A Survey on Deep Learning for Data-Driven Soft Sensors | IEEE Journals & Magazine | IEEE Xplore

A Survey on Deep Learning for Data-Driven Soft Sensors


Abstract:

Soft sensors are widely constructed in process industry to realize process monitoring, quality prediction, and many other important applications. With the development of ...Show More

Abstract:

Soft sensors are widely constructed in process industry to realize process monitoring, quality prediction, and many other important applications. With the development of hardware and software, industrial processes have embraced new characteristics, which lead to the poor performance of traditional soft sensor modeling methods. Deep learning, as a kind of data-driven approach, shows its great potential in many fields, as well as in soft sensing scenarios. After a period of development, especially in the last five years, many new issues have emerged that need to be investigated. Therefore, in this article, the necessity and significance of deep learning for soft sensor applications are demonstrated first by analyzing the merits of deep learning and the trends of industrial processes. Next, mainstream deep learning models, tricks, and frameworks/toolkits are summarized and discussed to help designers propel the developing progress of soft sensors. Then, existing works are reviewed and analyzed to discuss the demands and problems occurred in practical applications. Finally, outlook and conclusions are given.
Published in: IEEE Transactions on Industrial Informatics ( Volume: 17, Issue: 9, September 2021)
Page(s): 5853 - 5866
Date of Publication: 20 January 2021

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