A new regional tropospheric delay correction model based on BP neural network

Yuguo Yang, Tianhe Xu, L. Ren
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引用次数: 2

Abstract

Tropospheric delay is an important error source in the Global Navigation Satellite System (GNSS) positioning, navigation and timing. The global empirical models are unable to provide sufficient accuracy for the precise positioning with the increasing demand of precision. In this paper, we utilize the UNB3m model to determine accurate temperature, pressure and relative humidity which can be used to calculate zenith total delay of local area, and use GA-BP model to correct the residual errors by taking the estimated tropospheric delay from BERNESE 5.2 as a reference, then develop a new regional tropospheric delay model of “UNB3m+GA-BP” based on BP neural network. The numerical example by using Hong Kong GNSS data shows that the UNB3m+GA-BP model has improved the accuracy obviously compared to the UNB3m and GTP2 model. The accuracy of the proposed model is about 1.1 cm without systematic error. UNB3m+GA-BP model can better describe the spatial variation of regional troposphere and is suitable for real-time regional tropospheric delay correction.
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一种新的基于BP神经网络的区域对流层延迟校正模型
对流层时延是全球卫星导航系统(GNSS)定位、导航和授时中的一个重要误差源。随着对精度要求的不断提高,全球经验模型无法为精确定位提供足够的精度。本文利用UNB3m模型确定可用于计算局部区域天顶总延迟的精确温度、压力和相对湿度,并利用GA-BP模型以BERNESE 5.2估算的对流层延迟为参考,对残差进行校正,建立了基于BP神经网络的“UNB3m+GA-BP”区域对流层延迟模型。利用香港GNSS数据的数值算例表明,与UNB3m和GTP2模型相比,UNB3m+GA-BP模型的精度有明显提高。该模型的精度约为1.1 cm,无系统误差。UNB3m+GA-BP模式能较好地描述区域对流层的空间变化,适用于实时区域对流层延迟校正。
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