Process modeling for machining Inconel 825 using cryogenically treated carbide insert

Q2 Engineering Metal Powder Report Pub Date : 2021-12-01 DOI:10.1016/j.mprp.2020.06.001
Sumit Kumar , P. Sudhakar Rao , Deepam Goyal , Shankar Sehgal
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引用次数: 4

Abstract

The ubiquity of artificial intelligence in the manufacturing domain draws inspiration for the present article. The implementation of a neural network technique is still a difficult and time-consuming effort for the industry. Prediction of machining variables is a considerable issue that needs to be explored for preventive maintenance of the machine structure and to optimize the surface quality. This work aims at predicting response parameters of the dry turning process for Inconel 825 alloy using deep-cryogenic treated tungsten-carbide insert through artificial neural network technique. Process parameters considered in this work were cutting speed, feed and depth of cut, whereas, surface-roughness, tool-wear, and material-removal-rate were taken as the three response parameters.14 types of training functions were compared based upon their error indices searching for the training function which best suits this work. Artificial Neural Network (ANN) model was developed by taking Bayesian regularization back propagation based training function. The response values predicted by the ANN were in very close approximation to the actual experimental value with the mean square error of only 0.0011 μm2, 39.0882 μm2 and 0.0520 cm6/min2in the prediction of surface-roughness, tool-wear, and material-removal-rate of dry turning process of Inconel 825 using treated carbide tool.

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低温处理硬质合金刀片加工Inconel 825的工艺建模
人工智能在制造领域的无处不在为本文提供了灵感。神经网络技术的实现对业界来说仍然是一项困难且耗时的工作。加工变量的预测是机械结构预防性维护和表面质量优化的一个重要问题。利用人工神经网络技术对深冷处理的碳化钨刀片加工Inconel 825合金干车削过程的响应参数进行了预测。本文考虑的工艺参数为切削速度、进给量和切削深度,而响应参数为表面粗糙度、刀具磨损和材料去除率。根据误差指标对14种训练函数进行比较,寻找最适合本工作的训练函数。采用基于贝叶斯正则化反向传播的训练函数建立人工神经网络模型。人工神经网络预测的Inconel 825硬质合金干车削过程的表面粗糙度、刀具磨损和材料去除率的均方误差分别为0.0011 μm2、39.0882 μm2和0.0520 cm6/min2,与实际实验值非常接近。
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Metal Powder Report
Metal Powder Report Engineering-Automotive Engineering
自引率
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发文量
25
期刊介绍: Metal Powder Report covers the powder metallurgy industry worldwide. Each issue carries news and features on technical trends in the manufacture, research and use of metal powders. Metal Powder Report is recognised by parts manufacturers and end-users worldwide for authoritative and high quality reporting and analysis of the international powder metallurgy industry. Included in your Metal Powder Report subscription will be the PM World Directory. This extensive directory will provide you with a valuable comprehensive guide to suppliers of materials, equipment and services to the PM industry.
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