Please use this identifier to cite or link to this item: http://hdl.handle.net/20.500.12188/34575
Title: Al-based optimization of surface roughness in wood band sawing using polynomial regression and differential evolution
Authors: Selimi,Bujar
Temelkova, Anastasija 
Jevtoska, Elena 
Keywords: surface roughness, wood band sawing, artificial intelligence, polynomial regression, optimization
Issue Date: May-2025
Publisher: AAB College, Pristina, Kosovo
Conference: International Conference " Artifical intelligence (AI) in the age of transformation: Opportunities and challenges
Abstract: This study presents an artificial intelligence–assisted optimization framework for minimizing surface roughness (Rₘₐₓ) in wood band sawing. A third-order Polynomial Regression Model (PRM-3) was developed and trained on experimentally collected data obtained under varied cutting conditions, including angle, height, and feed rate. To ensure robust generalization, configurations with a 60° cutting angle were deliberately excluded from training and used solely for out-of-sample validation. PRM-3 was integrated with the Differential Evolution (DE) algorithm to identify optimal process configurations. For comparative purposes, a Gaussian Process Regression (GPR) model was also implemented to evaluate the relative generalization capability. Results confirmed the superior performance of PRM-3 in terms of accuracy, stability, and generalization, compared to GPR, demonstrating high potential for deployment in intelligent wood machining applications. The proposed framework represents a valuable integration of interpretable modeling and automated optimization for surface quality control in industrial settings
URI: http://hdl.handle.net/20.500.12188/34575
Appears in Collections:Faculty of Design and Technologies of Furniture and Interior: Conference papers

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