Tool wear state monitoring method based on vibration signal and stacking integrated model

A vibration signal and tool wear technology, which is applied in manufacturing tools, measuring/indicating equipment, metal processing equipment, etc., can solve the instability of decision tree classification results, the difficulty of implementing large-scale training samples, and the inability of artificial intelligence technology to meet accuracy requirements, etc. question

Active Publication Date: 2020-05-22
XI AN JIAOTONG UNIV
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Problems solved by technology

Support vector machine (SVM) is the most commonly used intelligent algorithm for state recognition. It has a solid theoretical foundation and is suitable for small sample state classification. However, SVM has difficulties in solving multi-classification problems and is difficult to implement for large-scale training samples. The decision tree model is simple, The algorithm is low in complexity and reliable in statistical testing, but the decision tree classification result may be unstable; the naive Bayesian algorithm has stable classification efficiency and can handle multi-classification tasks, but it needs to assume a priori probability, and the prior probability model may lead to poor results
However, due to the increasingly complex working conditions, a single artificial intelligence technology cannot meet the precision requirements

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  • Tool wear state monitoring method based on vibration signal and stacking integrated model
  • Tool wear state monitoring method based on vibration signal and stacking integrated model
  • Tool wear state monitoring method based on vibration signal and stacking integrated model

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Embodiment Construction

[0038] The present invention will be described in detail below in conjunction with the accompanying drawings and specific embodiments, where the schematic embodiments and descriptions of the present invention are used to explain the present invention, but not to limit the present invention.

[0039] refer to figure 1 , the present invention is based on vibration signal and the tool wear state monitoring method of integrated model, comprises the following steps:

[0040] The first step is data collection.

[0041] Adsorb the three-way acceleration sensor on the non-rotating place of the machine tool spindle through the magnetic base, and use the acceleration sensor to collect the three-way vibration signal during the machining process of the machine tool; collect the vibration signal during the service life of the tool, extract the characteristic information of the vibration signal, and divide the characteristic data into training Data and test data, the training data is used ...

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Abstract

The invention discloses a tool abrasion state monitoring method based on a vibration signal and a Stacking ensemble model. The vibration signal of a machine tool spindle in the machining process is utilized, and the vibration signal is subjected to feature extraction through time-domain analysis, frequency-domain analysis and ensemble empirical mode decomposition (EEMD); then extracted features are screened through a Relief F-SVM algorithm to obtain an optimal feature set; the width of a tool abrasion blade belt serves as the abrasion label value, and an ensemble monitoring model is built based on a Stacking ensemble strategy through the optimal feature set and the abrasion label value; and after the model is built, the vibration signal in the machining process is monitored and processed to obtain the signal feature set to be input into the ensemble monitoring model, and the tool abrasion label value, namely the tool abrasion state is obtained. The tool abrasion state can be monitoredbased on the vibration signal and the Stacking ensemble model.

Description

technical field [0001] The invention relates to the technical field of tool wear state monitoring, in particular to a tool wear state monitoring method based on a vibration signal and a Stacking integrated model. Background technique [0002] The modern manufacturing industry is gradually developing towards intelligence, and it is particularly important to perceive the performance status of the main components of CNC machine tools during the processing process. The monitoring of the tool wear state is very important in the machining process, and the tool wear is very important to the surface quality and dimensional accuracy of the processed workpiece. Therefore, the state evaluation of tool wear has become an important research topic, but more importantly, how to accurately and stably fit or predict the wear value of a brand new tool. Because predicting the wear value too high may lead to the waste of tool materials, while predicting the wear value too low will increase the...

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Application Information

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Patent Type & Authority Patents(China)
IPC IPC(8): B23Q17/09
CPCB23Q17/0957B23Q17/0971
Inventor 姜歌东王军平裴昌渝惠阳梅雪松王彦波
Owner XI AN JIAOTONG UNIV
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