开发和利用合成信号进行电机故障诊断

Hadi Ashraf Raja;Karolina Kudelina;Bilal Asad;Toomas Vaimann;Anton Rassõlkin;Ants Kallaste
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引用次数: 0

摘要

随着信息技术与工业应用的融合,工业革命开辟了更多的道路。同样,通过将物联网与人工智能相结合,可以简化大多数工业流程。人工智能在这一发展过程中发挥着重要作用,无论是与电机的实时状态监测有关,还是与工业从定期维护转向预测性维护有关。人工智能面临的主要挑战之一是用于训练模型的数据的质量和数量,因为它需要大数据集来训练更准确、更高效的模型。本文介绍了一种对电机进行实时状态监测的数据采集系统。本文还对通过真实信号训练的模型和通过方程生成的合成信号进行了比较。这有助于确定利用合成信号来训练故障诊断模型从长远来看是否是一个好的选择。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Development and Utilization of Synthetic Signals for Fault Diagnostics of Electrical Machines
The industrial revolution has opened up more paths with the integration of information technology with industrial applications. Similarly, most industrial processes can be streamlined by combining the Internet of Things and artificial intelligence. Artificial intelligence has a significant role in this development, whether it is related to real-time condition monitoring of electrical machines or switching of the industry from scheduled maintenance to predictive maintenance. One of the main challenges for artificial intelligence is the quality and quantity of data used for training models, as it requires big datasets to train more accurate and efficient models. This article presents a data acquisition system with real-time condition monitoring of electrical machines. A comparison between trained models from real signals and synthetic signals, generated through the equation, is also covered in this article. This is to help identify whether utilizing synthetic signals for the training of fault diagnostics models can be a good alternative in the long run or not.
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