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An improved federated filtering method for integrated navigation system of Autonomous Underwater Vehicle

机译:一种改进的自主水下航行器组合导航系统联邦滤波方法

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To improve the navigation accuracy of AUV (Autonomous Underwater Vehicle), SINS (Strapdown Inertial Navigation System), GPS (Global Positioning System), DVL (Doppler Velocity Log) and TAN (Terrain Aided Navigation) are adopted in the AUV integrated navigation system. The mathematic model of the AUV integrated navigation system and the observation model of the chosen navigation sensors are built according to the system simulation experiments data. An improved filter based on RBF neural network for adjusting the information sharing factors is designed and implemented in the AUV integrated navigation system. Simulation experiments are carried out according to the mathematic model. It can be concluded from the simulation experiments that the navigation accuracy is improved substantially with the multiple sensors and federated filter in case that colored noise is engaged. The novel integrated navigation system is effective in prohibiting the divergence of the filter and improving fault tolerance ability and it greatly raises the precision of the navigation accuracy for the AUV integrated navigation system.
机译:为了提高AUV(自动水下航行器)的导航精度,在AUV组合导航系统中采用了SINS(捷联惯性导航系统),GPS(全球定位系统),DVL(多普勒速度测井)和TAN(地形辅助导航)。根据系统仿真实验数据,建立了AUV组合导航系统的数学模型和所选导航传感器的观测模型。在AUV组合导航系统中设计并实现了一种改进的基于RBF神经网络的信息共享因子过滤器。根据数学模型进行了仿真实验。从仿真实验可以得出结论,在引入彩色噪声的情况下,使用多个传感器和联合滤波器可以大大提高导航精度。该新颖的组合导航系统有效地防止了过滤器的发散并提高了容错能力,并且大大提高了AUV组合导航系统的导航精度。

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