Machining process condition monitoring based on ordinal pattern analysis and image matching

Stable machining process state is critical to product quality. However, existing method for monitoring the cutting process state cannot manifest the actual machining situation accurately because it only focuses on a single abnormality while ignoring the simultaneous occurrence of different abnormal...

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Veröffentlicht in:International journal of advanced manufacturing technology 2023-04, Vol.125 (7-8), p.3329-3347
Hauptverfasser: Li, Yazhou, Dai, Wei, Dong, Junjun, He, Yihai
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container_title International journal of advanced manufacturing technology
container_volume 125
creator Li, Yazhou
Dai, Wei
Dong, Junjun
He, Yihai
description Stable machining process state is critical to product quality. However, existing method for monitoring the cutting process state cannot manifest the actual machining situation accurately because it only focuses on a single abnormality while ignoring the simultaneous occurrence of different abnormal states. Aiming at the three typical anomalies and multi-factor anomalies commonly observed in machining, a multi-delay ordinal pattern (OP) (MDOP) image feature based on OP analysis and a complex machining state recognition method based on dictionary template matching are proposed. First, an OP method is developed to extract the inherent wave pattern of monitoring signal under specific parameters. Second, the MDOP image features based on multi-parameters are established to optimize the parameter selection process and enrich the state information. With strong anti-noise and easy data processing, the MDOP method can obtain rich processing state information from the perspective of visual knowledge. Third, an image matching method based on multi-template and a machining state recognition method based on maximum template matching degree are proposed. Finally, a machining experiment that included eight states was designed to verify the effectiveness of the method. Result shows that the proposed method can identify different cutting states accurately, and the multi-source signals can improve the accuracy of the model further. Compared with other methods, the MDOP method has evident advantages.
doi_str_mv 10.1007/s00170-023-10961-w
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However, existing method for monitoring the cutting process state cannot manifest the actual machining situation accurately because it only focuses on a single abnormality while ignoring the simultaneous occurrence of different abnormal states. Aiming at the three typical anomalies and multi-factor anomalies commonly observed in machining, a multi-delay ordinal pattern (OP) (MDOP) image feature based on OP analysis and a complex machining state recognition method based on dictionary template matching are proposed. First, an OP method is developed to extract the inherent wave pattern of monitoring signal under specific parameters. Second, the MDOP image features based on multi-parameters are established to optimize the parameter selection process and enrich the state information. With strong anti-noise and easy data processing, the MDOP method can obtain rich processing state information from the perspective of visual knowledge. 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However, existing method for monitoring the cutting process state cannot manifest the actual machining situation accurately because it only focuses on a single abnormality while ignoring the simultaneous occurrence of different abnormal states. Aiming at the three typical anomalies and multi-factor anomalies commonly observed in machining, a multi-delay ordinal pattern (OP) (MDOP) image feature based on OP analysis and a complex machining state recognition method based on dictionary template matching are proposed. First, an OP method is developed to extract the inherent wave pattern of monitoring signal under specific parameters. Second, the MDOP image features based on multi-parameters are established to optimize the parameter selection process and enrich the state information. With strong anti-noise and easy data processing, the MDOP method can obtain rich processing state information from the perspective of visual knowledge. 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subjects Advanced manufacturing technologies
Anomalies
CAE) and Design
Computer-Aided Engineering (CAD
Cutting
Data processing
Deep learning
Deformation
Dictionaries
Engineering
Industrial and Production Engineering
Machinery condition monitoring
Machining
Mechanical Engineering
Media Management
Methods
Original Article
Pattern analysis
Process parameters
Product quality
Signal monitoring
State (computer science)
Template matching
Time series
title Machining process condition monitoring based on ordinal pattern analysis and image matching
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