4.7 Article

Soft sensing of non-Gaussian processes using ensemble modified independent component regression

期刊

出版社

ELSEVIER SCIENCE BV
DOI: 10.1016/j.chemolab.2016.07.006

关键词

Modified independent component analysis; Soft sensor; Ensemble learning; Quality prediction

资金

  1. K. C. Wong Magna Fund in Ningbo University
  2. Natural Science Foundation of China [61503204]
  3. Natural Science Foundation of Zhejiang Province [Y16F030001]
  4. Science & Technology Planning Project of Zhejiang Province [201501017]

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The modified independent component analysis (MICA) has been proposed to tackle some shortcomings which existed in the original ICA iterative procedures and has found wide applications in non-Gaussian data modeling. Motivated by the success of MICA, the modified independent component regression (MICR) method for predicting quality properties of non-Gaussian processes keeps drawing attention within the soft sensing circle. However, the determination logic for non-quadratic functions involved in the iterative procedures of MICA algorithm has always been empirical. Without enough prior knowledge, no theoretical investigation can be carried out to conclusively prove which non-quadratic function is optimal for improving the precision of regression models. The selection of non-quadratic functions is still a challenge that has rarely been attempted. Recognition of this issue activates the current study, which proposes a novel soft sensing approach through taking advantage of ensemble learning strategy. Instead of focusing on a single non-quadratic function, the proposed ensemble MICR (EMICR) method takes all three non-quadratic functions into account and combines multiple base MICR models into an ensemble through assigning different weights. The enhanced soft sensing performance is validated through case studies on three non-Gaussian systems. (C) 2016 Elsevier B.V. All rights reserved.

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