基于理论和深度学习的多晶材料表面粗糙度预测模型

IF 16.1 1区 工程技术 Q1 ENGINEERING, MANUFACTURING International Journal of Extreme Manufacturing Pub Date : 2023-06-02 DOI:10.1088/2631-7990/acdb0a
Chunlei He, Jiwang Yan, Shuqi Wang, Shuo Zhang, Guangsi Chen, C. Ren
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引用次数: 1

摘要

多晶材料在工业上有广泛的应用。其表面粗糙度对其工作性能有显著影响。材料缺陷,特别是晶界对多晶材料表面粗糙度的影响很大。然而,传统的分析方法很难建立考虑晶界效应的表面粗糙度的纯理论模型。在这项工作中,提出了一个理论和深度学习混合模型,用于预测金刚石车削多晶材料的表面粗糙度。从理论上计算了与刀具轮廓重复效应、工件材料塑性侧流、刀具与工件之间的相对振动等因素有关的运动学-动力学粗糙度分量。采用级联前向神经网络对材料缺陷粗糙度分量进行建模。在神经网络中,将最大未变形切屑厚度与切削刃半径之比R TS、工件材料性能(取向角θ g和晶粒尺寸dg)和主轴转速n s作为输入变量。将材料缺陷粗糙度分量设置为输出变量。为了验证所建立的模型,采用不同的加工参数和不同的金刚石刀具对搅拌摩擦加工制备的晶粒呈梯度分布的多晶铜进行了加工。与已有模型相比,该混合预测模型的预测精度有明显提高。在此模型的基础上,讨论了不同因素对多晶材料表面粗糙度的影响。定量分析了取向角和晶粒尺寸的影响机理。在不同的rts值下,观察到两种断裂模式,包括跨晶断裂和晶间断裂。同时,利用模拟退火算法得到了最优的工艺参数。在最佳切削参数下进行切削实验,最终获得了Sa为1.314 nm的平面光洁度。所建立的模型和相应的新发现有助于准确预测多晶材料的表面粗糙度,并有助于理解金刚石车削过程中材料缺陷的影响机理。
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A theoretical and deep learning hybrid model for predicting surface roughness of diamond-turned polycrystalline materials
Polycrystalline materials are extensively employed in industry. Its surface roughness significantly affects the working performance. Material defects, particularly grain boundaries, have a great impact on the achieved surface roughness of polycrystalline materials. However, it is difficult to establish a purely theoretical model for surface roughness with consideration of the grain boundary effect using conventional analytical methods. In this work, a theoretical and deep learning hybrid model for predicting the surface roughness of diamond-turned polycrystalline materials is proposed. The kinematic–dynamic roughness component in relation to the tool profile duplication effect, work material plastic side flow, relative vibration between the diamond tool and workpiece, etc, is theoretically calculated. The material-defect roughness component is modeled with a cascade forward neural network. In the neural network, the ratio of maximum undeformed chip thickness to cutting edge radius R TS, work material properties (misorientation angle θ g and grain size d g), and spindle rotation speed n s are configured as input variables. The material-defect roughness component is set as the output variable. To validate the developed model, polycrystalline copper with a gradient distribution of grains prepared by friction stir processing is machined with various processing parameters and different diamond tools. Compared with the previously developed model, obvious improvement in the prediction accuracy is observed with this hybrid prediction model. Based on this model, the influences of different factors on the surface roughness of polycrystalline materials are discussed. The influencing mechanism of the misorientation angle and grain size is quantitatively analyzed. Two fracture modes, including transcrystalline and intercrystalline fractures at different R TS values, are observed. Meanwhile, optimal processing parameters are obtained with a simulated annealing algorithm. Cutting experiments are performed with the optimal parameters, and a flat surface finish with Sa 1.314 nm is finally achieved. The developed model and corresponding new findings in this work are beneficial for accurately predicting the surface roughness of polycrystalline materials and understanding the impacting mechanism of material defects in diamond turning.
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来源期刊
International Journal of Extreme Manufacturing
International Journal of Extreme Manufacturing Engineering-Industrial and Manufacturing Engineering
CiteScore
17.70
自引率
6.10%
发文量
83
审稿时长
12 weeks
期刊介绍: The International Journal of Extreme Manufacturing (IJEM) focuses on publishing original articles and reviews related to the science and technology of manufacturing functional devices and systems with extreme dimensions and/or extreme functionalities. The journal covers a wide range of topics, from fundamental science to cutting-edge technologies that push the boundaries of currently known theories, methods, scales, environments, and performance. Extreme manufacturing encompasses various aspects such as manufacturing with extremely high energy density, ultrahigh precision, extremely small spatial and temporal scales, extremely intensive fields, and giant systems with extreme complexity and several factors. It encompasses multiple disciplines, including machinery, materials, optics, physics, chemistry, mechanics, and mathematics. The journal is interested in theories, processes, metrology, characterization, equipment, conditions, and system integration in extreme manufacturing. Additionally, it covers materials, structures, and devices with extreme functionalities.
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