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闫英

Associate Professor
Supervisor of Doctorate Candidates
Supervisor of Master's Candidates


Title : 高性能制造研究所 副所长 机械学院招生宣传组成员(武汉)
Gender:Female
Alma Mater:清华大学
Degree:Doctoral Degree
School/Department:机械工程学院
Discipline:Mechanical Manufacture and Automation
Business Address:大连理工大学 机械学院 知方楼5005
Contact Information:yanying@dlut.edu.cn
E-Mail:yanying@dlut.edu.cn
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Current position: Home >> Scientific Research >> Paper Publications

Activation functions selection for BP neural network model of ground surface roughness

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Indexed by:期刊论文

Date of Publication:2021-01-10

Journal:JOURNAL OF INTELLIGENT MANUFACTURING

Volume:31

Issue:8

Page Number:1825-1836

ISSN No.:0956-5515

Key Words:Roughness; Ground surfaces; Grinding process; BP neural network; Activation function

Abstract:Roughness prediction of ground surfaces is critical in understanding and optimizing the grinding process. However, it is hitherto difficult to predict accurately the ground surface roughness by theoretical and empirical models due to the complexity of grinding process. BP neural network (BPNN), which can be used to establish the relationship between processing parameters and surface roughness, avoids the difficulty of revealing the complex physical mechanism and thus has unique potential in automatic optimization of grinding process in industrial practice. Activation function is one of the most important factors affecting the efficiency and accuracy of BPNN. Nevertheless, it is often selected arbitrarily or at most by trials or tuning. This paper proposes an activation function selection approach in which virtual data generated from the approximate physical model are employed to evaluate the performance of the BPNN in practice application. The results show that with tansig as the activation function of hidden layer and purelin as the activation function of output layer, the BPNN model can obtain the highest learning efficiency. Moreover, when the activation function of hidden layer is sigmoid, whose shape factor is 1-3, and the output layer activation function is purelin, the model can predict more precisely. Finally, the proposed approach is validated by comparing the performance of BPNN obtained from the virtual data and the experimental data. Obtained results showed that the proposed approach is a simple and effective way to determine the activation function of BPNN.