Prognostics model for tool life prediction in milling using texture features of surface image data

K. Kumar, N. Arunachalam, L. Vijayaraghavan
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引用次数: 1

Abstract

In a machine tool, the cutting tool is mainly responsible for producing a component with good surface quality. With the time the cutting tool wear out and affects the surface quality. Hence it is very important to monitor the condition of the cutting tool to avoid the production of substandard parts. In this work the face milling cutter is made to interact with hardened steel components to manufacture the required surfaces with a specified amount of stock removal. The cutting conditions are selected and machining is done till the tool reaches its critical flank wear value. The captured surface images are analyzed using the statistical and spectral texture analysis methods. The flank wear of the cutting insert is measured at frequent intervals. The evaluated texture features are correlated with the flank wear using the multivariate correlation methods. The significant features are selected based on the correlation value and its mutual correlation value with other features. The selected texture features are plotted against machining time or the number of components. The developed regression model based on the selected parameters and the time is used to predict the flank wear.
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基于表面图像数据纹理特征的铣削刀具寿命预测模型
在机床中,刀具主要负责生产具有良好表面质量的零件。随着时间的推移,刀具磨损,影响表面质量。因此,对刀具状态进行监控,以避免不合格零件的生产是十分重要的。在这项工作中,面铣刀与硬化钢部件相互作用,以制造所需的表面,并去除指定数量的坯料。选择切削条件并进行加工,直到刀具达到其临界侧面磨损值。利用统计和光谱纹理分析方法对捕获的地表图像进行分析。经常测量切削齿的侧面磨损。利用多元相关方法将评价得到的纹理特征与翼面磨损进行关联。根据相关值及其与其他特征的相互相关值选择重要特征。选择的纹理特征根据加工时间或部件数量绘制。建立了基于所选参数和时间的回归模型,对齿面磨损进行了预测。
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