4.5 Article

Data-driven soft sensor development based on deep learning technique

Journal

JOURNAL OF PROCESS CONTROL
Volume 24, Issue 3, Pages 223-233

Publisher

ELSEVIER SCI LTD
DOI: 10.1016/j.jprocont.2014.01.012

Keywords

Deep neural network; Nonlinear regression; Soft sensor; Data-driven technique

Funding

  1. National Basic Research Program of China [2012CB720505]
  2. National Natural Science Foundation of China [21276137]
  3. Tsinghua University Initiative Scientific Research Program

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In industrial process control, some product qualities and key variables are always difficult to measure online due to technical or economic limitations. As an effective solution, data-driven soft sensors provide stable and reliable online estimation of these variables based on historical measurements of easy-to-measure process variables. Deep learning, as a novel training strategy for deep neural networks, has recently become a popular data-driven approach in the area of machine learning. In the present study, the deep learning technique is employed to build soft sensors and applied to an industrial case to estimate the heavy diesel 95% cut point of a crude distillation unit (CDU). The comparison of modeling results demonstrates that the deep learning technique is especially suitable for soft sensor modeling because of the following advantages over traditional methods. First, with a complex multi-layer structure, the deep neural network is able to contain richer information and yield improved representation ability compared with traditional data-driven models. Second, deep neural networks are established as latent variable models that help to describe highly correlated process variables. Third, the deep learning is semi-supervised so that all available process data can be utilized. Fourth, the deep learning technique is particularly efficient dealing with massive data in practice. (C) 2014 Elsevier Ltd. All rights reserved.

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