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Tool wear monitoring system in belt grinding based on image-processing techniques

机译:基于图像处理技术的皮带研磨工具磨损监测系统

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摘要

Tool wear monitoring is a major concern in securing surface quality of workpieces and performance of the machining process. Most existing tool wear monitoring techniques seem to have looked at places other than the tool itself for solution or simply inapplicable in the highly automated industries. With insights from these techniques, this paper thus proposes an image-processing-based tool wear monitoring method that combines random forest classifier (RFC) and a multiple linear regression (MLR) model to detect different wear conditions and evaluate the remaining grinding ability for robotic belt grinding. Through a non-contact digital microscope capturing images of belt surfaces, the correlation between abrasive grain area and grinding belt life is established, the tree-based RFC method is applied for belt condition monitoring, and a MLR model to grinding ability evaluation. Results from training and testing verify the validity of the proposed monitoring method: the total prediction accuracy of RFC is over 90% under different grinding belt conditions, and the mean absolute percentage error of the MLR model is less than 3.39%.
机译:工具磨损监控是保护工件表面质量和加工过程的性能的主要问题。大多数现有的工具磨损监测技术似乎已经看过除工具本身以外的地区以外的地方,或者在高度自动化的行业中难以使用。本文利用了这些技术的见解,本文提出了一种基于图像处理的工具磨损监测方法,其将随机林分类器(RFC)和多元线性回归(MLR)模型结合以检测不同的磨损条件,并评估机器人的剩余研磨能力。皮带磨削。通过不接触的数字显微镜捕获皮带表面的图像,建立了磨料晶粒面积和研磨带寿命之间的相关性,基于树的RFC方法应用于皮带状况监测,以及用于研磨能力评估的MLR模型。培训和测试的结果验证了所提出的监测方法的有效性:在不同的研磨带条件下RFC的总预测精度超过90%,MLR模型的平均绝对百分比误差小于3.39%。

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