Title
Comparison of CNN and CNN-LSTM Architectures for Tool Wear Estimation
Date Issued
01 January 2021
Access level
metadata only access
Resource Type
conference paper
Publisher(s)
Institute of Electrical and Electronics Engineers Inc.
Abstract
Modern manufacturing needs to guarantee product quality and reduce operating costs. These can be achieved through the use of analytical tools, which depend on the collection of large amounts of data, in this particular case in the form of time series. During the last few years, various conventional and neural network-based methods have shown great promise in problems related to estimating milling cutter wear. Among neural networks, recurrent networks are especially promising due to the memory mechanism they use. In the present work, a comparison is made between a CNN network and a CNN-LSTM network. Both networks extract information directly from the time series of a widely used database. Unlike similar works in the existing literature, two simple preprocessing techniques are used: to remove the tendency of the time series and to equalize the initial values of the tool wear. Additionally, Bayesian optimization of hyperparameters is used. Mean square errors are obtained that are consistently around 10, results equivalent to the state of the art.
Language
English
OCDE Knowledge area
Sistemas de automatización, Sistemas de control
Subjects
Scopus EID
2-s2.0-85123369851
Resource of which it is part
Proceedings of the 2021 IEEE Engineering International Research Conference, EIRCON 2021
ISBN of the container
978-166544445-3
Conference
Conferencia Internacional de Investigación de Ingeniería IEEE, EIRCON 2021
Sponsor(s)
This work was funded by CONCYTEC-FONDECYT in the framework of call E038-01, grant No. 020-2019-FONDECYT-BM-INC.INV.
Sources of information:
Directorio de Producción Científica
Scopus