Adaptive modelling of the milling process and application of a neural network for tool wear monitoring |
| |
Authors: | Tae Jo Ko Dong Woo Cho |
| |
Affiliation: | (1) Department of Mechanical Engineering, Pohang Institute of Science and Technology, PO Box 125, 790-600 Pohang, Kyungbuk, South Korea |
| |
Abstract: | An adaptive signal processing scheme that uses a low-order autoregressive time series model is introduced to model the cutting force data for tool wear monitoring during face milling. The modelling scheme is implemented using an RLS (recursive least square) method to update the model parameters adaptively at each sampling instant. Experiments indicate that AR model parameters are good features for monitoring tool wear, thus tool wear can be detected by monitoring the evolution of the AR parameters during the milling process. The capability of tool wear monitoring is demonstrated with the application of a neural network. As a result, the neural network classifier combined with the suggested adaptive signal processing scheme is shown to be quite suitable for in-process tool wear monitoring |
| |
Keywords: | Adaptive signal processing Autoregressive time series Feature Milling process Neural network Tool wear |
本文献已被 SpringerLink 等数据库收录! |
|