Litcius/Paper detail

Bagging-gradient boosting decision tree based milling cutter wear status prediction modelling

Weiping Xu, Wendi Li, Yao Zhang, Taihua Zhang, Huawei Chen

2021SN Applied Sciences12 citationsDOIOpen Access PDF

Abstract

Abstract Aiming to monitor wear condition of milling cutters in time and provide tool change decisions to ensure manufacturing safety and product quality, a tool wear monitoring model based on Bagging-Gradient Boosting Decision Tree (Bagging-GBDT) is proposed. In order to avoid incomplete tool state information contained in a single domain feature parameter, a multi-domain combination method is used to extract candidate characteristic parameter sets from time domain, frequency domain, and time–frequency domain. Then top 21 significant features are screened by eXtreme Gradient Boosting selection method. Synthetic Minority Oversampling Technique technology is integrated during feature selection to overly sample feature vectors, so that wear condition categories can be well balanced. Bagging idea is then introduced for parallel calculation of the gradient boosting decision tree and to improve its generalization ability. A Bagging-GBDT milling cutter wear condition prediction model is constructed and verified by public ball-end milling data set. Experiments show that random features and training samples selection can effectively improve prediction performance and generalization ability of prediction model. Our Bagging-GBDT model gains F 1 score of 0.99350, which is 0.2% and 13.2% higher than the random forest algorithm and basic GBDT model, respectively.

Topics & Concepts

Boosting (machine learning)Decision treeGradient boostingRandom forestComputer scienceOversamplingFeature selectionArtificial intelligenceGeneralizationMachine learningTree (set theory)Data miningPattern recognition (psychology)MathematicsMathematical analysisComputer networkBandwidth (computing)Advanced machining processes and optimizationMetal Alloys Wear and PropertiesGear and Bearing Dynamics Analysis