Abstract

Data-driven quality monitoring is highly demanded in practice since it enables relieving manual quality inspection of the product quality. Conventional data-driven quality monitoring is constrained by its offline characteristic thus being unable to handle streaming nature of sensory data and nonstationary environments of machine operations. Recently, there have been pioneering works of online quality monitoring taking advantage of online learning concepts in the literature, but it is still far from realization of minimum operator intervention in the quality monitoring because it calls for full supervision in labelling data samples. This paper proposes Parsimonious Network++ (ParsNet++) as an online semisupervised learning approach being able to handle extreme label scarcity in the quality monitoring task. That is, it is capable of coping with varieties of semisupervised learning conditions including random access of ground truth and infinitely delayed access of ground truth. ParsNet++ features the one-pass learning approach to deal with streaming data while characterizing elastic structure to overcome rapidly changing data distributions. That is, it is capable of initiating its learning structure from scratch with the absence of a predefined network structure where its hidden nodes can be added and discarded on the fly in respect to drifting data distributions. Furthermore, it is equipped by a feature extraction layer in terms of 1D convolutional layer extracting natural features of multivariate time-series data samples of sensors and coping well with the many-to-one label relationship, a common problem of practical quality monitoring. Rigorous numerical evaluation has been carried out using the injection molding machine and the industrial transfer molding machine from our own projects. ParsNet++ delivers highly competitive performance even compared to fully supervised competitors.

Highlights

  • It is evident that Parsimonious Network (ParsNet)++ outperforms ParsNet with significant gap. is finding clearly encourages the 1D CNN of ParsNet++ automatically extracting deep natural features and the autonomous clustering mechanism (ACM) technique for estimation of probability density function

  • ParsNet++ is compared with ResNet18 and VGG11 making use of image data and being popular deep learning approaches

  • The two approaches are an offline algorithm trained in the offline fashion and are fully supervised, ParsNet++ exhibits superior performances. at is, ParsNet++ exceeds VGG11 and ResNet18 with noticeable difference. is result is confirmed with the statistical test in Table 4 where the performance gap between ParsNet++ against all algorithms is statistically significant

Read more

Summary

Introduction

An online semisupervised deep neural network, namely, Parsimonious Network++ (ParsNet++), is proposed to undertake real-time learning under scarcity of labelled samples for online quality monitoring in the injection molding process [16] and in the industrial transfer molding process. ParsNet++ is capable of starting its learning process from scratch with no predefined structure while its hidden node is automatically grown and pruned from data streams to overcome the concept drift. E probability density function p(x) produced by ACM is fed to the structural learning phase of ParsNet++ where the generative learning phase is carried out first to condition the network structure with the absence of true class label.

Results
Conclusion
Full Text
Paper version not known

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call