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Case Studies: Big Data Analytics for System Health Monitoring

机译:案例研究:系统健康监测大数据分析

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This paper describes a case-study where we built and exercised a cloud computing framework with machine learning (ML) algorithms to improve the accuracy of Auxiliary Power Units (APU) health monitoring. An APU is a small turbo machine that flies on all commercial transport airplanes. The paper describes the objective of our study, sources of available data, the ETL scripts to populate the underlying HBase tables and two examples. In one example machine learning algorithms operating on multiple data sources produce useful insights to increase our ability to predict APU wear from 39% to 56%. In the second example, it increased our ability to predict shutdown events from 19% to 60%. This case-study illustrates the effectiveness of big data analytics and tools to discover additional insights that can further reduce operational interrupts arising from airborne equipment problems.
机译:本文介绍了一个案例研究,我们建立和行使了机器学习(ML)算法的云计算框架,以提高辅助电源单元(APU)健康监测的准确性。 APU是一款小型涡轮机,它在所有商业运输飞机上飞行。本文介绍了我们研究的目标,可用数据的来源,填充底层HBase表和两个示例的ETL脚本。在一个示例中,在多个数据源上运行的机器学习算法产生了有用的见解,以提高我们预测APU的能力从39%到56%。在第二个例子中,它提高了从19%到60%的停机事件的能力。本案例研究说明了大数据分析和工具的有效性,以发现可以进一步降低机载设备问题所产生的运营中断的额外见解。

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