Locating a target from uncertain data: convex supersets based on linear-fractional representations

Cláudia Soares, J. Xavier
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引用次数: 1

Abstract

We address the problem of locating a target by using measurements from a set of sensors called anchors. Each anchor has a known location and measures its distance to the target, the measurement being contaminated with additive noise. The noise vector, which contains the noise realizations across the anchors, is naturally unknown, but we assume it to be drawn from a known bounded uncertainty set.Because the noise vector is unknown, the location of the target is not uniquely defined from the available vector of measurements: uncountably many pairs of target positions and noise vectors can account for the measurements. In fact, the set of all possible target positions (consistent with the measurements) can be nonconvex and even disconnected. We consider the problem of finding a simple convex set—a rectangle—that encloses all possible target locations. We use ideas from linear-fractional representations of uncertainty (LFR) to create convex optimization problems that yield the rectangle. Numerical examples indicate that our LFR approach gives a smaller enclosing rectangle (thus, a tighter delimitation of the target) than a standard convex relaxation, for most of the randomly generated scenarios.
从不确定数据中定位目标:基于线性分数表示的凸超集
我们通过使用一组称为锚的传感器测量来解决定位目标的问题。每个锚点都有一个已知的位置,并测量其与目标的距离,测量结果受到附加噪声的污染。噪声向量,其中包含跨锚点的噪声实现,自然是未知的,但我们假设它是从已知的有界不确定性集合中绘制的。由于噪声向量是未知的,目标的位置不能从可用的测量向量中唯一地定义:无数对目标位置和噪声向量可以解释测量。事实上,所有可能的目标位置(与测量一致)的集合可以是非凸的,甚至是断开的。我们考虑寻找一个简单凸集的问题——一个矩形——它包含了所有可能的目标位置。我们使用不确定性的线性分数表示(LFR)的思想来创建产生矩形的凸优化问题。数值示例表明,对于大多数随机生成的场景,我们的LFR方法给出了比标准凸松弛更小的封闭矩形(因此,目标的边界更紧密)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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