利用基于粒子群优化的支持向量机智能预测 42CrMo 钢切割表面粗糙度的研究

IF 1.9 4区 工程技术 Q2 Engineering International Journal of Precision Engineering and Manufacturing Pub Date : 2024-07-17 DOI:10.1007/s12541-024-01077-6
HaiYue Zhao, Yan Cao, Gorbachev Sergey, Victor Kuzin, Jiang Du, WeiLiang He
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引用次数: 0

摘要

42CrMo 高强度钢是一种难以加工且难以控制加工表面质量的材料。为确保切削过程中表面质量的稳定性,引导切削参数的调整,准确预测 42CrMo 钢的加工表面粗糙度(Ra)。基于实验平台进行了单因素切削、正交切削和响应面切削实验,并对表面粗糙度测量结果进行了单因素分析、范围分析和灰色关联分析。结果表明,在给定范围内,每齿进给量对表面粗糙度的影响最大,而切削深度对表面粗糙度的影响最小。利用切削 42CrMo 钢的加工表面粗糙度实验数据,开发了 PSO-SVM 表面粗糙度预测模型,并与其他广泛使用的表面粗糙度预测模型(BP、SVM、GA-BP、PSO-BP)进行了比较。可以得出结论:PSO-SVM 训练集预测模型的平均相对预测误差为 4.76%,拟合优度 R2 = 0.87198,非常接近 1。由于能有效指导切削参数的选择和调整,PSO-SVM 表面粗糙度预测模型具有较高的预测精度、良好的拟合度和稳定性。这对研究 42CrMo 钢的切削工艺和表面质量也具有一定的参考价值。
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Research on Intelligent Prediction of Surface Roughness in Cutting 42CrMo Steel by using Particle Swarm Optimization-based Support Vector Machine

42CrMo high-strength steel is a material that is difficult to machine and has difficulties controlling the quality of the machined surface. To ensure the stability of surface quality during cutting, lead the adjustment of cutting parameters to accurately predict the 42CrMo steel's machined surface roughness (Ra). Single factor cutting, orthogonal cutting, and response surface cutting experiments were conducted based on the experimental platform, and single factor, range, and grey correlation analyses were performed on the surface roughness measurement results. It can be concluded that within a given range, the feed per tooth has the greatest impact on surface roughness, and the cutting depth has the least impact on surface roughness. The PSO-SVM surface roughness prediction model was developed and compared with other widely used surface roughness prediction models (BP, SVM, GA-BP, PSO-BP) by using experimental data on the machined surface roughness of cutting 42CrMo steel. It can be concluded that the PSO-SVM training set prediction model has an average relative prediction error of 4.76% and a goodness of fit R2 = 0.87198, which is quite near to 1. The PSO-SVM testing set prediction model has an average relative prediction error of 12.65% and a goodness of fit of R2 = 0.86406, which is quite near to 1. Since it can effectively guide the selection and adjustment of cutting parameters, the PSO-SVM surface roughness prediction model has high prediction accuracy, good fitting degree, and stability. It also has a specific reference value for the study of the cutting process and surface quality of 42CrMo steel.

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来源期刊
CiteScore
4.10
自引率
10.50%
发文量
115
审稿时长
3-6 weeks
期刊介绍: The International Journal of Precision Engineering and Manufacturing accepts original contributions on all aspects of precision engineering and manufacturing. The journal specific focus areas include, but are not limited to: - Precision Machining Processes - Manufacturing Systems - Robotics and Automation - Machine Tools - Design and Materials - Biomechanical Engineering - Nano/Micro Technology - Rapid Prototyping and Manufacturing - Measurements and Control Surveys and reviews will also be planned in consultation with the Editorial Board.
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