Zi`ang Xia, Long Wang, Chaojie Li, Xue Li, Jingxue Yang, Baoming Xu, Na Wang, Yao Li, Heng Zhang
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Quantitative study of thermal barrier models for paper-based barrier materials using adaptive neuro-fuzzy inference system
A composite silicone emulsion-biomass polymer paper-based barrier coating material with high barrier performance was prepared by double-layer coating, and the material was tested for oil repellency. The composition-structure-property data set of the paper-based barrier materials was constructed based on the experimental data. An adaptive neuro-fuzzy inference system (ANFIS) was used to construct a prediction model of the coating structure in high-temperature environments to achieve quantitative analysis of the barrier performance in high-temperature environments. The ANFIS prediction model was constructed based on two algorithms, the grid partitioning algorithm and the subtractive clustering algorithm, and the accuracy of the model determined by the two algorithms was compared for training, validation and testing of this experimental data. The results showed that the prediction model of the grid partitioning method had a better fit with the experimental data, with a root mean square error (RMSE) value of 7.00383 and a R-squared (R2) of 0.9644 between the model prediction data and the actual data.
期刊介绍:
Nordic Pulp & Paper Research Journal (NPPRJ) is a peer-reviewed, international scientific journal covering to-date science and technology research in the areas of wood-based biomass:
Pulp and paper: products and processes
Wood constituents: characterization and nanotechnologies
Bio-refining, recovery and energy issues
Utilization of side-streams from pulping processes
Novel fibre-based, sustainable and smart materials.
The editors and the publisher are committed to high quality standards and rapid handling of the peer review and publication processes.
Topics
Cutting-edge topics such as, but not limited to, the following:
Biorefining, energy issues
Wood fibre characterization and nanotechnology
Side-streams and new products from wood pulping processes
Mechanical pulping
Chemical pulping, recovery and bleaching
Paper technology
Paper chemistry and physics
Coating
Paper-ink-interactions
Recycling
Environmental issues.