Curl forecasting for paper quality in papermaking industry

Feifei Wang,S. Sanguansintukul,C. Lursinsap

Published 2008 in 2008 Asia Simulation Conference - 7th International Conference on System Simulation and Scientific Computing

ABSTRACT

This paper presents a quality-forecasting model based on neural network for the paper making industry with different source data transaction processes. The paper quality test and control plays an essential role in the paper making industry, which affects the whole operation process and the future paper market. Compared with other paper quality indexes, paper curl is closer to terminal clients and more difficult to pretest and control in the actual working environment. Large-scale data from production database, which would potentially affect final paper quality, have been cleansed and abstracted. Modeling based on MLP neural network was designed to compare between Quasi-Newton algorithm and Double Dogleg with early stopping regularization in different source data sets. With bootstrap accuracy estimation, the final result has been evolved which would annotate the relationship between workflow data and paper curvature in a more constructive way.

PUBLICATION RECORD

  • Publication year

    2008

  • Venue

    2008 Asia Simulation Conference - 7th International Conference on System Simulation and Scientific Computing

  • Publication date

    2008-11-17

  • Fields of study

    Computer Science, Engineering

  • Identifiers
  • External record

    Open on Semantic Scholar

  • Source metadata

    Semantic Scholar

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