Hybrid Learning for Tool Wear Monitoring
Author(s) -
Xiaoli Li,
Shikui Dong,
Patri K. Venuvinod
Publication year - 2000
Publication title -
the international journal of advanced manufacturing technology
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.946
H-Index - 124
eISSN - 1433-3015
pISSN - 0268-3768
DOI - 10.1007/s001700050161
Subject(s) - tool wear , artificial neural network , vibration , backpropagation , fuzzy logic , engineering , condition monitoring , cutting tool , process (computing) , computation , machine tool , computer science , artificial intelligence , control engineering , mechanical engineering , machining , algorithm , acoustics , physics , electrical engineering , operating system
In automated manufacturing systems such as flexible manufacturing systems (FMSs), one of the most important issues is the detection of tool wear during the cutting process. This paper presents a hybrid learning method to map the relationship between the features of cutting vibration and the tool wear condition. The experimental results show that it can be used effectively to monitor the tool wear in drilling. First, a neural network model with fuzzy logic (FNN), responding to learning algorithms, is presented. It has many advantageous features, compared to a backpropagation neural network, such as less computation. Secondly, the experimental results show that the frequency distribution of vibration changes as the tool wears, so the r.m.s. of the different frequency bands measured indicates the tool wear condition. Finally, FNN is used to describe the relationship between the characteristics of vibration and the tool wear condition. The experimental results demonstrate the feasibility of using vibration signals to monitor the drill wear condition.
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