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Light-Weighted Deep Learning Model to Detect Fault in IoT-Based Industrial Equipment

机译:基于物联网的工业设备故障检测的轻量级深度学习模型

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摘要

Industry 4.0, with the widespread use of IoT, is a significant opportunity to improve the reliability of industrial equipment through problem detection. It is difficult to utilize a unified model to depict the working condition of devices in real-world industrial scenarios because of the complex and dynamic relationship between devices. The scope of this research is that it can detect equipment defects and deploys them in a natural production environment. The proposed research is describing an online detection method for system failures based on long short-term memory neural networks. In recent years, deep learning technology has taken over as the primary method for detecting faults. A neural network with a long short-term memory is used to develop an online defect detection model. Feature extraction from sensor data is done using the curve alignment method. Based on long-term memory neural networks, the fault detection model is built (LSTM). In the end, sliding window technology is used to identify and fix the problem: the model's online detection and update. The method's efficacy is demonstrated by experiments based on real data from power plant sensors.
机译:随着物联网的广泛使用,工业 4.0 是通过问题检测提高工业设备可靠性的重要机会。由于设备之间复杂而动态的关系,很难利用统一的模型来描述真实工业场景中设备的工作状态。这项研究的范围是它可以检测设备缺陷并将其部署在自然生产环境中。拟议的研究描述了一种基于长短期记忆神经网络的系统故障在线检测方法。近年来,深度学习技术已成为检测故障的主要方法。利用具有较长短期记忆的神经网络开发在线缺陷检测模型。使用曲线对齐方法从传感器数据中提取特征。基于长时记忆神经网络,构建了故障检测模型(LSTM)。最后,使用滑动窗口技术来识别和修复问题:模型的在线检测和更新。基于电厂传感器真实数据的实验证明了该方法的有效性。

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