金属加工行业:基于边缘计算的云监控系统的质量管理

Zheng-Wei Wu, Shang-Chih lin, Po-Chun Hu, S. Su, Yennun Huang
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引用次数: 0

摘要

本研究使用边缘计算系统在金属加工行业进行快速质量筛选,物联网技术负责将数据传输到云端进行可视化和分析。首先,该系统由光学元件和嵌入式系统组成。进一步,利用快速傅里叶变换使图像具有频率特征。而随机核模型与图像之间的卷积运算是特征提取的主要手段。为了评估该方法的性能和收敛性,定义了一种快速筛选好/坏产品的机制。最后通过MQTT协议将数据传递给云(ThingSpeak)平台进行可视化,由后台主机对内容进行订阅,执行模糊推理系统的质量决策。结果被释放回云端。工业实例的实验结果表明,该方法能够准确、快速地完成表面粗糙度的质量检测,特征分布易于理解。同时,边缘计算系统具有响应即时、成本低的优势,而物联网技术带来了更多的管理和分析便利性。在未来的研究中,基于卷积神经网络的无监督学习算法是一个潜在的应用,它可以通过大量的数据来学习质量的好坏。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Metalworking Industry: Quality Management via Edge Computing-Based Cloud Monitoring System
This study uses the edge computing system for fast quality screening in the metal processing industry, and the Internet of Things technology is responsible for delivering data to the cloud for visualization and analysis. First, the system consists of optical components and embedded systems. Further, a fast Fourier transform is used to make the image have frequency characteristics. However, the convolution operation between the random kernel model and the image is the main means of feature extraction. In order to evaluate the performance and convergence of the proposed method, a rapid screening mechanism for good/bad products is defined. Finally, the data is passed to the cloud (ThingSpeak) platform for visualization through the MQTT protocol, and the content is subscribed to the content by the background host to perform the quality decision of the fuzzy inference system. The result is released back to the cloud. The experimental results in the industrial example show that the proposed method can accurately and quickly complete the quality inspection of surface roughness, and the feature distribution is easy to understand. At the same time, the edge computing system has the advantages of instant response and low cost, while the Internet of Things technology brings more management and analysis convenience. In future research, the unsupervised learning algorithm based on convolutional neural networks is a potential application, which can learn the quality of good or bad through a large amount of data.
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