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Gaussian Process Regression for Sensor Networks Under Localization Uncertainty

机译:定位不确定性下传感器网络的高斯过程回归

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摘要

In this paper, we formulate Gaussian process regression with observations under the localization uncertainty due to the resource-constrained sensor networks. In our formulation, effects of observations, measurement noise, localization uncertainty, and prior distributions are all correctly incorporated in the posterior predictive statistics. The analytically intractable posterior predictive statistics are proposed to be approximated by two techniques, viz., Monte Carlo sampling and Laplace's method. Such approximation techniques have been carefully tailored to our problems and their approximation error and complexity are analyzed. Simulation study demonstrates that the proposed approaches perform much better than approaches without considering the localization uncertainty properly. Finally, we have applied the proposed approaches on the experimentally collected real data from a dye concentration field over a section of a river and a temperature field of an outdoor swimming pool to provide proof of concept tests and evaluate the proposed schemes in real situations. In both simulation and experimental results, the proposed methods outperform the quick-and-dirty solutions often used in practice.
机译:在本文中,由于资源受限的传感器网络,在定位不确定性的情况下,我们用观测值来制定高斯过程回归。在我们的表述中,观测的影响,测量噪声,定位不确定性和先验分布都正确地纳入了后验预测统计中。提出了分析上难以处理的后验预测统计量,可以通过两种技术(即蒙特卡洛采样和拉普拉斯方法)进行近似。此类逼近技术已针对我们的问题进行了精心设计,并对它们的逼近误差和复杂性进行了分析。仿真研究表明,所提出的方法比未适当考虑定位不确定性的方法具有更好的性能。最后,我们将提议的方法应用于从河流的一部分区域的染料浓度场和室外游泳池的温度场中通过实验收集的真实数据,以提供概念验证和评估提议的方案的真实情况。在仿真和实验结果中,所提出的方法均优于实际中经常使用的快捷方法。

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