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Cited 27 time in webofscience Cited 38 time in scopus
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ONLINE MONITORING OF TOOL BREAKAGE IN FACE MILLING USING A SELF-ORGANIZED NEURAL-NETWORK SCIE SCOPUS

Title
ONLINE MONITORING OF TOOL BREAKAGE IN FACE MILLING USING A SELF-ORGANIZED NEURAL-NETWORK
Authors
KO, TJCHO, DWJUNG, MY
Date Issued
1995-01
Publisher
SOC MANUFACTURING ENGINEERS
Abstract
This study introduces a new tool breakage monitoring methodology consisting of an unsupervised neural network combined with an adaptive time-series modeling algorithm. Cutting force signals are modeled by a discrete autoregressive model in which parameters are estimated recursively at each sampling instant using a parameter-adaptation algorithm based on a recursive least square. The experiment shows that monitoring the evolution of autoregressive pam meters during milling is effective for detecting tool breakage. An adaptive resonance network based on Grossberg's adaptive resonance theory (ART 2) is employed for clustering tool states using model parameters, and this network has unsupervised learning capability. This system subsequently operates successfully with a fast monitoring time in a wide range of cutting conditions without a priori knowledge of the cutting process.
Keywords
MILLING PROCESS; ADAPTIVE SIGNAL PROCESSING; TOOL BREAKAGE; FEATURE; SELF-ORGANIZED NEURAL NETWORK
URI
https://oasis.postech.ac.kr/handle/2014.oak/21777
DOI
10.1016/0278-6125(95)98889-E
ISSN
0278-6125
Article Type
Article
Citation
JOURNAL OF MANUFACTURING SYSTEMS, vol. 14, no. 2, page. 80 - 90, 1995-01
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조동우CHO, DONG WOO
Dept of Mechanical Enginrg
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