An IIoT-Device for Acquisition and Analysis of High-Frequency Data Processed by Artificial Intelligence

Jens Kneifel, R. Roj, H. Woyand, R. Theiss, P. Dültgen
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Abstract

This publication presents the development of an Industrial-Internet-of-Things device. The device is capable of completing several tasks, such as the acquisition of high-frequency measurement data and evaluating data via machine learning methods in an artificial intelligence application. The installed measurement technology generates data which is comparable to data generated by costly laboratory equipment, meaning that it can be used as a low-budget and open-source alternative. A workflow method has been designed that promotes experimental work and simplifies the effort required to implement artificial intelligence solutions. At the end of this paper, the results of the experiment, which aimed to collect measurement data, extract suitable features, and train artificial intelligence models, are presented. Techniques from vibration analysis were used for feature extraction, and concepts for the extrapolation and enhancement of data sets were investigated. The test results have proven that the development is comparable with high-end laboratory equipment. The created application has demonstrated sufficient accuracy in predictions, and the designed process can be used for arbitrary, artificial intelligence-based rapid prototyping.
一种用于人工智能处理的高频数据采集和分析的iiot设备
本出版物介绍了一种工业物联网设备的开发。该设备能够完成多项任务,例如在人工智能应用中通过机器学习方法获取高频测量数据和评估数据。安装的测量技术产生的数据与昂贵的实验室设备产生的数据相当,这意味着它可以作为低预算和开源的替代方案使用。设计了一种工作流方法,可以促进实验工作并简化实现人工智能解决方案所需的工作。最后给出了采集测量数据、提取合适特征、训练人工智能模型的实验结果。利用振动分析技术进行特征提取,并研究了数据集外推和增强的概念。测试结果证明,该开发可与高端实验室设备相媲美。所创建的应用程序在预测方面已经证明了足够的准确性,设计的过程可以用于任意的、基于人工智能的快速原型设计。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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