集成人工神经网络与GNSS卫星最优配置改进GNSS定位技术(以埃及为例)

IF 0.7 Q4 ASTRONOMY & ASTROPHYSICS
Mustafa K. Alemam, B. Yong, Abubakar S. Mohammed
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引用次数: 1

摘要

摘要目前,基于国际导航卫星系统(IGS)产品的全球导航卫星系统定位技术被广泛应用于各种精密应用。然而,需要特定的条件,如双频观测和最终IGS产品。因此,缺乏最终IGS数据和使用单频观测将降低这些技术的准确性。在本文中,通过使用一个基于广播星历表的GNSS接收器实时或接近实时地改进单频GNSS观测,制定了两个经过两个分离阶段的算法。第一个算法代表第二个算法的准备阶段。它通过分离精度位置稀释(PDOP)和卫星数量(NOS)的最佳值以及相应的坐标值来对观测结果进行分类。第二阶段包括基于人工神经网络(ANN)方法的算法,该算法设置在通过本研究中的应用测试产生最佳精度的ANN变量上。二进制数、对数S形Purelin、级联前向网和一个10个神经元大小的隐藏层分别是ANN输入格式、传递函数星座、前馈网络类型以及隐藏层数量(NHL)及其大小的最优变量。仿真结果表明,所设计的算法在水平分量和垂直分量上都有显著的改进。最后,在双频观测的情况下,使用广播星历表进行评估阶段。仿真结果表明,与IGS最终数据的输出相比,应用所提出的积分的精度完全提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Integration of Artificial Neural Network and the Optimal GNSS Satellites’ Configuration for Improving GNSS Positioning Techniques (A Case Study in Egypt)
Abstract Nowadays, theglobal navigation satellite system (GNSS) positioning techniques based on the International GNSS Service (IGS) products are extensively used for various precise applications. However, specific conditions such as the dual-frequency observations and the final IGS products are required. Consequently, the absence of the final IGS data and using single-frequency observations will degrade these techniques’ accuracy. In this paper, two algorithms through two separated stages are formulated for improving the single-frequency GNSS observations by using one GNSS receiver based on the broadcast ephemerides in real time or close to real time. The first algorithm represents the preparation stage for the second one. It classifies the observations by separating the optimal values of position dilution of precision (PDOP) and the number of satellites (NOS), as well as the corresponding values of coordinates. The second stage includes an algorithm based on the artificial neural network (ANN) approach, which is set at the ANN variables that produce the best precision through the applied tests at the present study. Binary numbers, log sigmoid-Purelin, cascade forward net, and one hidden layer with a size of 10 neurons are the optimal variables of ANN inputs format, transfer functions constellations, feedforward net type, and the number of hidden layers (NHL) and its size, respectively. The simulation results show that the designed algorithms produce a significant improvement in the horizontal and vertical components. Lastly, an evaluation stage is performed in the case of dual-frequency observations by using broadcast ephemerides. The simulation outputs indicate that the precision at applying the proposed integration is completely enhanced compared with the outputs of IGS final data.
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