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Integrated Deep Learning and Statistical Process Control for Online Monitoring of Manufacturing Processes

机译:集成的深度学习和统计过程控制,可在线监控制造过程

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Advancements in online sensing technologies and wireless networking has reshaped the competitive landscape of manufacturing systems, leading to exponential growth of data. Among various data types, high-dimensional data sources such as images and videos play an important role in process monitoring. Efficient utilization of such sources can help systems reach high accuracy in fault diagnosis. On the other hand, while the researches on statistical process control (SPC) tools are tremendous, the application of SPC tools considering high-dimensional data sets has received less attention due to their complexity. In this paper, we try to address this gap by designing and developing a hybrid model based on deep learning (DL) and SPC models to monitor the manufacturing process in presence of high-dimensional data. In particular, we first apply a Fast Region-based Convolutional Network method referred to Fast R-CNN in order to monitor the image sequences over time. Then, some statistical features are derived and plotted on the multivariate exponentially weighted moving average (EWMA) control chart. The effectiveness of proposed hybrid model is illustrated through a numerical example.
机译:在线传感技术和无线网络的进步重塑了制造系统的竞争格局,导致数据呈指数增长。在各种数据类型中,高维数据源(例如图像和视频)在过程监视中起着重要作用。有效利用这些资源可以帮助系统在故障诊断中达到高精度。另一方面,尽管对统计过程控制(SPC)工具的研究非常广泛,但是考虑到高维数据集的SPC工具的复杂性,其应用却很少受到关注。在本文中,我们试图通过设计和开发基于深度学习(DL)和SPC模型的混合模型来解决这一差距,以在存在高维数据的情况下监控制造过程。特别是,我们首先应用一种称为Fast R-CNN的基于快速区域的卷积网络方法,以便随时间监视图像序列。然后,导出一些统计特征并将其绘制在多元指数加权移动平均值(EWMA)控制图上。通过数值例子说明了所提出的混合模型的有效性。

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