Paper
15 November 2019 Compensation of thermal drift during the single-point diamond turning process based on the LSTM
Author Affiliations +
Proceedings Volume 11175, Optifab 2019; 111752E (2019) https://doi.org/10.1117/12.2536897
Event: SPIE Optifab, 2019, Rochester, New York, United States
Abstract
In this paper, we propose a compensation method for the nanometer level of thermal drift by adopting long-short term memory (LSTM) algorithm. The precision of a machining process is highly affected by environmental factors. Especially in case of a single-point diamond turning (SPDT), the temperature fluctuation directly causes the unexpected displacement at nanometer scale between a diamond tool and a workpiece, even in the well-controlled environment. LSTM is one of the artificial recurrent neural network algorithms, and we figure out that it is quite suitable to predict the temperature variation based on the history of thermal fluctuation trends. We monitor the temperatures at 8 spots nearby a SPDT machine, and the neural network based on LSTM algorithm is trained to construct the thermal drift model from the time series data. Results of thermal drift prediction showed that the proposed method gives an effective model upon the well-controlled laboratory environment, and by which the thermal drift can be compensated to improve the precision of SPDT process.
© (2019) COPYRIGHT Society of Photo-Optical Instrumentation Engineers (SPIE). Downloading of the abstract is permitted for personal use only.
Woo-Jong Yeo, Byeong-Jun Jeong, Seok-Kyeong Jeong, Jong-Gyun Kang, Sang-Won Hyun, Geon-Hee Kim, and Won-Kyun Lee "Compensation of thermal drift during the single-point diamond turning process based on the LSTM", Proc. SPIE 11175, Optifab 2019, 111752E (15 November 2019); https://doi.org/10.1117/12.2536897
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KEYWORDS
Single point diamond turning

Data modeling

Thermal modeling

Diamond

Error analysis

Evolutionary algorithms

Neural networks

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