Intelligent Operation Monitoring of an Ultra-Precision CNC Machine Tool Using Energy Data
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Published:2022-06-01
Issue:1
Volume:10
Page:59-69
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ISSN:2288-6206
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Container-title:International Journal of Precision Engineering and Manufacturing-Green Technology
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language:en
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Short-container-title:Int. J. of Precis. Eng. and Manuf.-Green Tech.
Author:
Selvaraj Vignesh, Xu Zhicheng, Min SangkeeORCID
Abstract
AbstractUltra-precision CNC machine tools play a significant role in the machining of precision dies and molds, optics, consumer electronics, etc., Due to the nature of ultra-precision machining, a subtle change in process condition, machine anomalies, etc. may significantly influence the machining outcome. Hence, continuous monitoring of the equipment’s operation is required to better understand the variations associated with the process and the machine. The conventional monitoring platform requires comprehensive data analysis using multiple sensors, and controller data to detect, diagnose, and prognose machine and process conditions. This increases the cost and complexity of installing a monitoring platform. The energy consumption data contains valuable information that could be potentially used to identify machine and process variations. The information can also be used to develop potential energy-saving strategies in an effort towards Green Manufacturing. This paper proposes an intelligent energy monitoring method using a 1-dimensional convolutional neural network (1D-CNN) to effortlessly and accurately obtain the working status information of the machine with minimal retrofitting. The 1D-CNN uses the energy consumption data to determine the equipment’s operation status by identifying the working components and the feed rate of the moving axis. The hyper-parameters of the developed model were optimized to improve the prediction accuracy. The paper also compares different Deep Learning and Machine Learning algorithms to gauge their effective performance in this application. Finally, the model with the highest accuracy was validated on a 5-axis ultra-precision CNC machine tool. Results show that 1D-CNN performs better than multi-layer neural networks and machine learning algorithms in processing time-series datasets. The classification accuracy of 1D-CNN on the detection of operation status and feed rate of each axis can reach 95.7 and 91.4%, respectively. Further studies are currently in progress to improve prediction accuracy of the model, and to detect subtle changes in energy consumption which would enable identification of the machine and process anomalies.
Publisher
Springer Science and Business Media LLC
Subject
Management of Technology and Innovation,Industrial and Manufacturing Engineering,Mechanical Engineering,General Materials Science,Renewable Energy, Sustainability and the Environment
Reference13 articles.
1. Aramcharoen, A., & Mativenga, P. T. (2014). Critical factors in energy demand modelling for CNC milling and impact of toolpath strategy. Journal of Cleaner Production, 78, 63–74. 2. Yoon, H., Singh, E., & Min, S. (2018). Empirical power consumption model for rotational axes in machine tools. Journal of Cleaner Production, 196, 370–381. 3. Yoon, H., Lee, J., Kim, M., Kim, E., Shin, Y., Kim, S., Min, S., & Ahn, S. (2020). Power consumption assessment of machine tool feed drive units. International Journal of Precision Engineering and Manufacturing-Green Technology, 7, 455–464. 4. Lee, J., Shin, Y., Kim, M., Kim, E., Yoon, H., Kim, S., Yoon, Y., Ahn, S., & Min, S. (2015). A simplified machine-tool power-consumption measurement procedure and methodology for estimating total energy consumption. Journal of Manufacturing Science and Engineering, Transactions of the ASME, 138(5), 051004. 1–9. 5. Fayaz, M., & Kim, D. (2018). A prediction methodology of energy consumption based on deep extreme learning machine and comparative analysis in residential buildings. Electronics, 7(10), 222.
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