A New Automation System for Equipment Status and Efficiency Detection with Machine Learning Based Image Processing

Yunus Emre Yurdagül, Okan Vural, Kaan Çelik, H. Atlı, Murat Saglam
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Abstract

Overall equipment effectiveness (OEE) is a necessary metric for monitoring and improving production processes in industry [Nakajima, 1988]. In order to make the OEE calculation properly, one needs to digitize the accurate data coming from the production line on the shopfloor, which is a challenge itself. The solution we present provides the accurate collection of production line status and OEE data required for monitoring and decision making. The problems found in existing solutions are overcome with advanced analytical methods such as video image processing and deep learning / machine learning. There are many solutions in the literature using traditional image processing approaches [Dalal, 2005] or machine learning methods [Felzenszwalb, 2010] to solve the object detection problem in the video. In recent years, deep learning methods have also yielded successful results in object detection [Girshick, 2014]. The innovative aspect of the solution we offer is that it is a system that learns patterns that may be different for each production line, and automatically predicts the production line status.
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一种基于机器学习的设备状态和效率检测自动化系统
总体设备效率(OEE)是监测和改进工业生产过程的必要指标[Nakajima, 1988]。为了正确地进行OEE计算,需要将来自车间生产线的准确数据数字化,这本身就是一个挑战。我们提出的解决方案提供了监控和决策所需的生产线状态和OEE数据的准确收集。现有解决方案中发现的问题可以通过视频图像处理和深度学习/机器学习等先进的分析方法来克服。文献中有许多解决方案,使用传统的图像处理方法[Dalal, 2005]或机器学习方法[Felzenszwalb, 2010]来解决视频中的目标检测问题。近年来,深度学习方法在目标检测方面也取得了成功的结果[Girshick, 2014]。我们提供的解决方案的创新之处在于,它是一个系统,可以学习每个生产线可能不同的模式,并自动预测生产线状态。
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