面向机器学习和低数据速率物联网的数据驱动预测性维护故障检测

Wesley Bevan Richardson, Johan Meyer, S. V. Solms
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引用次数: 6

摘要

虽然预测性维护是一个已经存在了几十年的概念,但由于物联网和机器学习等第四次工业革命技术的相对较新出现和快速发展,它才更多地成为现实。农村社区在日常生活中面临着一些挑战,虽然已经制定了一些发展项目来解决这些问题,但由于多种因素,许多项目失败了。这些农村发展项目失败的原因之一是缺乏或不充分的维护。本研究的目的是展示如何使用一类支持向量机算法和低数据速率(带宽)物联网实现远程和农村地区数据驱动的预测性维护中的故障检测。本研究的结果显示了如何使用一类支持向量机算法和低带宽物联网传感器实现预测性维护中的故障检测,用于农村应用。这项研究的结果为在偏远地区和农村地区实施数据驱动的预测性维护提供了一个垫脚石。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards Machine Learning and Low Data Rate IoT for Fault Detection in Data Driven Predictive Maintenance
While predictive maintenance is a concept that has been around for several decades, it is only due to the relatively recent arrival and expeditious development of fourth industrial revolution technologies, such as the internet of things and machine learning, that it has become more of a reality. Rural communities face several challenges in their day to day lives and while several development projects have been enacted to address these problems, many have failed due to a multitude of factors. One of the contributing factors to these rural development projects failing is the lack of or insufficient maintenance. The aim of this study was to show how fault detection in data driven predictive maintenance in remote and rural locations could be achieved using the one-class support vector machines algorithm and low data rate (bandwidth) internet of things. The results of this study show how fault detection in predictive maintenance can be achieved using the one-class support vector machines algorithm and low bandwidth internet of things sensors, for rural applications. The outcome of this study provides a steppingstone to implementing data driven predictive maintenance in remote and rural locations.
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