An improved extreme learning machine integrated with nonlinear principal components and its application to modeling complex chemical processes

Qun Xiong Zhu, Xiao Wang, Yan Lin He, Yuan Xu

Research output: Contribution to journalArticlepeer-review

14 Citations (Scopus)

Abstract

In order to enhance the performance of extreme learning machine (ELM) in modeling complex chemical processes, an improved ELM integrated with nonlinear principal components is proposed. Firstly, an improved ELM (IELM) model is presented. The IELM has a special structure with two independent input subnets: a positive correlation subnet and a negative correlation subnet. The two independent input subnets are developed based on the correlation coefficient between input attributes and output attributes. The nonlinear principal components of original input attributes are extracted using input training neural network (ITNN). The extracted nonlinear principal components are connected to output layer nodes. Thus, the output nodes not only connect with the positive correlation subnet and the negative correlation subnet, but also with the extracted nonlinear principal components. Thus, an IELM integrated with nonlinear principal components (NPCs-IELM) model can be built. The effectiveness of the proposed NPCs-IELM is verified by modeling a high density polyethylene process. Simulation results indicate that the proposed NPCs-IELM can achieve higher accuracy and better stability.

Original languageEnglish
Pages (from-to)745-753
Number of pages9
JournalApplied Thermal Engineering
Volume130
DOIs
Publication statusPublished - 5 Feb 2018
Externally publishedYes

Keywords

  • Chemical processes
  • Correlation coefficient analysis
  • Extreme learning machine
  • Input training neural network
  • Modeling

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