Milling force prediction model based on transfer learning and neural network

被引:0
|
作者
Juncheng Wang
Bin Zou
Mingfang Liu
Yishang Li
Hongjian Ding
Kai Xue
机构
[1] Shandong University,Centre for Advanced Jet Engineering Technologies (CaJET), School of Mechanical Engineering
[2] Shandong University,Key Laboratory of High Efficiency and Clean Mechanical Manufacture
[3] Ministry of Education,National Demonstration Center for Experimental Mechanical Engineering Education
[4] Shandong University,undefined
[5] Shanghai Aerospace Equipments Manufacture Co.,undefined
[6] Ltd,undefined
来源
关键词
Cutting force; Neural network; Transfer learning; Prediction;
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中图分类号
学科分类号
摘要
In recent years, the growing popularity of artificial neural networks has urged more and more researchers to try introduce these methods to the machining field, with some of them actually producing good results. The acquisition of cutting data often means higher cost and time, limiting the application of neural network in the machining sector, to a certain extent. In this paper, for the task of cutting force prediction, a “transfer network” was established, based on data obtained by simulation, combined with the theory and method in the field of transfer learning. Compared to “ordinary network”, that is, traditional back-propagation neural network based on experimental samples alone, transfer network exhibits obvious performance advantages. On one hand, this means that, using the same experimental samples, the prediction error of transfer network will be controlled; while on the other hand, when the same prediction error is achieved, the number of experimental samples required by the transfer network will be less.
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页码:947 / 956
页数:9
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