异步无线网络定位(RNL)的改进线性直接解

J. Sidorenko, N. Scherer-Negenborn, Michael Arens, E. Michaelsen
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引用次数: 6

摘要

在定位领域,线性最小二乘解是常用的求解方法。该方法与受噪声影响较大的非线性解相比较,但能够在不知道任何启动条件的情况下提供位置估计。线性最小二乘解能够通过求解带有摩尔彭罗斯伪逆的过定方程来最小化高斯噪声。不幸的是,如果遇到非高斯噪声,这个解决方案就失败了。本文提出了一种直接求解方法,该方法可以使用预滤波数据求解LPM (RNL)方程。用于线性位置估计的输入将不是原始数据,而是经过时间过滤的数据,因此该解决方案将称为直接解决方案。结果表明,对称直接解优于非对称直接解,特别是优于未预滤波的线性最小二乘解。
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Improved linear direct solution for asynchronous radio network localization (RNL)
In the field of localization the linear least square solution is frequently used. This solution is compared to nonlinear solvers more effected by noise, but able to provide a position estimation without the knowledge of any starting condition. The linear least square solution is able to minimize Gaussian noise by solving an overdetermined equation with the MoorePenrose pseudoinverse. Unfortunately this solution fails if it comes to non Gaussian noise. This publication presents a direct solution which is able to use prefiltered data for the LPM (RNL) equation. The used input for the linear position estimation will not be the raw data but over the time filtered data, for this reason this solution will be called direct solution. It will be shown that the presented symmetrical direct solution is superior to non symmetrical direct solution and especially to the not prefiltered linear least square solution.
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