基于刀具振动识别刀具刃口磨损量的密度聚类自动生成方法

K. K. L. B. Adikaram, J. Herwan, Y. Furukawa, H. Komoto
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引用次数: 0

摘要

在工业4.0中,确定工具在操作过程中的刀具侧面磨损量(TFW)是保持机器效率和产品标准的重要和成本敏感因素。因此,在这方面开发了各种预测分析工具,目的是快速有效地采取纠正措施。本文提出了一种基于大数据可视化和图形知识单元(GKU)的密度聚类生成方法,通过绘制切割过程中产生的振动来估计TFW量。由于数据重叠,GKU通过增加相交标记中的RGB颜色值来生成密度簇。在我们之前的工作中,检查了附着在计算机数控车床上的刀具的TFW量。将一个初始外径为110毫米的灰铸铁工件切割至60毫米。重复此过程,直到根据ISO 4288测量的TFW量达到推荐值范围(0.3±0.005 mm)。每次切割后,按照ISO 4288标准测量TFW量和表面粗糙度。振动是用附着在车床刀柄上的三轴加速度计记录的。在本工作中,在29个切割圆中,使用GKU绘制了选定岩屑沿x轴和沿y轴的振动。以像素的颜色值为指标,测量图中心的密度(定点,FP)和最高密度的密度(动态点,DP)。结果表明,TFW量与在FP处通过像素颜色值投影的振动数据密度之间存在很强的线性相关性(0.95)。这表明用GKU对振动进行处理是一种很有前途的估计TFW量的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Automatic Density Cluster Generation Method to Identify the Amount of Tool Flank Wear via Tool Vibration
Determining the amount of tool flank wear (TFW) of a tool during operation is an important and cost-sensitive factor for maintaining the efficiency of the machine and product standards in Industry 4.0. Therefore, a variety of predictive analysis tools have been developed in this regard, with the objective of taking corrective action quickly and efficiently. In this paper, we present a TFW amount estimating method via plotting vibration generated during the cutting process on big data visualization and density cluster generation method known as Graphical Knowledge Unit (GKU). GKU generates density clusters by incrementing the RGB color values in the intersected markers due to data overlapping. In our previous work, the TFW amount of a cutting tool attached to a Computer Numerical Control (CNC) turning machine was checked. A workpiece of grey cast iron with an initial outer diameter of 110 mm was cut until it reached 60 mm. This process was repeated until the TFW amount, which was measured according to ISO 4288, met the recommended value range (0.3 ± 0.005 mm). After each cut, TFW amount and the surface roughness were measured following ISO 4288. Vibration was recorded using a triaxial accelerometer attached to the tool shank of the turning machine. In the present work, out of 29 cutting circles, vibration along the x-axis against vibration along the y-axis of selected cuttings were plotted using GKU. The density of the center of the plot (fixed point, FP) and the density of the highest density (dynamic point, DP) were measured using the color values of pixels as an index. The results showed a very strong linear correlation (0.95) between the TFW amount and vibration data density projected via pixel color values at FP. This shows that processing of vibration with GKU is a promising method to estimate TFW amount.
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