宋志龙,吕冰海,柯明峰,杨易彬,邵琦,袁巨龙,Duc-nam Nguyen.基于BP神经网络的确定性剪切增稠抛光材料去除率模型[J].表面技术,2020,49(11):320-325, 357.
SONG Zhi-long,LYU Bing-hai,KE Ming-feng,YANG Yi-bin,SHAO Qi,YUAN Ju-long,Duc-nam Nguyen.Removal Rate Model of Deterministic Shear Thickening Polishing Material Based on BP Neural Network[J].Surface Technology,2020,49(11):320-325, 357
基于BP神经网络的确定性剪切增稠抛光材料去除率模型
Removal Rate Model of Deterministic Shear Thickening Polishing Material Based on BP Neural Network
投稿时间:2020-01-07  修订日期:2020-04-15
DOI:10.16490/j.cnki.issn.1001-3660.2020.11.037
中文关键词:  剪切增稠抛光(STP)  BP神经网络  确定性抛光  去除率  去除率模型
英文关键词:shear thickening polishing  BP neural networks  deterministic polishing  removal rate  removal rate model
基金项目:浙江省自然科学基金项目(LR17E050002);国家自然科学基金(51805485,51805484,51775508)
作者单位
宋志龙 浙江工业大学 特种装备制造与先进加工技术教育部重点实验室,杭州 310014 
吕冰海 浙江工业大学 特种装备制造与先进加工技术教育部重点实验室,杭州 310014 
柯明峰 浙江工业大学 特种装备制造与先进加工技术教育部重点实验室,杭州 310014 
杨易彬 浙江工业大学 特种装备制造与先进加工技术教育部重点实验室,杭州 310014 
邵琦 浙江工业大学 特种装备制造与先进加工技术教育部重点实验室,杭州 310014 
袁巨龙 浙江工业大学 特种装备制造与先进加工技术教育部重点实验室,杭州 310014 
Duc-nam Nguyen 胡志明工业大学 机械工程学院,越南 胡志明市 727010 
AuthorInstitution
SONG Zhi-long Key Laboratory of Special Equipment Manufacturing and Advanced Processing Technology of the Ministry of Education, Zhejiang University of Technology, Hangzhou 310014, China 
LYU Bing-hai Key Laboratory of Special Equipment Manufacturing and Advanced Processing Technology of the Ministry of Education, Zhejiang University of Technology, Hangzhou 310014, China 
KE Ming-feng Key Laboratory of Special Equipment Manufacturing and Advanced Processing Technology of the Ministry of Education, Zhejiang University of Technology, Hangzhou 310014, China 
YANG Yi-bin Key Laboratory of Special Equipment Manufacturing and Advanced Processing Technology of the Ministry of Education, Zhejiang University of Technology, Hangzhou 310014, China 
SHAO Qi Key Laboratory of Special Equipment Manufacturing and Advanced Processing Technology of the Ministry of Education, Zhejiang University of Technology, Hangzhou 310014, China 
YUAN Ju-long Key Laboratory of Special Equipment Manufacturing and Advanced Processing Technology of the Ministry of Education, Zhejiang University of Technology, Hangzhou 310014, China 
Duc-nam Nguyen Faculty of Mechanical Engineering, Industrial University of Ho Chi Minh City, Ho Chi Minh City 727010, Vietnam 
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中文摘要:
      目的 通过训练不同实验参数条件下的确定性剪切增稠抛光的实验数据,建立基于BP神经网络的确定性剪切增稠抛光材料去除率模型,为实现抛光点材料的确定去除控制提供基础。方法 以BK7平面玻璃为抛光对象展开确定性剪切增稠抛光正交实验,根据正交实验分析结果,比较抛光头转速、抛光头与工件之间的间隙以及抛光液浓度三个因素,对抛光点材料去除率影响的权重,确定BP神经网络的输入参量。根据经验公式初步确定网络隐含层节点个数,并综合比较不同隐含层节点数目下的模型性能来确定整体网络结构,使用训练集实验数据训练网络模型,建立抛光点的材料去除率模型。结果 模型预测结果与实验结果对比表明,所建立的峰值去除率BP神经网络预测模型输出结果与实验结果之间的相对误差在6.8%以内,验证了所建立材料去除率模型的准确性。结论 传统理论模型难以精确描述确定性剪切增稠抛光的工艺参数与抛光区域材料峰值去除率之间复杂的非线性映射关系,而BP神经网络的自学习自适应能力能够克服这种问题,为确定性剪切增稠抛光去除率模型的建立提供新的思路。
英文摘要:
      The work aims to establish the removal rate model of deterministic shear thickening polishing (DSTP) based on BP neutral network by training the data of DSTP under different conditions, to provide basis for the deterministic removal control of material at polishing point. DSTP orthogonal experiment was conducted on BK7 flat glass, and the results were analyzed to compare the weight of each factor’s (polishing head speed, polishing gap, concentration of polishing slurry) impact on material removal rate of polishing point, to determine the input parameters of BP neural network. The number of hidden layer nodes was determined by experimental equation initially, and then the whole structure of network model was constructed by comparing the performance of the model under different hidden layer nodes. The final material removal rate model was established based on the experimental data designed network trained by the model. The comparison between the model prediction results and the experimental results showed that the relative error was less than 6.8% between the output of the established BP neural network prediction model and the measured results, proving the accuracy of the prediction model. The traditional theoretical model is difficult to accurately describe the complicated nonlinear mapping relationship between the process parameters of DSTP and the peak removal rate. The self-learning and adaptive ability of BP neural network can overcome this problem and provide a novel strategy for building the removal rate model of the deterministic shear thickening polishing process.
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