Prediction of surface roughness based on fused features and ISSA-DBN in milling of die steel P20

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作者
Miaoxian Guo
Jin Zhou
Xing Li
Zhijian Lin
Weicheng Guo
机构
[1] University of Shanghai for Science and Technology,College of Mechanical Engineering
[2] Beijing Spacecrafts Co. Ltd.,undefined
[3] Aplos Machines Manufacturing (Shanghai) Co. Ltd.,undefined
来源
Scientific Reports | / 13卷
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摘要
The roughness of the part surface is one of the most crucial standards for evaluating machining quality due to its relationship with service performance. For a preferable comprehension of the evolution of surface roughness, this study proposes a novel surface roughness prediction model on the basis of the unity of fuse d signal features and deep learning architecture. The force and vibration signals produced in the milling of P20 die steel are collected, and time and frequency domain feature from the acquired signals are extracted by variational modal decomposition. The GA-MI algorithm is taken to select the signal features that are relevant to the surface roughness of the workpiece. The optimal feature subset is analyzed and used as the input of the prediction model. DBN is adopted to estimate the surface roughness and the model parameters are optimized by ISSA. (Reviewer 1, Q1) The separate force, vibration and fusion signal information are brought into the DBN model and the ISSA-DBN model for the prediction of surface roughness, and the results show that the accuracy of the roughness prediction is as follows, respectively DBN: 78.1%, 68.8% and 84.4%, and ISSA-DBN: 93.8%, 87.5% and 100%.
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