Litcius/Paper detail

Paper quality enhancement and model prediction using machine learning techniques

T. Kalavathi Devi, E. B. Priyanka, P. Sakthivel

2023Results in Engineering18 citationsDOIOpen Access PDF

Abstract

A machine learning approach demonstrated in the proposed study predicts the parameters involved in paper quality enhancement in real time. To control the steam pressure during paper manufacture, machine learning algorithms have been used to model different parameters such as moisture, caliper, and weight (grammage). The training and testing data sets were obtained to develop several machine learning models through several data from the parameters of the paper-making process. The inputs considered were moisture, weight, and grammage. As a result, the developed model showed better results by showing less execution time, fewer error values such as root mean squared error, mean squared error, mean absolute error, and R squared score. In addition, modeling was carried out based on model interpretation and cross-validation results, showing that the developed model could be a more useful tool in predicting the performance of the steam pressure and input parameters in the paper-making process. A comparison of results shows that the k-Nearest Neighbor algorithm outperforms the other machine learning techniques. Machine learning is also used to predict the efficiency of steam pressure reduction.

Topics & Concepts

Mean squared errorMachine learningCalipersArtificial intelligenceComputer scienceProcess (computing)AlgorithmMean absolute percentage errorData miningMathematicsStatisticsArtificial neural networkOperating systemGeometryIndustrial Vision Systems and Defect Detection