Fault Detection in Distributed Climate Sensor Networks Using Dynamic Bayesian Networks

George Chin, Sutanay Choudhury, L. Kangas, S. McFarlane, A. Márquez
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引用次数: 13

Abstract

The Atmospheric Radiation Measurement (ARM) program operated by the U.S. Department of Energy is one of the largest climate research programs dedicated to the collection of long-term continuous measurements of cloud properties and other key components of the earth’s climate system. Given the critical role that collected ARM data plays in the analysis of atmospheric processes and conditions and in the enhancement and evaluation of global climate models, the production and distribution of high-quality data is one of ARM’s primary mission objectives. Fault detection in ARM’s distributed sensor network is one critical ingredient towards maintaining high quality and useful data. We are modeling ARM’s distributed sensor network as a dynamic Bayesian network where key measurements are mapped to Bayesian network variables. We then define the conditional dependencies between variables by discovering highly correlated variable pairs from historical data. The resultant dynamic Bayesian network provides an automated approach to identifying whether certain sensors are malfunctioning or failing in the distributed sensor network. A potential fault or failure is detected when an observed measurement is not consistent with its expected measurement and the observed measurements of other related sensors in the Bayesian network. We present some of our experiences and promising results with the fault detection dynamic Bayesian network.
基于动态贝叶斯网络的分布式气候传感器网络故障检测
大气辐射测量(ARM)项目由美国能源部运营,是最大的气候研究项目之一,致力于收集云特性和地球气候系统其他关键组成部分的长期连续测量数据。鉴于收集的ARM数据在分析大气过程和条件以及增强和评估全球气候模式方面发挥着关键作用,生产和分发高质量数据是ARM的主要任务目标之一。ARM分布式传感器网络中的故障检测是保证高质量和有用数据的关键因素之一。我们将ARM的分布式传感器网络建模为动态贝叶斯网络,其中关键测量被映射到贝叶斯网络变量。然后,我们通过从历史数据中发现高度相关的变量对来定义变量之间的条件依赖关系。由此产生的动态贝叶斯网络提供了一种自动识别分布式传感器网络中某些传感器是否故障或失效的方法。当观察到的测量值与预期测量值和贝叶斯网络中其他相关传感器的观察测量值不一致时,就会检测到潜在的故障或故障。本文介绍了动态贝叶斯网络在故障检测方面的一些经验和成果。
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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