树莓派的低成本维护解决方案

Martin Larrañaga, Riku Salokangas, O. Saarela, P. Kaarmila
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引用次数: 2

摘要

本文介绍了如何开发一种廉价的、能可靠监测输送机轴承的自动状态监测系统。为此,使用树莓派3和低成本MEMS加速度计将结果与更昂贵的数据采集系统进行比较。该项目利用安装在树莓派上的开源Mimosa数据模型来存储和传输数据进行分析,以诊断故障并确定剩余使用寿命(RUL)。所需的信号分析是用VTT Python O&M Analytics编程的,它提供了方便地执行信号分析的能力,提供了一套全面的算法,可以检测轴承故障并计算RUL。使用包络分析可以可靠地看到轴承故障频率的幅值,并且幅值的大小可以用来确定轴承是否有缺陷。此外,本文还介绍了一些可能的低成本数据采集系统,以可靠地监控工业用例中的组件。综上所述,树莓派3适合在一些工业系统中使用,例如,作为轴承维护的低成本单板计算机。该项目的目标是获得一种可靠且廉价的数据采集系统,用于轴承维护,并取代更昂贵的数据采集系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Low-Cost Solutions for Maintenance with a Raspberry Pi
The paper describes how to develop an inexpensive automatic condition monitoring system that can reliably monitor the conveyor bearings. For this purpose, a Raspberry Pi 3 and a low-cost MEMS accelerometer have been used comparing the results to a more expensive data acquisition system. The project utilizes the open-source Mimosa data model that is installed to the Raspberry Pi to store and transmit data for analytics to diagnose the fault and determine the Remaining Useful Life (RUL). The required signal analysis is programmed with VTT Python O&M Analytics, which provides the ability to conveniently perform signal analysis, offering a comprehensive set of algorithms that can detect a bearing failure and calculate the RUL. The amplitudes of the bearing fault frequencies can be reliably seen using envelope analysis, and the magnitude of the amplitudes can be used to determine whether the bearing is defective. Furthermore, this article presents some possible low-cost data acquisition systems to monitor components in industrial use cases reliably. In conclusion, Raspberry Pi 3 is suitable for use in some industrial systems, for example, as a low-cost single-board computer for bearing maintenance. The goal of the project is to get a reliable and inexpensive data acquisition system for bearing maintenance and replace the more expensive one.
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