纳米SiC/GFRE复合材料层状镗刀车削加工过程中切削状态的优化预测

B. Yuvaraju, B. K. Nanda, Jithendra Srinivas
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引用次数: 2

摘要

提出了在镗杆表面采用纳米复合涂层(纳米sic /GFRE)进行内车削加工的被动振动控制方法。通过冲击锤试验,获得了不同组合刀柄的固有频率和阻尼比。考虑的三种不同配置是:常规(刀柄1);含1% SiC的纳米SiC/GFRE(刀柄2);纳米SiC/GFRE与2% SiC(刀柄3)。与其他刀柄相比,第三种刀柄结构具有更好的阻尼能力。此外,使用单模态数据,为所有三种刀架构建了分析稳定性波瓣图。采用Box-Behnken设计(BBD),对每个刀柄进行15组实验。针对第三种刀柄结构,利用神经网络模型研究了输入变量对表面粗糙度和刀具振动幅值的影响。最后,将神经网络回归模型作为函数估计工具应用于模拟退火中,以获得最优切削条件。
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Optimal cutting state predictions in internal turning operation with nano-SiC/GFRE composite layered boring tools
This paper presents passive vibration control methodology in internal turning process with the use of hybrid nanocomposite coatings (nano-SiC/GFRE) on the surface of boring bar. Natural frequencies and damping ratio of different composition tool holders are obtained experimentally using impact hammer test. Three different configuration considered are: conventional (tool holder 1); nano-SiC/GFRE with 1% SiC (tool holder 2); and nano-SiC/GFRE with 2% SiC (tool holder 3). A better damping ability is noticed in third configuration of tool holder compared to others. Furthermore, using single mode data, analytical stability lobe diagrams are constructed for all three tool holders. Moreover, Box-Behnken design (BBD) is adopted and a set of fifteen experiments are performed with each tool holder. For third configuration of tool holder, effect of input variables on the surface roughness and tool vibration amplitudes is studied using neural network model. Finally, the neural network regression model is employed as a function estimation tool in simulated annealing for obtaining optimal cutting conditions.
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来源期刊
International Journal of Machining and Machinability of Materials
International Journal of Machining and Machinability of Materials Engineering-Industrial and Manufacturing Engineering
CiteScore
2.40
自引率
0.00%
发文量
22
期刊介绍: IJMMM is a refereed international publication in the field of machining and machinability of materials. Machining science and technology is an important subject with application in several industries. Parts manufactured by other processes often require further operations before the product is ready for application. Machining is the broad term used to describe removal of material from a workpiece, and covers chip formation operations - turning, milling, drilling and grinding, for example. Machining processes can be applied to work metallic and non metallic materials such as polymers, wood, ceramics, composites and special materials. Today, in modern manufacturing engineering, there has been strong renewed interest in high efficiency machining.
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