephalogram signals
Bhatnagar, Shaleen, (2023)
-
Qin, Xifeng, (2023)
- More ...
-
Anatomy of the trade collapse recovery and slowdown : evidence from Korea
Lee, Sooyoung, (2017)
-
Too much is too bad : the effect of media coverage on the price volatility of cryptocurrencies
Lee, Kangsan, (2023)
-
Too Much is Too Bad : The Effect of Media Coverage on the Price Volatility of Cryptocurrencies
Lee, Kangsan, (2023)
- More ...