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Neural Technologies for Precise Timing in Electric Power Systems with a Single-Frequency GPS Receiver

机译:具有单频GPS接收器的电力系统中精确定时的神经技术

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The global positioning system (GPS), with its ability to provide time synchronization with accuracy to 200ns over the wide area, provides an ideal tool for performing time tagging in electric power systems. The observed GPS pseudo-range varies from the true range because of range measurement errors. GPS errors sources are ionospheric delays, atmospheric delays, troposphericelays, multi-path effects and dilution of precision etc., affecting the GPS signals as they travel from satellite to user on Earth. In this paper neural models has been presented are for more accurate GPS timing in electric power systems with a single-frequency GPS receiver. The proposed methods use back-propagation (BP), extended Kalman filter (EKF) and particle swarm optimization (PSO) training algorithms, which achieves the optimal training criterion. We use actual data to evaluate the performance of the proposed methods. An experimental test setup is designed and implemented for this purpose. Results using the three methods are discussed. The experimental results obtained from a coarse acquisition (C/A)-code single-frequency GPS receiver are provided to confirm the efficacy of the approaches to give high accurate timing. The GPS timing RMS error using neural network based on PSO learning algorithm reduces to less than 105 and 36ns, before and after SA, respectively.
机译:全球定位系统(GPS)能够在宽广的区域内提供精度达200ns的时间同步,是在电力系统中执行时间标记的理想工具。由于距离测量误差,观测到的GPS伪距与真实距离有所不同。 GPS错误源是电离层延迟,大气延迟,对流层延迟,多径效应和精度降低等,它们会影响GPS信号从卫星到用户在地球上传播的过程。在本文中,已经提出了用于在具有单频GPS接收器的电力系统中实现更精确GPS定时的神经模型。所提出的方法使用反向传播(BP),扩展卡尔曼滤波器(EKF)和粒子群优化(PSO)训练算法,从而达到了最佳训练准则。我们使用实际数据来评估所提出方法的性能。为此目的设计并实施了一个实验测试装置。讨论了使用这三种方法的结果。提供从粗略采集(C / A)码单频GPS接收机获得的实验结果,以确认该方法提供高精度定时的有效性。在SA之前和之后,使用基于PSO学习算法的神经网络的GPS定时RMS误差分别降至105ns和36ns以下。

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