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Forecasting fault events for predictive maintenance using data-driven techniques and ARMA modeling

机译:使用数据驱动技术和ARMA建模预测故障事件以进行预测性维护

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Presently, time-based airline maintenance scheduling does not take fault predictions into account, but happens at fixed time-intervals. This may result in unnecessary maintenance interventions and also in situations where components are not taken out of service despite exceeding their designed risk of failure. To address this issue we propose a framework that can predict when a component/system will be at risk of failure in the future, and therefore, advise when maintenance actions should be taken. In order to facilitate such prediction, we employ an auto-regressive moving average (ARMA) model along with data-driven techniques, and compare the performance of multiple data-driven techniques. The ARMA model adds a new feature that is used within the data driven model to give the final prediction. The novelty of our work is the integration of the ARMA methodology with data-driven techniques to predict fault events. This study reports on a real industrial case of unscheduled removals of a critical valve of the aircraft engine. Our results suggest that the support vector regression model can outperform the life usage model on the evaluation measures of sample standard deviation, median error, median absolute error, and percentage error. The generalized linear model provides an effective approach for predictive maintenance with comparable results to the baseline. The remaining data-driven models have a lower overall performance.
机译:当前,基于时间的航空公司维护计划并未考虑故障预测,而是以固定的时间间隔进行。这可能会导致不必要的维护干预,并且还会导致尽管组件超出其设计的故障风险却仍无法停止使用的情况。为了解决这个问题,我们提出了一个框架,该框架可以预测组件/系统将来何时会出现故障的风险,因此可以建议何时应采取维护措施。为了促进这种预测,我们将自动回归移动平均(ARMA)模型与数据驱动技术一起使用,并比较多种数据驱动技术的性能。 ARMA模型添加了一项新功能,该功能在数据驱动模型中使用以提供最终预测。我们工作的新颖之处在于将ARMA方法与数据驱动技术相集成以预测故障事件。这项研究报告了飞机发动机关键气门的非计划性拆卸的实际工业案例。我们的结果表明,在样本标准偏差,中位数误差,中位数绝对误差和百分比误差的评估指标上,支持向量回归模型可以优于寿命使用模型。广义线性模型为预测性维护提供了一种有效的方法,其结果与基线相当。其余的数据驱动模型的整体性能较低。

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