Extracting Markov chain models from protocol execution traces for end to end delay evaluation in wireless sensor networks

Francois Despaux, Yeqiong Song, Abdelkader Lahmadi
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引用次数: 6

Abstract

Many WSN industrial applications impose requirements in terms of end to end delay. However, the end to end delay estimation in WSNs is not a simple task because of the high dynamic of networks, the use of duty-cycled MAC protocols as well as the impact of the routing protocols. Markov-based modelling is an interesting approach to deal with this problem aiming to provide an analytical model useful for understanding protocol's behavior and to estimate the end to end delay, among other performance parameters. However, existing Markov-based analytic models abstract the reality simplifying the analysis and thus resulting models are not accurate enough for estimating the end to end delay. Furthermore, establishing an accurate Markov model using classic approaches is very difficult considering the highly dynamic behavior of the sensor nodes. In this paper, we propose a novel approach to obtain the Markov chain model of sensor nodes by means of Process Mining techniques through the code execution trace. End to end delay is then computed based on this Markov chain. Experimentations were done using IoT-LAB testbed platform. Comparisons in terms of delay are presented for two different metrics of the RPL protocol (hop count and ETX).
从协议执行轨迹中提取马尔可夫链模型,用于无线传感器网络端到端时延评估
许多WSN工业应用对端到端延迟提出了要求。然而,由于网络的高动态性、占空比MAC协议的使用以及路由协议的影响,无线传感器网络的端到端延迟估计并不是一项简单的任务。基于马尔可夫的建模是一种有趣的方法来处理这个问题,旨在提供一个分析模型,用于理解协议的行为和估计端到端延迟,以及其他性能参数。然而,现有的基于马尔可夫的分析模型抽象了现实,简化了分析,所得模型对端到端时延估计不够准确。此外,考虑到传感器节点的高度动态行为,使用经典方法建立精确的马尔可夫模型是非常困难的。本文提出了一种利用过程挖掘技术,通过代码执行轨迹获取传感器节点马尔可夫链模型的新方法。然后基于该马尔可夫链计算端到端延迟。实验采用IoT-LAB测试平台进行。对RPL协议的两个不同度量(跳数和ETX)的延迟进行了比较。
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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