Helicopter vibration sensor selection using data visualisation

W. S. Gill, I. Nabney, D. Wells
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引用次数: 2

Abstract

The main objective of the project† is to enhance the already effective health-monitoring system (HUMS) for helicopters by analysing structural vibrations to recognise different flight conditions directly from sensor information. The goal of this paper is to develop a new method to select those sensors and frequency bands that are best for detecting changes in flight conditions. We projected frequency information to a 2-dimensional space in order to visualise flight-condition transitions using the Generative Topographic Mapping (GTM) and a variant which supports simultaneous feature selection. We created an objective measure of the separation between different flight conditions in the visualisation space by calculating the Kullback-Leibler (KL) divergence between Gaussian mixture models (GMMs) fitted to each class: the higher the KL-divergence, the better the interclass separation. To find the optimal combination of sensors, they were considered in pairs, triples and groups of four sensors. The sensor triples provided the best result in terms of KL-divergence. We also found that the use of a variational training algorithm for the GMMs gave more reliable results.
利用数据可视化选择直升机振动传感器
该项目的主要目标是通过分析结构振动来直接从传感器信息中识别不同的飞行条件,从而增强已经有效的直升机健康监测系统(HUMS)。本文的目标是开发一种新的方法来选择最适合检测飞行条件变化的传感器和频段。我们将频率信息投影到二维空间,以便使用生成式地形映射(GTM)和支持同步特征选择的变体来可视化飞行状态转换。我们通过计算每个类别的高斯混合模型(gmm)之间的Kullback-Leibler (KL)散度,创建了可视化空间中不同飞行条件之间分离的客观度量:KL散度越高,类别间分离越好。为了找到最优的传感器组合,他们被考虑成对,三组和一组四个传感器。传感器三元组在kl散度方面提供了最好的结果。我们还发现,使用变分训练算法的GMMs给出了更可靠的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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