School of Mechanical Engineering, VIT University Chennai Campus, Vandalur-Kelambakkam Road, Keelakottatiyur, Chennai 600127, India.
Department of Mechanical Engineering, SNS College of Technology, Coimbatore, India.
Comput Intell Neurosci. 2022 Jul 15;2022:3205960. doi: 10.1155/2022/3205960. eCollection 2022.
Machining activities in recent times have shifted their focus towards tool life and tool wear. Cutting tools have been utilized on a daily basis and play a vital role in manufacturing industries. Prolonged and incessant operation of the cutting tool can lead to wear and tear of the component, thereby compromising the dimensional accuracy. The condition of a tool is estimated based upon the surface quality of the machined component, condition of the machine, and the rate of production. Maintaining the tool health plays a vital role in enhancing the productivity of manufacturing industries. Numerous efforts were experimented by the researchers to maintain the tool health condition. The drawbacks of conventional diagnostic techniques include requirement of high level of human intelligence and professional expertise on the field, which led the researchers to develop intelligent and automatic diagnostic tools. There are many techniques suggested by researchers to detect the condition of single point cutting tool. This article proposes the use of transfer learning technology to detect the condition of single point cutting tool. First, the vibration signals were collected from the cutting tool and plots were made which will work as input to the deep learning algorithms. The deep learning algorithms have the capability to learn from the plots of vibration signals and classify the state of the single point cutting tool. In this work, the pretrained networks such as VGG-16, AlexNet, ResNet-50, and GoogLeNet were employed to identify the state of the cutting tool. In the pretrained networks, the effect of hyperparameters such as batch size, solver, learning rate, and train-test split ratio was studied, and the best performing network was suggested for tool condition monitoring.
近年来,机械加工活动的重点已经转向了刀具寿命和刀具磨损。切削工具每天都在使用,在制造业中起着至关重要的作用。切削工具的长时间连续运行会导致部件磨损,从而影响尺寸精度。刀具的状况是根据加工部件的表面质量、机器的状况和生产速度来估计的。保持刀具的健康状况对于提高制造业的生产力至关重要。研究人员已经进行了许多尝试来保持刀具的健康状况。传统诊断技术的缺点包括对现场高水平的人类智能和专业知识的需求,这促使研究人员开发智能和自动诊断工具。研究人员提出了许多技术来检测单点切削刀具的状况。本文提出使用迁移学习技术来检测单点切削刀具的状况。首先,从刀具上采集振动信号,并绘制图表作为深度学习算法的输入。深度学习算法能够从振动信号的图表中学习,并对单点切削刀具的状态进行分类。在这项工作中,使用了预训练网络,如 VGG-16、AlexNet、ResNet-50 和 GoogLeNet,来识别刀具的状态。在预训练网络中,研究了超参数(如批量大小、求解器、学习率和训练-测试分割比)的影响,并建议使用性能最佳的网络进行刀具状态监测。