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首页> 外文期刊>The Journal of Navigation >Outlier Resistance Estimator for GPS Positioning - the Neural Network Approach
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Outlier Resistance Estimator for GPS Positioning - the Neural Network Approach

机译:GPS定位的异常值电阻估算器-神经网络方法

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摘要

One of the popular techniques for solving GPS pseudorange nonlinear quadratic equations to obtain the receiver's position and clock bias involves linearizing the equations and solving them by the least-squares (LS) scheme, which is based on the L_2 minimization criterion. When outliers are a problem, LS estimation scheme may not be the best approach because the LS estimator minimizes the mean squared error of the observations. This paper discusses the implementation aspects of L_1 and L_∞ criteria, and their outlier resistance performance for GPS positioning. Three ordinary differential equation formulation schemes and corresponding circuits of neuron-like analogue L_1 (least-absolute), L_∞ (minimax), and L_2 (least-squares) processors will be employed for GPS navigation processing. The circuits of simple neuron-like analogue processors are employed essentially for solving systems of linear equations. Experiments on single epoch and thereafter kinematic positioning will be conducted by computer simulation for investigating the outlier resistance performance for the least-absolute and minimax schemes as compared to the one provided by the least-squares scheme.
机译:解决GPS伪距非线性二次方程以获取接收器的位置和时钟偏差的流行技术之一是将方程线性化并通过基于L_2最小化准则的最小二乘(LS)方案进行求解。当离群值成为问题时,LS估计方案可能不是最佳方法,因为LS估计器将观测值的均方误差最小化。本文讨论了L_1和L_∞准则的实现方面,以及它们在GPS定位中的异常抵抗性能。 GPS导航处理将采用三种类似神经元的模拟L_1(最小绝对值),L_∞(最小极大值)和L_2(最小二乘法)处理器的微分方程公式和相应的电路。简单的类神经元模拟处理器的电路基本上用于求解线性方程组。将通过计算机仿真对单个历元及其后的运动学定位进行实验,以研究与最小二乘方案相比,最小绝对方案和最小最大方案的异常值。

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