Validation of machine learning OPC compact models for advanced manufacturing

Author(s):  
Moongyu Jeong ◽  
Marco Guajardo ◽  
Cheng-En Wu ◽  
Song-haeng Lee ◽  
Tim Fuehner ◽  
...  
2021 ◽  
Author(s):  
Gazmend Alia ◽  
Andi Buzo ◽  
Hannes Maier-Flaig ◽  
Klaus-Willi Pieper ◽  
Linus Maurer ◽  
...  

2020 ◽  
Vol 10 (19) ◽  
pp. 6856 ◽  
Author(s):  
Leandro Ruiz ◽  
Manuel Torres ◽  
Alejandro Gómez ◽  
Sebastián Díaz ◽  
José M. González ◽  
...  

The aerospace sector is one of the main economic drivers that strengthens our present, constitutes our future and is a source of competitiveness and innovation with great technological development capacity. In particular, the objective of manufacturers on assembly lines is to automate the entire process by using digital technologies as part of the transition toward Industry 4.0. In advanced manufacturing processes, artificial vision systems are interesting because their performance influences the liability and productivity of manufacturing processes. Therefore, developing and validating accurate, reliable and flexible vision systems in uncontrolled industrial environments is a critical issue. This research deals with the detection and classification of fasteners in a real, uncontrolled environment for an aeronautical manufacturing process, using machine learning techniques based on convolutional neural networks. Our system achieves 98.3% accuracy in a processing time of 0.8 ms per image. The results reveal that the machine learning paradigm based on a neural network in an industrial environment is capable of accurately and reliably estimating mechanical parameters to improve the performance and flexibility of advanced manufacturing processing of large parts with structural responsibility.


Author(s):  
Marina Paolanti ◽  
Emanuele Frontoni ◽  
Adriano Mancini ◽  
Roberto Pierdicca ◽  
Primo Zingaretti

The mix-up is a phenomenon in which a tablet/capsule gets into a different package. It is an annoying problem because mixing different products in the same package could result dangerous for consumers that take the incorrect product or receive an unintended ingredient. So, the consequences could be very dangerous: overdose, interaction with other medications a consumer may be taking, or an allergic reaction. The manufacturers are not able to guarantee the contents of the packages and so for this reason they are very exposed to the risk in which users rightly want to obtain compensation for possible damages caused by the mix-up. The aim of this work is the identification of mix-up events, through machine learning approach based on data, coming from different embedded systems installed in the manufacturing facilities and from the information system, in order to implement integrated policies for data analysis and sensor fusion that leads to waste and detection of pieces that do not comply. In this field, two types of approaches from the point of view of embedded sensors (optical and NIR vision and interferometry) will be analyzed focusing in particular on data processing and their classification on advanced manufacturing scenarios. Results are presented considering a simulated scenario that uses pre-recorded real data to test, in a preliminary stage, the effectiveness and the novelty of the proposed approach.


2021 ◽  
Vol 11 (1) ◽  
Author(s):  
Jianan Tang ◽  
Xiao Geng ◽  
Dongsheng Li ◽  
Yunfeng Shi ◽  
Jianhua Tong ◽  
...  

AbstractPredicting material’s microstructure under new processing conditions is essential in advanced manufacturing and materials science. This is because the material’s microstructure hugely influences the material’s properties. We demonstrate an elegant machine learning algorithm that faithfully predicts the microstructure under new conditions, without the need of knowing the governing laws. We name this algorithm, RCWGAN-GP, which is regression-based conditional generative adversarial networks with Wasserstein loss function and gradient penalty. This algorithm was trained with experimental SEM micrographs from laser-sintered alumina under various laser powers. The RCWGAN-GP realistically regenerates the SEM micrographs under the trained laser powers. Impressively, it also faithfully predicts the alumina’s microstructure under unexplored laser powers. The predicted microstructure features, including the morphology of the sintered particles and the pores, match the experimental SEM micrographs very well. We further quantitatively examined the prediction accuracy of the RCWGAN-GP. We trained the algorithm with computer-created micrograph datasets of secondary-phase growth governed by the well-known Johnson–Mehl–Avrami (JMA) equation. The RCWGAN-GP accurately regenerates the micrographs at the trained time series, in terms of the grains’ shapes, sizes, and spatial distributions. More importantly, the predicted secondary phase fraction accurately follows the JMA curve.


2021 ◽  
Author(s):  
Mohamed Saleh Abouelyazid ◽  
Sherif Hammouda ◽  
Yehea Ismail

2022 ◽  
Vol 305 ◽  
pp. 117846
Author(s):  
Yaman M. Manaserh ◽  
Mohammad I. Tradat ◽  
Dana Bani-Hani ◽  
Aseel Alfallah ◽  
Bahgat G. Sammakia ◽  
...  

2021 ◽  
Vol 1 (2) ◽  
pp. 159-172
Author(s):  
Wei Yu ◽  
Chaoyue Ji ◽  
Xuhao Wan ◽  
Zhaofu Zhang ◽  
John Robertson ◽  
...  

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