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Online Bayesian Data Fusion in Environment Monitoring Sensor Networks

机译:环境监测传感器网络中的在线贝叶斯数据融合

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摘要

Assuring reliable data collection in environment monitoring sensor network is a major design challenge. This paper gives a novel Bayesian model to reliably monitor physical phenomenon. We briefly review the errors on the data transfer channel between the sensor quantifying the physical phenomenon and the fusion node, and a discreteK-ary input andK-ary output channel is presented to model the data transfer channel, whereKis the number of quantification levels at the sensor. Then, discrete time series models are used to estimate the mean value of the physical phenomenon, and the estimation error is modeled as a Gaussian process. Finally, based on the transition probability of the proposed data transfer channel and the probability of the estimated value transited to specific quantification levels, the level with the maximum posterior probability is decided to be the current value of the physical phenomenon. Evaluations based on real sensor data show that significant gain can be achieved by the proposed algorithms in environment monitoring sensor networks compared with channel-unaware algorithms.
机译:在环境监控传感器网络中确保可靠的数据收集是一项主要的设计挑战。本文提出了一种新颖的贝叶斯模型来可靠地监视物理现象。我们简要回顾了传感器在量化物理现象和融合节点之间的数据传输通道上的错误,并提出了离散的K元输入和K元输出通道来对数据传输通道进行建模,其中K为量化级的数量。传感器。然后,使用离散时间序列模型估计物理现象的平均值,并将估计误差建模为高斯过程。最后,根据提议的数据传输通道的转移概率和估计值转移到特定量化级别的概率,将具有最大后验概率的级别确定为物理现象的当前值。基于真实传感器数据的评估表明,与不知道信道的算法相比,所提出的算法在环境监测传感器网络中可以实现显着的增益。

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