Wireless Communications and Mobile Computing

Deep and Transfer Learning Approaches for Complex Data Analysis in the Industry 4.0 Era


Publishing date
01 Dec 2021
Status
Closed
Submission deadline
16 Jul 2021

Lead Editor

1Nantong University, Nantong, China

2Changshu Institute of Technology, Changshu, China

3University of Malaya, Kuala Lumpur, Malaysia

4Jiangnan University, Wuxi, China

This issue is now closed for submissions.

Deep and Transfer Learning Approaches for Complex Data Analysis in the Industry 4.0 Era

This issue is now closed for submissions.

Description

With the rapid development of information and communications technology, intelligent networking of machines, and processes for the industry has been created. Industry 4.0 is the current trend of data exchange, and automation in industry technologies. Technologies utilise existing data, and several other data sources. Collecting data from connected assets, transforming existing manufacturing processes, and gaining efficiency on multiple levels, make the industry 4.0 era possible. Finding the insights of complex data makes related industries more intelligent, more efficient and more customer-focused. It also helps create the smart industry, and detect new industry models.

Although deep learning can learn enough mapping patterns from input-output relationships, complex data analysis still comes with many challenges. The most important challenge is how to improve the generalization ability of a model when encountering different complex situations. Industry 4.0 era is full of scenarios that are not covered by an infinite number of datasets hence why we cannot train the model to predict well in all of them. Recently, rapid advancements in deep & transfer learning approaches have revolutionised a large number of areas of machine learning and data science. The main highlight of deep and transfer learning is it can learn enough knowledge representation from complex data, and it can also transfer the knowledge learned from the finite datasets in scenarios that are not covered.

The aim of this Special Issue is to collate original research articles, as well as review articles, discussing the ever-increasing challenges of complex data such as Internet of Things (IoT) network data, real-time data, industrial chain data, product data, etc. We also hope that this Special Issue inspires further exploitation and development of deep, and transfer learning approaches for complex data analysis in the industry 4.0 era. Submissions focusing on the recent advancements of complex data via deep, and transfer learning methods within the industry 4.0 era are particularly encouraged.

Potential topics include but are not limited to the following:

  • Novel theories in deep and transfer learning
  • Representation learning for complex data analysis in the industry 4.0 era
  • Online deep and transfer learning frameworks for real-time data analysis in the industry 4.0 era
  • Explainable deep and transfer learning models for complex data analysis in the industry 4.0 era
  • Multi-view, and multi-task deep and transfer models for complex data analysis in the industry 4.0 era
  • Manifold-based deep and transfer models for complex data analysis in the industry 4.0 era
  • High-efficiency deep and transfer models for big data analysis in the industry 4.0 era

Articles

  • Special Issue
  • - Volume 2021
  • - Article ID 1865538
  • - Research Article

Computer Vision-Driven Evaluation System for Assisted Decision-Making in Sports Training

Lijin Zhu
  • Special Issue
  • - Volume 2021
  • - Article ID 5828129
  • - Research Article

Application of Flipped Classroom Model Driven by Big Data and Neural Network in Oral English Teaching

Yujun Zeng
  • Special Issue
  • - Volume 2021
  • - Article ID 2675786
  • - Research Article

A Study on the Application of Interactive English-Teaching Mode under Complex Data Analysis

Dongyang Xu | Sang-Bing Tsai
  • Special Issue
  • - Volume 2021
  • - Article ID 2148905
  • - Research Article

Flipped Classroom for Motor Skills: What Factors Influence College Students’ Learning Effect?

Fengyan Zhang | Baojuan Ma | Wengang Ren
  • Special Issue
  • - Volume 2021
  • - Article ID 2602385
  • - Research Article

An Improved Genetic Algorithm and Neural Network-Based Evaluation Model of Classroom Teaching Quality in Colleges and Universities

Huaying Zhang | Bin Xiao | ... | Min Hou
  • Special Issue
  • - Volume 2021
  • - Article ID 1929077
  • - Research Article

Convolutional Neural Network-Assisted Strategies for Improving Teaching Quality of College English Flipped Class

Tiankun Liu
  • Special Issue
  • - Volume 2021
  • - Article ID 4132016
  • - Research Article

Partial Color Photo Processing Method for Components Based on Image Enhancement Technology

Hao Wu | Zhi Zhou
  • Special Issue
  • - Volume 2021
  • - Article ID 4936873
  • - Research Article

An Adaptive BP Neural Network Model for Teaching Quality Evaluation in Colleges and Universities

Yong Jin | Yiwen Yang | ... | Yunfu Zhang
  • Special Issue
  • - Volume 2021
  • - Article ID 1520859
  • - Research Article

Research on the Station Layout Method of Ground-Based Pseudolite Positioning System Based on NSGA-II Algorithm

Li Yang | Kaiyuan Yang | Danshi Sun
  • Special Issue
  • - Volume 2021
  • - Article ID 1909345
  • - Research Article

Cloud Education Chain and Education Quality Evaluation Based on Hybrid Quantum Neural Network Algorithm

Hong-Xia Liu | Yong-Heng Zhang | Sang-Bing Tsai
Wireless Communications and Mobile Computing
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