Automatic Estimation of Drill Wear Based on Images of Holes Drilled in Melamine Faced Chipboard with Machine Learning Algorithms

Author:

Jegorowa Albina1ORCID,Kurek Jarosław2ORCID,Antoniuk Izabella2ORCID,Krupa Artur2ORCID,Wieczorek Grzegorz2ORCID,Świderski Bartosz2ORCID,Bukowski Michał2ORCID,Kruk Michał2ORCID

Affiliation:

1. Institute of Wood Sciences and Furniture, Warsaw University of Life Sciences, 02-787 Warszawa, Poland

2. Institute of Information Technology, Warsaw University of Life Sciences, 02-787 Warszawa, Poland

Abstract

In this article, an approach to drill wear evaluation is presented. Tool condition monitoring is an important problem in furniture manufacturing and similar industries. At the same time, approaches that rely on sets of sensors, often tend to be to robust or complex for the production environment. Instead of signals acquired from dedicated sensors, presented approach uses images of drilled holes as input data. Initial pictures are processed and enhanced in order to highlight the crucial properties. A set of selected features is then calculated on the resulting images, and later used during the training of 5 state-of-the-art classifiers. Presented research also evaluates number of images for consecutive drillings that needs to be taken into account in order to produce accurate results. From the selected set, the best performing classifier was Random Forest and it achieved close to 100% accuracy.

Publisher

MDPI AG

Subject

Forestry

Reference44 articles.

1. Influence of pneumatic pressure on delamination factor of drilling medium density fiberboard;Kun;Wood Res.,2015

2. Effect of tool material on tool wear and delamination during machining of particleboard;Szwajka;J. Wood Sci.,2016

3. An examination of the tool life and surface quality during drilling melamine faced chipboard;Szwajka;Wood Res.,2017

4. Drill Holes Deflection Determination for Small Diameter Bits in Wood-Based Materials;BioResources,2021

5. Drilling investigation of MDF (medium density fibreboard);Davim;J. Mater. Process. Technol.,2008

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