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A novel deep learning architecture for multi-source data fusion

05.15.26 | IEEE Chinese Association of Automation

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Recent years have witnessed the unprecedented development of Industrial 4.0 and Industrial Internet of Things. These two technologies have significantly facilitated data collection from different sources for numerous tasks, such as reconstruction, classification, and prediction, for next-generation applications. However, the effective fusion and interpretation of these multi-source datasets remain challenging, making it a thriving area of research.

Currently, canonical correlation analysis (CCA) is considered a fundamental data fusion technique that preserves the essence of the information in correlated representations. Its extension kernel CCA (KCCA) enables the learning of nonlinear representations. However, its performance is significantly reduced on bigger datasets. Addressing these shortcomings, scientists have proposed deep CCA (DCCA) as a flexible alternative that employs the remarkable representation learning capabilities of deep neural networks (DNNs). However, all three CCA-based methods incorporate correlation into the optimization formulation itself, which may detract from the focus on the task. In this regard, the utilization of canonical correlation as an optimization constraint is promising.

Based on this idea, a team of researchers from China, led by Professor Zhiwen Chen from Central South University, has proposed an innovative deep learning architecture called the canonical correlation guided deep neural network (CCDNN) to learn correlated representations for multi-source data fusion. Joining him in this collaboration were Professors Weihua Gui, Zhaohui Jiang, and Chunhua Yang from Central South University; Professor Steven X. Ding from the University of Duisburg-Essen, Germany; and students Mr. Siwen Mo from Central South University and Mr. Haobin Ke at The Hong Kong Polytechnic University, Hong Kong, China. Their novel findings were published in Volume 13, Issue 3 of the IEEE/CAA Journal of Automatica Sinica on April 1, 2026.

Prof. Chen highlights the most important contribution of their study and shares, “Unlike the linear CCA, KCCA, and DCCA, in our proposed method, the optimization formulation is not restricted to maximizing correlation. Instead, we make canonical correlation a constraint, which preserves the correlated representation learning ability and focuses more on the engineering tasks endowed by optimization formulation, such as reconstruction, classification, and prediction. Furthermore, to reduce the redundancy induced by correlation, a redundancy filter with zero learned parameters is designed.”

The team demonstrates CCDNN's data fusion capability through correlated representation learning and excellent performance across diverse engineering tasks. The proposed method demonstrated promising performance when compared to the existing methods. Furthermore, the technique showcased better reconstruction performance in terms of mean squared error (MSE) and mean absolute error (MAE) than DCCA and deep canonically correlated autoencoders in experiments on the MNIST dataset. Specifically, compared to DCCA, MSE and MAE values lowered by 0.43 and 0.42, respectively. Furthermore, the application of CCDNN to industrial fault diagnosis and remaining useful life cases for the classification and prediction tasks accordingly yielded superior performance when compared to existing methods.

“CCDNN can achieve effective data fusion by learning correlated representation via DNNs; hence, how to select appropriate DNNs for a specific engineering task is worth studying. In addition, both views of data are also flexible, which enables CCDNN to deal with multi-source heterogeneous data structures with different industrial applications, for instance, the engineering task of fault diagnosis, in which images give a view, and the other view is given by time-series,” concludes Prof. Chen, highlighting the promising potential of their latest innovation.

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Reference
DOI: 10.1109/JAS.2025.125411

About Central South University, China Central South University (CSU), located in the historical and cultural city of Changsha, Hunan Province, China, spans an area of 3.17 million square meters and is an ideal ground for academic pursuit. The university comprises 33 secondary schools, boasting 3 large Class A tertiary comprehensive hospitals and collaborates with six non-directly affiliated hospitals. CSU has a rich history of over one hundred years as an educational institution and advocates the principles of "Create Knowledge and Serve Society." Pursuing "Virtue, Truth, Perfection, Inclusiveness". CSU has 104 undergraduate programs, with 89 open for enrollment, among which 72 are national first-class ones. The university boasts 115 national first-class undergraduate courses. It has received 39 National Teaching Achievement Awards, 4 National Model Programs of Curriculum-based Ideological and Political Education, and 5 first prizes in national teaching competitions. CSU is committed to aligning its efforts with the major demands of the country and society.
Website: https://en.csu.edu.cn/

About Professor Zhiwen Chen from Central South University, China
Dr. Zhiwen Chen serves as a Professor at the School of Automation, Central South University. Prof. Chen received his bachelor’s degree and master’s degree from Central South University in 2008 and 2012, respectively, and his doctoral degree in Electrical Engineering and Information Technology from the University of Duisburg-Essen, Germany, in 2016. He is currently a member of the Institute of Electrical and Electronics Engineers (IEEE) along with other respected associations. His research interests include model-based and data-driven fault diagnosis and health monitoring, and data analytics. He has published over 70 academic papers in reputed domestic and international journals. Dr. Chen has been honored with the Hunan Provincial Outstanding Young Talent Award, an Innovation-Driven Talent Award from Central South University, the Hunan Provincial Science and Technology Innovation Team Award, the Hunan Provincial Natural Science Award, the Hunan Provincial Postdoctoral Innovation and Entrepreneurship Award, and the Higher Education Teaching Achievement Award from the China Nonferrous Metals Society. He holds over ten national invention patents and has registered five software copyrights to his credit.

About IEEE/CAA Journal of Automatica Sinica
IEEE/CAA Journal of Automatica Sinica is a journal of IEEE and CAA that publishes high-quality papers in English on original theoretical/experimental research and development in all areas of automation, including automatic control, artificial intelligence and intelligent control, systems theory and engineering, pattern recognition and intelligent systems, automation engineering and applications, information processing and information systems, network based automation, robotics, computer-aided technologies for automation systems, sensing and measurement, navigation, guidance, and control, smart city, smart grid, big data and data mining, Internet of Things, cyber-physical systems, blockchain, cloud computing for automation, and mechatronics.
Website: https://www.ieee-jas.net/indexen.htm


Funding information
This work was supported in part by the National Natural Science Foundation of China (62173349), the Natural Science Foundation of Hunan Province (2025JJ10007), the Science and Technology Innovation Program of Hunan Province (2022RC1090), the Natural Science Foundation of Hunan Province (2022JJ20076).

IEEE/CAA Journal of Automatica Sinica

10.1109/JAS.2025.125411

Computational simulation/modeling

Not applicable

CCDNN: A Novel Deep Learning Architecture for Multi-Source Data Fusion

1-Apr-2026

Keywords

Article Information

Contact Information

Professor Zhiwen Chen
Central South University
zhiwen.chen@csu.edu.cn

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How to Cite This Article

APA:
IEEE Chinese Association of Automation. (2026, May 15). A novel deep learning architecture for multi-source data fusion. Brightsurf News. https://www.brightsurf.com/news/LMJR0NEL/a-novel-deep-learning-architecture-for-multi-source-data-fusion.html
MLA:
"A novel deep learning architecture for multi-source data fusion." Brightsurf News, May. 15 2026, https://www.brightsurf.com/news/LMJR0NEL/a-novel-deep-learning-architecture-for-multi-source-data-fusion.html.