A concise peephole model based transfer learning method for small sample temporal feature-based data-driven quality analysis

2020 ◽  
Vol 195 ◽  
pp. 105665
Author(s):  
Wentao Luo ◽  
Jianfu Zhang ◽  
Pingfa Feng ◽  
Dingwen Yu ◽  
Zhijun Wu
NeuroImage ◽  
2016 ◽  
Vol 134 ◽  
pp. 494-507 ◽  
Author(s):  
Armin Iraji ◽  
Vince D. Calhoun ◽  
Natalie M. Wiseman ◽  
Esmaeil Davoodi-Bojd ◽  
Mohammad R.N. Avanaki ◽  
...  

2020 ◽  
Author(s):  
T. Van de Poll ◽  
E. Barros ◽  
W. Langenkamp ◽  
R. Fonseca

2021 ◽  
pp. 1-15
Author(s):  
Wentao Luo ◽  
Pingfa Feng ◽  
Jianfu Zhang ◽  
Dingwen Yu ◽  
Zhijun Wu

As the service life of the assembly equipment are short, the tightening data it produces are very limited. Therefore, data-driven assembly quality diagnosis is still a challenge task in industries. Transfer learning can be used to address small data problems. However, transfer learning has strict requirements on the training dataset, which is hard to satisfy. To solve the above problem, an Improved Deep Convolution Generative Adversarial Transfer Learning Model (IDCGAN-TM) is proposed, which integrates three modules: The generative learning module automatically produces source datasets based on small target datasets by using the improved generative-adversarial theory. The feature learning module improves the feature extraction ability by building a lightweight deep learning model (DL). The transfer learning module consists of a pre-trained DL and a one fully connected layer to better perform the intelligent quality diagnosis on the training small sample data. A parallel computing method is adopted to obtain produced source data efficiently. Real assembly quality diagnosis cases are designed and discussed to validate the advance of the proposed model. In addition, the comparison experiments are designed to show that the proposed approach holds the better transfer diagnosis performance compared with the existing three state-of-art approaches.


2022 ◽  
Vol 74 ◽  
pp. 374-382
Author(s):  
Zhihang Li ◽  
Qian Tang ◽  
Sibao Wang ◽  
Penghui Zhang

2020 ◽  
Vol 1631 ◽  
pp. 012072
Author(s):  
Xin Zheng ◽  
Luyue Lin ◽  
Shouzhi Liang ◽  
Bo Rao ◽  
Ruidian Zhan

Sensors ◽  
2021 ◽  
Vol 21 (6) ◽  
pp. 2085
Author(s):  
Xue-Bo Jin ◽  
Ruben Jonhson Robert RobertJeremiah ◽  
Ting-Li Su ◽  
Yu-Ting Bai ◽  
Jian-Lei Kong

State estimation is widely used in various automated systems, including IoT systems, unmanned systems, robots, etc. In traditional state estimation, measurement data are instantaneous and processed in real time. With modern systems’ development, sensors can obtain more and more signals and store them. Therefore, how to use these measurement big data to improve the performance of state estimation has become a hot research issue in this field. This paper reviews the development of state estimation and future development trends. First, we review the model-based state estimation methods, including the Kalman filter, such as the extended Kalman filter (EKF), unscented Kalman filter (UKF), cubature Kalman filter (CKF), etc. Particle filters and Gaussian mixture filters that can handle mixed Gaussian noise are discussed, too. These methods have high requirements for models, while it is not easy to obtain accurate system models in practice. The emergence of robust filters, the interacting multiple model (IMM), and adaptive filters are also mentioned here. Secondly, the current research status of data-driven state estimation methods is introduced based on network learning. Finally, the main research results for hybrid filters obtained in recent years are summarized and discussed, which combine model-based methods and data-driven methods. This paper is based on state estimation research results and provides a more detailed overview of model-driven, data-driven, and hybrid-driven approaches. The main algorithm of each method is provided so that beginners can have a clearer understanding. Additionally, it discusses the future development trends for researchers in state estimation.


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