Evaluation of Kalman filtering for network time keeping

A. Bletsas
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引用次数: 83

Abstract

Time information is critical for a variety of applications in distributed environments that facilitate pervasive computing and communication. This paper describes and evaluates a novel Kalman filtering algorithm for end-to-end time synchronization between a client computer and a server of "true" time (e.g. a GPS source) using messages transmitted over packet switched networks, such as the Internet. The messages exchanged have the NTP format and the algorithm evaluated, is performed only at the client side. The Kalman filtering algorithm is compared to two other techniques widely used, based on linear programming and statistical averaging and the experiments involve independent consecutive measurements (gaussian case) or measurements exhibiting long-range dependence (self-similar case). Performance is evaluated according to the estimation error of frequency offset and time offset between client and server clock, the standard deviation of the estimates and the number of packets used for a specific estimation. The algorithms can exploit existing NTP infrastructure and a specific example is presented.
卡尔曼滤波对网络时间保持的评价
时间信息对于促进普适计算和通信的分布式环境中的各种应用程序至关重要。本文描述并评估了一种新颖的卡尔曼滤波算法,用于客户端计算机和“真实”时间服务器(例如GPS源)之间的端到端时间同步,该算法使用在分组交换网络(例如Internet)上传输的消息。交换的消息具有NTP格式和评估的算法,仅在客户端执行。将卡尔曼滤波算法与其他两种广泛使用的基于线性规划和统计平均的技术进行比较,实验涉及独立的连续测量(高斯情况)或具有远程依赖性的测量(自相似情况)。性能是根据客户端和服务器时钟之间的频率偏移和时间偏移的估计误差、估计的标准偏差和用于特定估计的数据包数量来评估的。该算法可以利用现有的NTP基础设施,并给出了一个具体的例子。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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