基于序贯全局优化的移动无线传感器网络定位

Ido Nevat, G. Peters, I. Collings
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引用次数: 0

摘要

提出了一种新的移动无线传感器网络源定位方法。在基于似然的推理方法中,标准方法对物理过程和传播环境的统计特征做出明确的假设,这些假设是由分布模型假设产生的。相比之下,我们采用了统计学中称为非参数建模框架的方法,该方法允许人们放宽所需统计假设的数量,特别是关于接收信号的分布特性和物理过程。这是通过通过高斯过程框架将问题重新表述为灵活的非参数回归模型来实现的。将这种建模视角与贝叶斯优化机制相结合,我们将全局优化目标构建为一个顺序决策问题。然后,我们开发了一种有效的算法来顺序选择移动传感器在通信和移动性约束下应该获得观测的最佳位置。仿真结果证明了该算法在无线传感器网络中实现精确定位的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Localization in mobile wireless sensor networks via sequential global optimization
We develop a novel approach to source localization in mobile wireless sensor networks. Standard approaches make explicit assumptions relating to the statistical characteristics of the physical process and propagation environments which result from distributional model assumptions in a likelihood-based inference method. In contrast, we adopt an approach known in statistics as a non-parametric modeling framework which allows one to relax the number of required statistical assumptions, specifically with regard to the distributional properties of the received signal and the physical process. This is achieved via a re-formulation of the problem as a flexible non-parametric regression model via the framework of Gaussian Processes. Coupling this modeling perspective with a Bayesian optimization mechanism, we frame the global optimization objective as a sequential decision problem. We then develop an efficient algorithm to sequentially select the optimal location at which the mobile sensor should obtain observations under communication and mobility constraints. Simulation results demonstrate the efficiency of the algorithm at achieving accurate localization in a wireless sensor network.
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