This manuscript outlines an automated anomaly detection framework for jet engines. It is tailored for identifying spatial anomalies in steady-state temperature measurements at various axial stations in an engine. The framework rests upon ideas from optimal transport theory for Gaussian measures which yields analytical solutions for both Wasserstein distances and barycenters. The anomaly detection framework proposed builds upon our prior efforts that view the spatial distribution of temperature as a Gaussian random field. We demonstrate the utility of our approach by training on a dataset from one engine family, and applying them across a fleet of engines -- successfully detecting anomalies while avoiding both false positives and false negatives. Although the primary application considered in this paper are the temperature measurements in engines, applications to other internal flows and related thermodynamic quantities are made lucid.
翻译:本手稿概述了喷气发动机自动异常现象探测框架,专门用于识别发动机中各轴站稳定状态温度测量的空间异常现象。框架基于高斯测量的最佳运输理论,为瓦西斯坦距离和干燥中心提供了分析解决方案。提议的异常现象探测框架基于我们先前的努力,将温度的空间分布视为高斯兰随机场。我们通过培训一个引擎系列的数据集,将其应用于一个发动机系列,在发动机车队中应用 -- -- 成功发现异常现象,同时避免假正数和假负数。虽然本文考虑的主要应用是发动机温度测量,但对其他内部流动的应用和相关热力量的量是清晰的。