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Error Compensation Algorithm for Dynamic Model Based on Neural Network

机译:基于神经网络的动态模型误差补偿算法

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The noise of GNSS navigation and positioning system is non-priori, while the optimal estimation of standard Kalman filter requires the establishment of accurate system model and observation model, which leads to the low accuracy of Kalman filter. Neural network has strong ability of denoising, learning, self-adapting and complex mapping. In order to improve the filtering accuracy, this paper proposes an algorithm to compensate the error of the dynamic model by using the neural network, and corrects the error of the dynamic model by using the RBF neural network in the filtering estimation part which inhibits the contribution of the abnormal disturbance of the dynamic model to the navigation solution. The experimental results show that the algorithm can not only eliminate the positioning deviation in all directions, but also reduce the standard deviation in X, Y and Z directions by about 70%, 60% and 60% respectively, compared with the standard Kalman filter.
机译:GNSS导航定位系统的噪声是非先验的,而标准卡尔曼滤波器的最优估计需要建立精确的系统模型和观测模型,这导致卡尔曼滤波器的精度较低。神经网络具有强大的去噪,学习,自适应和复杂映射能力。为了提高滤波精度,提出了一种利用神经网络补偿动态模型误差的算法,并在滤波估计部分采用了RBF神经网络对动态模型的误差进行了校正,从而抑制了滤波效果。动态模型的异常扰动对导航解的影响实验结果表明,与标准卡尔曼滤波器相比,该算法不仅可以消除各个方向的定位偏差,而且可以分别减小X,Y和Z方向的标准偏差约70%,60%和60%。

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