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CNN based GPS/INS data integration using new dynamic learning algorithm

机译:基于CNN的GPS / INS数据集成使用新的动态学习算法

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Aircraft navigation relies mainly on Global Positioning System (GPS) to provide accurate position values consistently. However, GPS receivers may encounter frequent GPS outages within urban areas, where satellite signals are blocked. To overcome this drawback, generally GPS is integrated with inertial sensors mounted inside the vehicle to provide a reliable navigation solution. Inertial Navigation System (INS) and GPS are commonly integrated using a Kalman filter (KF) to provide a robust navigation solution, overcoming situations of GPS satellite signals blockage. This work presents New Position Update Architecture (NPUA) for GPS and INS data integration. NPUA uses Constructive Neural Network (CNN) for training and prediction. New dynamic learning algorithm (NDLA) has been developed for CNN to predict the INS position error and determine the accurate position of the moving aircraft during signal blockages in GPS. GPS and INS data are integrated using CNN in NPUA and the results are simulated. The output obtained using CNN is compared with the performance of Multilayer Feed Forward Network (MFNN). The CNN is found to have optimal topology when compared to MFNN. CNN has better learning ability, network constructing ability and accuracy when compared to MFNN.
机译:飞机导航主要依赖于全球定位系统(GPS),以始终如一地提供准确的位置值。然而,GPS接收器可能会遇到城市区域内的频繁GPS中断,其中卫星信号被阻止。为了克服该缺点,通常GPS与安装在车辆内部的惯性传感器集成,以提供可靠的导航解决方案。惯性导航系统(INS)和GPS通常使用卡尔曼滤波器(KF)集成,以提供强大的导航解决方案,克服GPS卫星信号阻塞的情况。这项工作为GPS和INS数据集成提供了新的位置更新架构(NPUA)。 NPUA使用建设性神经网络(CNN)进行培训和预测。已经为CNN开发了新的动态学习算法(NDLA)以预测INS位置误差,并在GPS中的信号堵塞期间确定移动飞机的准确位置。 GPS和INS数据使用NPUA中的CNN集成,并模拟结果。将使用CNN获得的输出与多层馈送前向网络(MFNN)的性能进行比较。与MFNN相比,CNN被发现具有最佳拓扑。与MFNN相比,CNN具有更好的学习能力,网络构建能力和准确性。

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