A feature selection method based on an improved fruit fly optimization algorithm in the process of numerical control milling

Automatic control is the key to improved production quality and efficiency of numerical control milling operations. Because the milling cutter is the most important tool in milling operations, the automatic monitoring of the tool wear state is of great significance. This work establishes a set of ti...

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Main Authors: Min Yuan, Mei Wang
Format: Article
Language:English
Published: SAGE Publishing 2018-05-01
Series:Advances in Mechanical Engineering
Online Access:https://doi.org/10.1177/1687814018778227
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spelling doaj-2b71bc81cea94a499a19218bcec042cf2020-11-25T02:55:15ZengSAGE PublishingAdvances in Mechanical Engineering1687-81402018-05-011010.1177/1687814018778227A feature selection method based on an improved fruit fly optimization algorithm in the process of numerical control millingMin YuanMei WangAutomatic control is the key to improved production quality and efficiency of numerical control milling operations. Because the milling cutter is the most important tool in milling operations, the automatic monitoring of the tool wear state is of great significance. This work establishes a set of time domain and time-frequency domain features based on measurements of the cutting force for a computer numerical control milling machine and develops a method incorporating the Fisher criterion in an improved fruit fly optimization algorithm for selecting features most indicative of the tool wear state. A back propagation neural network was employed to test the effectiveness of the proposed feature selection method. Experimental comparisons with three other feature selection methods demonstrate that the proposed improved fruit fly optimization algorithm offers the advantages of the selection of a small number of significant features, easy implementation, precise optimization, rapid training, and good back propagation network performance. The proposed method has great potential for facilitating the practical monitoring of the milling tool wear state.https://doi.org/10.1177/1687814018778227
collection DOAJ
language English
format Article
sources DOAJ
author Min Yuan
Mei Wang
spellingShingle Min Yuan
Mei Wang
A feature selection method based on an improved fruit fly optimization algorithm in the process of numerical control milling
Advances in Mechanical Engineering
author_facet Min Yuan
Mei Wang
author_sort Min Yuan
title A feature selection method based on an improved fruit fly optimization algorithm in the process of numerical control milling
title_short A feature selection method based on an improved fruit fly optimization algorithm in the process of numerical control milling
title_full A feature selection method based on an improved fruit fly optimization algorithm in the process of numerical control milling
title_fullStr A feature selection method based on an improved fruit fly optimization algorithm in the process of numerical control milling
title_full_unstemmed A feature selection method based on an improved fruit fly optimization algorithm in the process of numerical control milling
title_sort feature selection method based on an improved fruit fly optimization algorithm in the process of numerical control milling
publisher SAGE Publishing
series Advances in Mechanical Engineering
issn 1687-8140
publishDate 2018-05-01
description Automatic control is the key to improved production quality and efficiency of numerical control milling operations. Because the milling cutter is the most important tool in milling operations, the automatic monitoring of the tool wear state is of great significance. This work establishes a set of time domain and time-frequency domain features based on measurements of the cutting force for a computer numerical control milling machine and develops a method incorporating the Fisher criterion in an improved fruit fly optimization algorithm for selecting features most indicative of the tool wear state. A back propagation neural network was employed to test the effectiveness of the proposed feature selection method. Experimental comparisons with three other feature selection methods demonstrate that the proposed improved fruit fly optimization algorithm offers the advantages of the selection of a small number of significant features, easy implementation, precise optimization, rapid training, and good back propagation network performance. The proposed method has great potential for facilitating the practical monitoring of the milling tool wear state.
url https://doi.org/10.1177/1687814018778227
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