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Sensor Network Localization, Euclidean Distance Matrix completions, and graph realization

机译:传感器网络定位,欧氏距离矩阵完成和图实现

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摘要

We study Semidefinite Programming, SDP, relaxations for Sensor Network Localization, SNL, with anchors and with noisy distance information. The main point of the paper is to view SNL as a (nearest) Euclidean Distance Matrix, EDM, completion problem that does not distinguish between the anchors and the sensors. We show that there are advantages for using the well studied EDM model. In fact, the set of anchors simply corresponds to a given fixed clique for the graph of the EDM problem.rnWe next propose a method of projection when large cliques or dense subgraphs are identified. This projection reduces the size, and improves the stability, of the relaxation. In addition, by viewing the problem as an EDM completion problem, we are able to derive a new approximation scheme for the sensors from the SDP approximation. This yields, on average, better low rank approximations for the low dimensional realizations. This further emphasizes the theme that SNL is in fact just an EDM problem.rnWe solve the SDP relaxations using a primal-dual interior/exterior-point algorithm based on the Gauss-Newton search direction. By not restricting iterations to the interior, we usually get lower rank optimal solutions and thus, better approximations for the SNL problem. We discuss the relative stability and strength of two formulations and the corresponding algorithms that are used. In particular, we show that the quadratic formulation arising from the SDP relaxation is better conditioned than the linearized form that is used in the literature.
机译:我们研究带有锚点和嘈杂距离信息的Semidefinite编程SDP,传感器网络本地化的松弛SNL。本文的重点是将SNL视为(最接近的)欧几里德距离矩阵,EDM,不区分锚点和传感器的完成问题。我们表明,使用经过深入研究的EDM模型具有优势。实际上,锚集仅对应于EDM问题图的给定固定集团。接下来,我们提出一种在识别大型集团或密集子图时进行投影的方法。该突起减小了松弛的尺寸,并改善了其稳定性。另外,通过将问题视为EDM完成问题,我们能够从SDP近似推导传感器的新近似方案。对于低维实现,这平均会产生更好的低秩近似。这进一步强调了SNL实际上只是一个EDM问题的主题。我们使用基于高斯-牛顿搜索方向的原始对偶内/外点算法来解决SDP松弛问题。通过不将迭代限制在内部,通常可以得到较低秩的最优解,从而可以更好地近似SNL问题。我们讨论了两种配方的相对稳定性和强度以及所使用的相应算法。特别是,我们表明,与文献中使用的线性化形式相比,由SDP松弛产生的二次公式具有更好的条件。

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