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Environment Classification for Global Navigation Satellite Systems Using Attention-Based Recurrent Neural Networks

机译:基于注意力的经常性神经网络的全球导航卫星系统的环境分类

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In this paper, an environment classification method for Global Navigation Satellite System (GNSS) is presented. The goal of the study is to characterize the statistical properties of the historical GNSS data in certain typical environments, so that appropriate localization or navigation algorithms can be chosen to achieve better performances once any environments are recognized in real practice. We extract Dilute of Precision (DOP) value. Carrier-to-Noise Ratio (C/N) and Number of Satellite in View from NMEA-0183 data collected in three real typical environments to characterize the environments. Further, an attention-based Recurrent Neural Network (RNN) is constructed; the historical characteristics extracted above are fed into the RNN. Attention values are then calculated using real-time characteristics and the RNN output in each time steps. High dimensional features are then constructed by soft attention and are used as the input of a fully connected network for classification. The performance of proposed method on the classification task of three typical environments has significantly improvement compared to recurrent neural networks without attention mechanism, and achieves an average accuracy of 94% on the testing set.
机译:本文介绍了全局导航卫星系统(GNSS)的环境分类方法。该研究的目标是在某些典型环境中表征历史GNSS数据的统计特性,从而可以选择适当的定位或导航算法以实现一旦任何环境在实际实践中识别出任何环境。我们提取精度稀释(DOP)值。从3个真实典型环境中收集的NMEA-0183数据进行频率,卫星的数量,以三个真正的典型环境中收集的数据。此外,构建了基于注意的复发性神经网络(RNN);上面提取的历史特征被送入RNN。然后使用每次步骤中的实时特性和RNN输出来计算注意值。然后通过软注意力构造高尺寸特征,并用作完全连接网络的输入进行分类。与无注意机制的经常性神经网络相比,三种典型环境对三种典型环境的分类任务的表现显着改善,并在测试集中实现了94%的平均精度。

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