ETOC:在基于组件的定位中获得鲁棒性

Xiaoping Wang, Yunhao Liu, Zheng Yang, Junliang Liu, Jun Luo
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引用次数: 8

摘要

准确的定位对无线自组网和传感器网络至关重要。在这些定位方案中,基于组件的定位方案在定位性能方面具有优势,能够很好地克服网络稀疏性和锚点稀疏性。然而,这种设计对测量误差很敏感。现有的鲁棒定位方法侧重于消除单个节点的定位误差。事实上,单个节点在二维空间中有两个维度的自由,并且只遭受一种类型的转换:平移。作为一个刚性的2D结构,组件遭受三种可能的转换:平移、旋转和反射。自由度高,误差产生的情况复杂,误差控制困难。本文首次针对基于分量的测距方法中如何处理测距噪声进行了研究。通过利用一组鲁棒模式,提出了一种基于容错组件的算法(ETOC),该算法既继承了基于组件方法的高性能特性,又实现了结果的鲁棒性。我们通过由120个TelosB粒子组成的真实传感器网络以及广泛的大规模模拟来评估ETOC。实验结果表明,与现有的定位算法相比,ETOC算法可以在稀疏网络中正常工作,并提供更准确的定位结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
ETOC: Obtaining robustness in component-based localization
Accurate localization is crucial for wireless ad-hoc and sensor networks. Among the localization schemes, component-based approaches specialize in localization performance, which can properly conquer network sparseness and anchor sparseness. However, such design is sensitive to measurement errors. Existing robust localization methods focus on eliminating the positioning error of a single node. Indeed, a single node has two dimensions of freedom in 2D space and only suffers from one type of transformation: translation. As a rigid 2D structure, a component suffers from three possible transformations: translation, rotation, and reflection. A high degree of freedom brings about complicated cases of error productions and difficulties on error controlling. This study is the first work addressing how to deal with ranging noises for component- based methods. By exploiting a set of robust patterns, we present an Error-TOlerant Component-based algorithm (ETOC) that not only inherits the high-performance characteristic of component-based methods, but also achieves robustness of the result. We evaluate ETOC through a real-world sensor network consisting of 120 TelosB motes as well as extensive large-scale simulations. Experiment results show that, comparing with the-state-of-the-art designs, ETOC can work properly in sparse networks and provide more accurate localization results.
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