Aeroengine performance is determined by temperature and pressure profiles along various axial stations within an engine. Given limited sensor measurements both along and between axial stations, we require a statistically principled approach to inferring these profiles. In this paper we detail a Bayesian methodology for interpolating the spatial temperature or pressure profile at axial stations within an aeroengine. The profile at any given axial station is represented as a spatial Gaussian random field on an annulus, with circumferential variations modelled using a Fourier basis and radial variations modelled with a squared exponential kernel. This Gaussian random field is extended to ingest data from multiple axial measurement planes, with the aim of transferring information across the planes. To facilitate this type of transfer learning, a novel planar covariance kernel is proposed, with hyperparameters that characterise the correlation between any two measurement planes. In the scenario where precise frequencies comprising the temperature field are unknown, we utilise a sparsity-promoting prior on the frequencies to encourage sparse representations. This easily extends to cases with multiple engine planes whilst accommodating frequency variations between the planes. The main quantity of interest, the spatial area average is readily obtained in closed form. We term this the Bayesian area average and demonstrate how this metric offers far more precise averages than a sector area average -- a widely used area averaging approach. Furthermore, the Bayesian area average naturally decomposes the posterior uncertainty into terms characterising insufficient sampling and sensor measurement error respectively. This too provides a significant improvement over prior standard deviation based uncertainty breakdowns.
翻译:轴心性能由发动机内各轴站的温度和压力状况决定。 鉴于轴心上和轴心之间传感器测量有限, 我们需要一种统计原则性的方法来推断这些剖面。 在本文中, 我们详细介绍了在轴心内对轴心站的空间温度或压力状况进行内插的巴伊西亚方法。 任何一个轴心部的剖面代表着一个空格上的空间高斯随机场, 以 Fleier 为基础, 以平方指数内核为模型, 并用平方指数内核模拟的辐射变化。 这个高斯随机场将扩展至从多个轴心心心测量机上采集的数据, 目的是将信息传输到多平面上。 为了便利这种类型的传输学习, 提出了一种新的平面心心心心心内核的剖面图, 将两个测量机上精确频率的精确度变化模拟为未知, 在频率前, 我们使用一个蒸汽- 快速的平面平面平面平面平面平面平面平面平面平面平面平面平面平面平面平面平面平面平面平面平面平面平面平面平面平面平面。