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Sum of squares method for sensor network localization

机译:平方和法用于传感器网络定位

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We formulate the sensor network localization problem as finding the global minimizer of a quartic polynomial. Then sum of squares (SOS) relaxations can be applied to solve it. However, the general SOS relaxations are too expensive to implement for large problems. Exploiting the special features of this polynomial, we propose a new structured SOS relaxation, and discuss its various properties. When distances are given exactly, this SOS relaxation often returns true sensor locations. At each step of interior point methods solving this SOS relaxation, the complexity is O(n3)mathcal{O}(n^{3}) , where n is the number of sensors. When the distances have small perturbations, we show that the sensor locations given by this SOS relaxation are accurate within a constant factor of the perturbation error under some technical assumptions. The performance of this SOS relaxation is tested on some randomly generated problems.
机译:我们将传感器网络定位问题公式化为找到四次多项式的全局极小值。然后可以应用平方和(SOS)弛豫来求解。但是,一般的SOS放宽过于昂贵,无法解决大问题。利用此多项式的特殊功能,我们提出了一种新的结构化SOS松弛,并讨论了其各种性质。当精确给出距离时,这种SOS松弛通常会返回真实的传感器位置。在解决这种SOS松弛的内点法的每一步中,复杂度为O(n 3 )mathcal {O}(n ^ {3}),其中n是传感器的数量。当距离具有较小的扰动时,我们表明,在某些技术假设下,由SOS松弛给出的传感器位置在扰动误差的恒定因子内是准确的。在一些随机生成的问题上测试了此SOS放松的性能。

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