基于扩展卡尔曼滤波的多层神经网络DGPS校正外推模型

M. Mosavi, M. Mirzaeepour, H. Nabavi
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引用次数: 1

摘要

提出了一种基于扩展卡尔曼滤波(EKF)的多层神经网络(NN)的精确DGPS陆地车辆导航系统。为了避免过度训练,网络设置基于数学模型。该方法采用EKF训练规则,得到最优训练准则。神经网络预测精确定位的DGPS校正。该方法适用于不同采样率的DGPS系统。在实测数据上的实验结果表明,该方法适用于开发精确的DGPS陆地车辆导航方法。实验表明,SA前后的预测总均方根误差分别小于1.65m和0.67m。实际数据测试表明,预测精度分别优于10秒预测时的1.1m和30秒预测时的1.9m,可使车辆导航在30秒内保持所需精度
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Extrapolative Model of DGPS Corrections using a Multilayered Neural Network Based on the Extended Kalman Filter
This paper presents an accurate DGPS land vehicle navigation system using a multilayered neural network (NN) based on the extended Kalman filter (EKF). The network setup is developed based on a mathematical model to avoid excessive training. The proposed method uses an EKF training rule, which achieves the optimal training criterion. The NN predicts the DGPS corrections for accurate positioning. The proposed method is suitable for DGPS systems sampled at different rates. The experimental results on collected real data demonstrate the suitability of this method in developing an accurate DGPS land vehicle navigation method. The experiments show that the prediction total RMS error is less than 1.65m and 0.67m, before and after SA, respectively. Also, tests with real data demonstrate that the prediction accuracy is better than 1.1m for 10 second prediction and 1.9m for 30 second prediction, respectively, which can maintain the vehicle navigation in the required accuracy for a period of 30 seconds
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