A novel distribution-free hybrid regression model for manufacturing process efficiency improvement
Tanujit Chakraborty, Ashis Kumar Chakraborty, Swarup Chattopadhyay

TL;DR
This paper introduces a new hybrid regression model combining regression trees and neural networks to improve the efficiency of fiber recovery in paper manufacturing, with proven higher accuracy and theoretical guarantees.
Contribution
The paper presents a novel distribution-free hybrid RT-ANN model with theoretical consistency and demonstrates its superior predictive performance for manufacturing process efficiency.
Findings
Achieves higher accuracy than traditional models in predicting recovery percentage.
Provides theoretical proof of the model's universal consistency.
Enhances environmental sustainability by improving waste recovery.
Abstract
This work is motivated by a particular problem of a modern paper manufacturing industry, in which maximum efficiency of the fiber-filler recovery process is desired. A lot of unwanted materials along with valuable fibers and fillers come out as a by-product of the paper manufacturing process and mostly goes as waste. The job of an efficient Krofta supracell is to separate the unwanted materials from the valuable ones so that fibers and fillers can be collected from the waste materials and reused in the manufacturing process. The efficiency of Krofta depends on several crucial process parameters and monitoring them is a difficult proposition. To solve this problem, we propose a novel hybridization of regression trees (RT) and artificial neural networks (ANN), hybrid RT-ANN model, to solve the problem of low recovery percentage of the supracell. This model is used to achieve the goal of…
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