嵌入式物联网微控制器执行器故障诊断平台

Shaowei Chen, Yanping Huang, Pengfei Wen, Chunyue Gu, Shuai Zhao
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引用次数: 1

摘要

在复杂机电设备的监测与故障诊断过程中,故障诊断过程与前端设备之间的紧密耦合,可以有效减少严重故障的发生,显著提高经济效益。本文针对实时运行的复杂机电设备,设计并实现了一种用于工业设备监测与诊断的物联网框架。所有的过程都是在硬件样机上物理实现的,包括硬件选择、软件配置、机器学习模型移植和数据通信。物理平台的框架具有通用性和灵活性。它可以部署在各种监控场景中,并根据应用灵活定制部署的人工智能(AI)模型。将SVM、ANN和LSTM模型三种典型的机器学习算法移植到STM32单片机上,比较结果。最后,在NASA机电致动器(EMAs)数据集上进行了实验验证。
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A Fault Diagnosis Platform of Actuators on Embedded IoT Microcontrollers
In the process of monitoring and fault diagnosis of complex electromechanical equipment, the close coupling between the fault diagnosis process and the front-end equipment can effectively reduce the occurrence of serious faults and significantly improve the economic benefits. In this paper, an Internet of Things (IoT) framework for monitoring and diagnosing industrial equipment is designed and implemented for complex electromechanical equipment running in real-time. All the procedures are physically implemented on a hardware prototype, which includes hardware selection, software configuration, transplanting of machine learning (ML) model and data communication. The framework of the physical platform is universal and flexible. It can be deployed in various monitoring scenarios, and flexibly customize the deployed artificial intelligence (AI) models according to their applications. Three typical machine learning algorithms of SVM, ANN and LSTM models are transplanted to STM32 MCU to compare the results. Finally, the proposed method is experimentally validated on NASA Electro-mechanical actuators (EMAs) data set.
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