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Modeling and optimization of surface roughness in single point incremental forming process

机译:单点渐进成形过程中表面粗糙度的建模和优化

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Single point incremental forming (SPIF) is a novel and potential process for sheet metal prototyping and low volume production applications. This article is focuses on the development of predictive models for surface roughness estimation in SPIF process. Surface roughness in SPIF has been modeled using three different techniques namely, Artificial Neural Networks (ANN), Support Vector Regression (SVR) and Genetic Programming (GP). In the development of these predictive models, tool diameter, step depth, wall angle, feed rate and lubricant type have been considered as model variables. Arithmetic mean surface roughness (Ra) and maximum peak to valley height (Rz) are used as response variables to assess the surface roughness of incrementally formed parts. The data required to generate, compare and evaluate the proposed models have been obtained from SPIF experiments performed on Computer Numerical Control (CNC) milling machine using Box–Behnken design. The developed models are having satisfactory goodness of fit in predicting the surface roughness. Further, the GP model has been used for optimization ofRaandRzusing genetic algorithm. The optimum process parameters for minimum surface roughness in SPIF have been obtained and validated with the experiments and found highly satisfactory results within 10% error.
机译:单点增量成形(SPIF)是一种新颖的潜在工艺,适用于钣金原型设计和小批量生产应用。本文重点研究SPIF工艺中用于表面粗糙度估计的预测模型的开发。 SPIF中的表面粗糙度已使用三种不同的技术建模,即人工神经网络(ANN),支持向量回归(SVR)和遗传编程(GP)。在这些预测模型的开发中,刀具直径,台阶深度,壁角,进给速率和润滑剂类型已被视为模型变量。算术平均表面粗糙度(Ra)和最大峰谷高度(Rz)用作响应变量,以评估渐进成形零件的表面粗糙度。生成,比较和评估建议模型所需的数据已从使用Box–Behnken设计在计算机数控(CNC)铣床上进行的SPIF实验中获得。所开发的模型在预测表面粗糙度方面具有令人满意的拟合优度。此外,GP模型已被用于使用遗传算法对RaandRzz进行优化。已经获得了SPIF中最小表面粗糙度的最佳工艺参数,并通过实验进行了验证,发现误差在10%以内的结果非常令人满意。

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