Machine tool operating vibration prediction based on multi-sensor fusion
and LSTM neural network
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.