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GSM mobile station location using reference stations and artificial neural networks

机译:使用参考站和人工神经网络的GSM移动站定位

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摘要

In this paper we present a novel approach to the automatic GSM mobile station location. The approach is based on measurement of radio signal strengths from a number of the neighboring base stations (antennas) and estimation of the mobile station position using trained artificial neural network (ANN) models. First, we present an improved version of our previous positioning back propagation (BP) ANN multi-level perceptron (MLP) model that further improves positioning accuracy. Then, we extend the MLP primary ANN model by introducing correctional factors obtained from a number of reference stations with known positions. Two new models with the improved location accuracy, both aimed at real-time application, are presented. The first model is using differential range to improve the estimated location of the mobile station. The second is using small-scale secondary neural networks trained with data obtained from reference stations, in addition to the primary ANN, to correct location accuracy.
机译:在本文中,我们提出了一种新颖的自动GSM移动站定位方法。该方法基于对来自多个相邻基站(天线)的无线电信号强度的测量以及使用经过训练的人工神经网络(ANN)模型对移动站位置的估计。首先,我们提出了先前定位反向传播(BP)ANN多级感知器(MLP)模型的改进版本,该模型可以进一步提高定位精度。然后,我们通过引入从许多具有已知位置的参考站获得的校正因子来扩展MLP主要ANN模型。提出了两种具有提高的定位精度的新模型,均针对实时应用。第一个模型使用差分范围来改善移动台的估计位置。第二种方法是使用小型二级神经网络,除了主要的人工神经网络外,还使用从参考站获得的数据进行训练,以纠正定位精度。

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