基于递归预测误差法的蜂窝网络跟踪轨迹估计与预测

R. Milocco, S. Boumerdassi
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引用次数: 7

摘要

考虑到移动网络中节点固有的不稳定行为,移动性预测已被广泛用于提高服务质量。从信号处理技术、自学习技术和/或随机方法发展而来的许多方法已经被提出。其中,以接收功率为测量指标的扩展卡尔曼滤波(EKF)应用最为广泛。然而,由于测量与距离不是线性的,EKF在某些情况下会失去稳定性,必须重置。此外,它还需要对干扰和测量噪声协方差矩阵的先验知识,而这些知识很难获得。本文从非线性模型出发,推导了稳定的时变一阶自回归移动平均模型(ARMA),提出了一种基于递归预测误差法(RPEM)的移动位置预测机制,并与(EKF)进行了比较。仿真结果表明,RPEM在大多数情况下具有较低的预测误差方差,在其他情况下与EKF相似,并且具有保证稳定性的优点,并且不需要像EKF那样先验地了解干扰和测量噪声协方差矩阵。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Estimation and prediction for tracking trajectories in cellular networks using the recursive prediction error method
After considering the intrinsically erratic behavior of nodes in mobile networks, mobility prediction has been extensively used to improve the quality of services. Many methods have been proposed, inherited from technologies developed for signal processing and self-learning techniques and/or stochastic methods. Among the latter the Extended Kalman Filter (EKF), using the received power as a measurement, is the most used. However, because the measure is not linear with distance, the EKF loses stability under certain circumstances and must be reset. Moreover, it requires the a priori knowledge of disturbances and measurement noise covariance matrices which are difficult to obtain. In this work, from the non-linear model, we derive a stable time-variant first order auto-regressive and moving average model (ARMA), and propose a prediction mechanism based on the well-known Recursive Prediction Error Method (RPEM) to predict the mobile location and then compare it with (EKF). Simulation results show that RPEM has a lower prediction error variance in most cases and similar in others to that obtained with EKF with the additional advantages that it has guaranteed stability and does not require the a priori knowledge of disturbances and measurement noise covariance matrices as in EKF.
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