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Localization in Wireless Sensor Networks: Solvability Improvement Technique using Priori Information from Sensing Data and Network Properties in Unit Disk Graph Model

机译:无线传感器网络中的本地化:可解性改进技术,使用先验信息在单元盘图模型中感测数据和网络属性

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From the theoretical point of view, network localization can be viewed as finding a unique solution from distances constraint among points. The one of the difficulties is that even if the network is uniquely localizable, it is proven to be an NP-Hard [1]. It is also true that the network graph has to be sufficiently dense [2]. This poses even more challenges to the original problem as we often work on sparse networks. To cope with this, in [3], we introduce priori knowledge to assist the process of finding the unique localization solution. It helps to speed up the searching algorithm;;however, the ambiguity still exists among sparse networks. In this paper we try to bring as much priori knowledge as possible to assist or to be used as constraints. Hopefully this will reduce search space and reach the unique solution quickly. In clean environment, this extra info will, by some magnitude, bring the graph closer to the unique answer. We start from integer-coordinate noise-free position and then add sources of priori knowledge. Then we examine the case where assisted data can be noisy. A search is used within the noisy but useful constraint. The justification of using the assisted knowledge is from the practical uses of some networks, e.g. sensor network, where other measurements are available and they are often correlated and can be helpful in determining the positions.
机译:从理论的角度来看,网络本地化可以被视为从点之间的距离约束中找到唯一的解决方案。其中一个难点是,即使网络是唯一的本地化,也被证明是NP-Hard [1]。网络图必须足够密度[2]也是如此。由于我们经常在稀疏网络上工作,这造成了更多挑战。为了应对这一点,在[3]中,我们介绍先验知识,以协助找到独特的本地化解决方案的过程。它有助于加快搜索算法;但是,歧义仍然存在于稀疏网络中。在本文中,我们试图带来尽可能多的先验知识,以协助或用作约束。希望这将减少搜索空间并快速到达唯一的解决方案。在清洁环境中,这种额外的信息将以某种程度的方式带来更接近唯一答案的图形。我们从整数坐标无噪音位置开始,然后添加先验知识的来源。然后我们检查辅助数据可能嘈杂的情况。在嘈杂但有用的约束中使用搜索。使用辅助知识的理由来自某些网络的实际用途,例如,传感器网络,其中可用其他测量,它们通常相关,并且可以有助于确定位置。

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