Journal of System Simulation
Abstract
Abstract: Chemical processes are often characterized by nonlinearity and multi-phase, a soft sensor model based on the hierarchical ensemble of Gaussian process regression is proposed. First, the Gaussian mixture model is used to divide the process data into different operation phases. Then, the principal component analysis of each stage is carried out, and the model data are divided into several subspaces, according to the contribution of each auxiliary variable in the principal component space, and the corresponding Gaussian process regression model is built. The subspace model output is fused by means to obtain the first level ensemble output. Finally, the posterior probability is used to fuse the model local prediction to obtain the second level ensemble output. The validity of the proposed method is verified by the experimental simulation of industrial data.
Recommended Citation
Shuai, Zhao; Shi, Xudong; and Xiong, Weili
(2019)
"A Hierarchical Integrated Soft Sensing Modeling Method for Gauss Process Regression,"
Journal of System Simulation: Vol. 31:
Iss.
10, Article 9.
DOI: 10.16182/j.issn1004731x.joss.17-0374
Available at:
https://dc-china-simulation.researchcommons.org/journal/vol31/iss10/9
First Page
2042
Revised Date
2017-08-28
DOI Link
https://doi.org/10.16182/j.issn1004731x.joss.17-0374
Last Page
2051
CLC
TP274
Recommended Citation
Zhao Shuai, Shi Xudong, Xiong Weili. A Hierarchical Integrated Soft Sensing Modeling Method for Gauss Process Regression[J]. Journal of System Simulation, 2019, 31(10): 2042-2051.
DOI
10.16182/j.issn1004731x.joss.17-0374
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