Estimation of surface roughness in a turning operation using industrial big data

Q3 Engineering
K. Chatterjee, Jian Zhang, U. S. Dixit
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引用次数: 0

Abstract

Surface roughness prediction in a turning process is of paramount importance. However, there is hardly any physics-based model that can predict it accurately. Recently, thanks to advancements in information technology, there are an ample amount of data in the industry. This article proposes a methodology to estimate surface roughness in turning based on industrial big data. An attempt has been made to extract and preserve the concise, useful information to reduce the burden on data storage. The proposed methodology predicts the lower, upper and most likely estimates of the surface roughness. A case study containing 35,000 datasets is simulated using a virtual lathe to demonstrate the efficacy of the methodology. The whole region of data is divided into 81 cells, and model fitting is carried out in each cell. The developed model based on industrial big data provides reasonable prediction of surface roughness.
利用工业大数据估算车削加工中的表面粗糙度
车削过程中的表面粗糙度预测是至关重要的。然而,几乎没有任何基于物理的模型可以准确地预测它。最近,由于信息技术的进步,该行业有大量的数据。提出了一种基于工业大数据的车削表面粗糙度估算方法。试图提取和保存简洁、有用的信息,以减轻数据存储的负担。提出的方法预测表面粗糙度的下限、上限和最可能的估计值。使用虚拟车床模拟了包含35,000个数据集的案例研究,以证明该方法的有效性。将整个数据区域划分为81个单元格,每个单元格进行模型拟合。该模型基于工业大数据,对表面粗糙度进行了合理的预测。
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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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