GDOP Classification and Approximation by Implementation of Time Delay Neural Network Method for Low-Cost GPS Receivers

Q3 Energy
M. H. Refan, A. Dameshghi
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引用次数: 2

Abstract

Geometric Dilution of Precision (GDOP) is a coefficient for constellations of Global Positioning System (GPS) satellites. These satellites are organized geometrically. Traditionally, GPS GDOP computation is based on the inversion matrix with complicated measurement equations. A new strategy for calculation of GPS GDOP is construction of time series problem; it employs machine learning and artificial intelligence methods for problem-solving. In this paper, the Time Delay Neural Network (TDNN) is introduced to the GPS satellite DOP classification. The TDNN has a memory for archiving past event that is critical in GDOP approximation. The TDNN approach is evaluated all subsets of satellites with the less computational burden. Therefore, the use of the inverse matrix method is not required. The proposed approach is conducted for approximation or classification of the GDOP. The experiments show that the approximate total RMS error of TDNN is less than 0.00022 and total performance of satellite classification is 99.48%.
基于时延神经网络的低成本GPS接收机GDOP分类与逼近
几何精度稀释(GDOP)是全球定位系统(GPS)卫星星座的一个系数。这些卫星是按几何结构排列的。传统上,GPS GDOP的计算是基于具有复杂测量方程的反演矩阵。一种新的GPS GDOP计算策略是构造时间序列问题;它采用机器学习和人工智能方法来解决问题。本文将时延神经网络(TDNN)引入到GPS卫星DOP分类中。TDNN有一个内存,用于归档在GDOP近似中至关重要的过去事件。TDNN方法对所有卫星子集进行评估,计算量较小。因此,不需要使用逆矩阵方法。所提出的方法是为了对GDOP进行近似或分类。实验表明,TDNN的近似总均方根误差小于0.00022,卫星分类的总性能为99.48%。
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来源期刊
Iranian Journal of Electrical and Electronic Engineering
Iranian Journal of Electrical and Electronic Engineering Engineering-Electrical and Electronic Engineering
CiteScore
1.70
自引率
0.00%
发文量
13
审稿时长
12 weeks
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