Recurrent Neural Networks with Long Term Temporal Dependencies in Machine Tool Wear Diagnosis and Prognosis
Jianlei Zhang, Binil Starly

TL;DR
This paper introduces an LSTM-based recurrent neural network for machine tool wear diagnosis that captures long-term dependencies, enabling accurate prediction of tool wear and remaining useful life without relying on traditional analytic models.
Contribution
The study presents a novel LSTM-based RNN approach for tool wear prognosis that outperforms simple RNNs and avoids assumptions of traditional model-based methods.
Findings
LSTM RNN outperforms simple RNN in wear prediction.
The approach accurately estimates remaining useful life.
Experimental validation on milling machine data confirms effectiveness.
Abstract
Data-driven approaches to automated machine condition monitoring are gaining popularity due to advancements made in sensing technologies and computing algorithms. This paper proposes the use of a deep learning model, based on Long Short-Term Memory (LSTM) architecture for a recurrent neural network (RNN) which captures long term dependencies for modeling sequential data. In the context of estimating cutting tool wear amounts, this LSTM based RNN approach utilizes a system transition and system observation function based on a minimally intrusive vibration sensor signal located near the workpiece fixtures. By applying an LSTM based RNN, the method helps to avoid building an analytic model for specific tool wear machine degradation, overcoming the assumptions made by Hidden Markov Models, Kalman filter, and Particle filter based approaches. The proposed approach is tested using experiments…
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