Title
An Incremental Deep Convolutional Computation Model for Feature Learning on Industrial Big Data
Abstract
The deep convolutional computation model (DCCM) enabled remarkable progress in feature learning of industrial big data in Internet of Things. However, as a typical static deep learning model, it is difficult to learn features for incremental industrial big data. To solve this problem, we propose an incremental DCCM by developing two incremental algorithms, i.e., parameter-incremental algorithm and structure-incremental algorithm. The parameter-incremental algorithm aims to incrementally train the fully connected layers together with fine tuning for incorporating the new knowledge into the prior one. Then, the structure-incremental algorithm is used to transfer the previous knowledge by introducing an updating rule of the tensor convolutional, pooling, and fully connected layers. Furthermore, the dropout strategy is extended into the tensor fully connected layer to improve the robustness of the proposed model. Finally, extensive experiments are carried out on the representative datasets including CIFRA and CUAVE to justify the proposed model in terms of adaption, preservation, and convergence efficiency.
Year
DOI
Venue
2019
10.1109/TII.2018.2871084
IEEE Transactions on Industrial Informatics
Keywords
Field
DocType
Tensile stress,Computational modeling,Data models,Big Data,Adaptation models,Training,Heuristic algorithms
Convergence (routing),Data modeling,Computer science,Pooling,Robustness (computer science),Real-time computing,Artificial intelligence,Deep learning,Big data,Feature learning,Machine learning,Computation
Journal
Volume
Issue
ISSN
15
3
1551-3203
Citations 
PageRank 
References 
3
0.40
0
Authors
6
Name
Order
Citations
PageRank
P. Li121428.84
Zhikui Chen269266.76
Laurence T. Yang36870682.61
Jing Gao4216.58
Qingchen Zhang537219.17
M Jamal Deen652476.75