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WCS: Weighted Component Stitching for Sparse Network Localization

机译:WCS:稀疏网络本地化的加权组件拼接

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Network location is one of the critical issues and a challenge in wireless sensor and ad hoc networks, in particular when networks are sparse. However, even in highly sparse networks, there exist well-connected subgraphs while the distribution of the networks is random. This paper introduces weighted component stitching (WCS) to find redundantly rigid components with high redundant ratios, which can be used to generate reliable local realization. Finding and ranking the redundantly rigid components is an NP-hard problem (a reduction from maximum quasi-clique). Here, we introduce a series of theorems and algorithms to carry out WCS efficiently. More precisely, we prove that each graph has a determinant number of redundantly rigid components, each redundantly rigid component is covered by a set of basic redundant components (BRCs), and each BRC contains one redundant edge. We apply constraints to merge the BRCs to form components with higher redundancy ratio and develop a greedy algorithm to merge BRCs to form locally mostly redundant components (LMRCs). Finally, we give the approximation ratio. The local coordinates of nodes are calculated by optimization in each LMRC and are synchronized with weights to produce the global coordinates of nodes in the network to overcome the sparseness of subgraphs. Extensive experiments demonstrate significant improvements in accuracy (45%-64%) using our WCS method over the state-of-the-art algorithms under various settings of network sparseness and ranging noises.
机译:网络位置是无线传感器和自组织网络中的关键问题之一,也是一个挑战,特别是在网络稀疏的情况下。但是,即使在高度稀疏的网络中,也存在连接良好的子图,而网络的分布是随机的。本文介绍了加权组件缝合(WCS),以找到具有高冗余率的冗余刚性组件,这些组件可用于生成可靠的局部实现。查找和排序冗余刚性组件是一个NP难题(从最大准固有条件减少)。在这里,我们介绍了一系列有效地执行WCS的定理和算法。更确切地说,我们证明每个图都有确定数量的冗余刚性组件,每个冗余刚性组件都由一组基本冗余组件(BRC)覆盖,并且每个BRC包含一个冗余边。我们应用约束来合并BRC以形成具有更高冗余率的组件,并开发一种贪心算法来合并BRC以形成本地大部分冗余组件(LMRC)。最后,我们给出近似比率。通过在每个LMRC中进行优化来计算节点的局部坐标,并与权重进行同步,以生成网络中节点的全局坐标,从而克服子图的稀疏性。广泛的实验表明,在各种网络稀疏和测距噪声设置下,使用我们的WCS方法,与现有技术相比,使用WCS方法的准确性显着提高(45%-64%)。

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