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Cutting tool remaining useful life prediction based on robust empirical mode decomposition and Capsule-BiLSTM network

Liangshi Sun, Chengying Zhao, Xianzhen Huang, Pengfei Ding, Yuxiong Li

2023Proceedings of the Institution of Mechanical Engineers Part C Journal of Mechanical Engineering Science17 citationsDOI

Abstract

In industrial production, effectively predicting the remaining useful life (RUL) of cutting tools can avoid overuse or underuse, which is of great significance for ensuring the processing quality of products and reducing enterprises’ production costs. This paper proposes a new method for RUL prediction of cutting tools based on robust empirical mode decomposition (REMD) and capsule bidirectional long short-term memory (Capsule-BiLSTM) network to improve accuracy. On one hand, new state features are extracted using REMD as the input of the deep learning network. On the other hand, a Capsule-BiLSTM network structure is designed to achieve RUL prediction of cutting tools by connecting the four layers. Finally, the effectiveness of the proposed method is verified by a series of cutting tool life tests. Comparison with some mainstream methods indicates that the proposed method has more advantages in RUL prediction of cutting tools with the average accuracy reaching up to 93.97%.

Topics & Concepts

Hilbert–Huang transformComputer scienceDecompositionMode (computer interface)Artificial intelligenceData miningEcologyOperating systemBiologyComputer visionFilter (signal processing)Machine Fault Diagnosis TechniquesAdvanced machining processes and optimizationGear and Bearing Dynamics Analysis
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