Tool Condition Monitoring with Convolutional Neural Network for Milling Tools and Turning Inserts

A. Rifai, Silvyaniza Briliananda, H. Aoyama
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引用次数: 0

Abstract

Tool wear is one of the cost drivers in the manufacturing industry because it directly affects the quality of the manufactured workpiece and production efficiency. Identifying the right time to replace the cutting tool is a challenge. If the tool is replaced too soon, the production time can be disrupted, causing unscheduled downtime. Conversely, if it is replaced too late, there will be an additional cost to replace raw materials damaged by broken tools. Therefore, researchers continue to develop tool condition monitoring (TCM) methods to analyze tool wear. A recent popular method is machine vision with convolutional neural networks (CNN). The present research aims to develop classification models that can categorize the image data of milling and turning inserts into GO (suitable for use) and NO GO (not suitable for use). Two approaches are selected for the modeling process, custom learning and transfer learning, with image data input from smartphones and microscope cameras. The experimental results show that the best model is the transfer learning approach using Inception-V3 architecture with a smartphone image. The model reaches 92.2% accuracy, hence demonstrating a relatively good performance in determining whether the tool is suitable for use or not.
基于卷积神经网络的铣刀和车刀状态监测
刀具磨损是制造业成本驱动因素之一,它直接影响到制造工件的质量和生产效率。确定更换刀具的正确时间是一个挑战。如果过早更换工具,生产时间可能会中断,导致计划外停机。相反,如果更换得太晚,则会有额外的费用来更换因工具破损而损坏的原材料。因此,研究人员不断开发刀具状态监测(TCM)方法来分析刀具磨损。最近流行的一种方法是卷积神经网络(CNN)的机器视觉。本研究旨在建立分类模型,将铣削和车削刀片的图像数据分类为GO(适合使用)和NO GO(不适合使用)。建模过程选择了两种方法,自定义学习和迁移学习,从智能手机和显微镜相机输入图像数据。实验结果表明,使用Inception-V3架构的智能手机图像迁移学习方法是最好的模型。模型的准确率达到了92.2%,因此在判断工具是否适合使用方面表现出了较好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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