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Derivation of Flip Ambiguity Probabilities to Facilitate Robust Sensor Network Localization

机译:翻转歧义概率的推导,便于强大的传感器网络本地化

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Erroneous local geometric realizations in some parts of the network due to their sensitivity to certain distance measurement errors is a major problem in wireless sensor network localization. This may in turn affect the localization of either the entire network or a large portion of it. This phenomenon is well-described using the notion of "flip ambiguity" in rigid graph theory. In this paper we analytically derive an expression for the flip ambiguity probabilities of arbitrary neighborhoods in two dimensional sensor networks. This probability can be used to mitigate flip ambiguities in two ways: 1) If an unknown sensor finds the probability of flip ambiguity on its location estimate larger than a predefined threshold, it may choose not to localize itself 2) Every known neighbor can be assigned with a confidence factor to its estimated location, reflecting the probability of flip ambiguity; a sensor with an initially unknown location can then choose only those known neighbors with a confidence factor greater than a predefined threshold. A recent study by co-authors have shown that the performance of sequential and cluster based localization schemes in the literature can be significantly improved by correctly identifying and removing neighborhoods with possible flip ambiguities from the localization process. One motivation of this paper is to enhance the performance of the robustness criterion presented in that study by accurately identifying the flip ambiguity probabilities of arbitrary neighborhoods. The various simulations done in this study show that our analytical calculations of the probability of flip ambiguity matches with the simulated detection of the probability very accurately.
机译:由于它们对某些距离测量误差的敏感性是无线传感器网络本地化的主要问题,网络中的某些部分的错误本地几何可实现。这反过来可能影响整个网络的本地化或它的大部分。利用刚性图理论中的“翻盖歧义”的概念来描述这种现象。在本文中,我们分析了两维传感器网络中任意邻域的翻转模糊性概率的表达。这种概率可用于以两种方式减轻翻转歧义:1)如果未知的传感器在其位置估计的位置估计大于预定阈值的位置估计,则可以选择不为其本身定位2)可以分配每个已知的邻居在其估计位置的置信因素,反映了翻转歧义的可能性;然后,具有最初未知位置的传感器可以仅选择具有大于预定阈值的置信因子的那些已知的邻居。公司最近的研究表明,通过从本地化过程中正确识别和消除可能的翻转模糊来,可以显着改善文献中的顺序和基于集群的定位方案的性能。本文的一个动机是通过准确地识别任意邻域的翻转歧义概率来增强稳健性标准的性能。本研究中完成的各种仿真表明,我们的分析计算与模拟概率的概率非常准确地匹配的概率。

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