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Machine tool operating vibration prediction based on multi-sensor fusion and LSTM neural network
  • Zhonglou Shi,
  • jinjie duan,
  • faquan li
Zhonglou Shi
Jianghan University
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jinjie duan
Jianghan University
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faquan li
Northwestern Polytechnical University

Corresponding Author:fayuan_li2024@163.com

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Abstract

In this study, a machine tool operating vibration prediction method based on multi-sensor fusion and long short-term memory (LSTM) network is proposed. Machine tool vibration has a significant impact on machining quality, workpiece surface roughness, dimensional accuracy, and tool’s wear. This study combines deep learning technology with industrial applications to achieve high-precision machine tool vibration prediction by fusing multiple sensor data. The real-time data is input into the LSTM model to predict the vibration situation at the next moment. The experimental results show that the method has strong prediction ability for the periodic vibration of the machine tool and the vibration error specific to the machining action. And it can effectively predict machine vibration and improve machining accuracy.
Submitted to Electronics Letters
Assigned to Editor
Reviewer(s) Assigned
Submission Checks Completed
25 Jul 2024Review(s) Completed, Editorial Evaluation Pending
01 Aug 2024Reviewer(s) Assigned
22 Aug 2024Editorial Decision: Revise Major