Distributed Self-Monitoring Sensor Networks Via Markov Switching Dynamic Linear Models

L. Fang, Juan Ye, S. Dobson
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Abstract

Wireless sensor networks empowered with low-cost sensing devices and wireless communications present an opportunity to enable continuous, fine-grained data collection over a wide environment. However, the quality of data collected is susceptible to the hardware conditions and also adversarial external factors such as high variance in temperature and humidity. Over time, the sensors report erroneous readings, which deviate from true readings. To tackle the problem, we propose an efficient self-monitoring, self-managing and self-adaptive sensing framework based on a dynamic hybrid Bayesian network that combines Hidden Markov Model and Dynamic Linear Model. The framework does not only enable automatic on-line inference of true readings robustly but also monitor the working status of sensor nodes at the same time, which can uncover important insights on hardware management. The whole process also benefits from the derived approximation algorithm and thus supports on-line one-pass computation with minimum human intervention, which make the accurate formal inference affordable for distributed edge processing.
基于马尔可夫切换动态线性模型的分布式自监测传感器网络
具有低成本传感设备和无线通信的无线传感器网络为在广泛的环境中实现连续、细粒度的数据收集提供了机会。然而,所收集数据的质量容易受到硬件条件和不利的外部因素(如温度和湿度的高变化)的影响。随着时间的推移,传感器会报告与真实读数偏差的错误读数。为了解决这一问题,我们提出了一种基于隐马尔可夫模型和动态线性模型相结合的动态混合贝叶斯网络的高效自监测、自管理和自适应感知框架。该框架不仅可以鲁棒地自动在线推断真实读数,同时还可以监控传感器节点的工作状态,从而揭示硬件管理的重要见解。整个过程也受益于导出的近似算法,因此支持在线一次计算,人工干预最少,这使得准确的形式推理可以用于分布式边缘处理。
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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