Experimental Study for Multi-layer Parameter Configuration of WSN Links

Songwei Fu, Yan Zhang, Yuming Jiang, Chengchen Hu, Chia-Yen Shih, P. Marrón
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引用次数: 36

Abstract

Many applications of wireless sensor networks (WSNs) need to balance multiple yet often conflicting performance requirements such as high energy efficiency, high throughput, low delay and low loss. Finding appropriate WSN parameter configuration to achieve the best trade-off requires in depth understanding of the joint effect of key parameters residing at different layers on the performance. In this paper, we present an extensive experimental study on the data delivery performance of aWSN link, where 4 major performance metrics, namely energy, throughput, delay and loss, were measured over 6 months under around 50 thousand parameter configurations of 7 key stack parameters. Different from existing work, rich observations are made out of the extensive measurement data, with the focus on the joint effect of these parameters on the performance. Specifically, for each of the four performance metrics, a set of guidelines is derived for parameter optimization. In addition, we propose empirical models for each performance metric to quantify the joint effects, which enable finding optimal settings for parameters such as payload size or retransmissions, in consideration of link quality and other parameter settings, to achieve better performance trade-offs. To demonstrate the potential of this work, the obtained joint parameter optimization results are applied to an example. The outcome is compared with those achieved by following representative single-parameter tuning guidelines from the literature. The comparison reveals that by considering the joint effect of multi-layer parameters together, a WSN application can obtain a much improved performance trade-off.
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WSN链路多层参数配置的实验研究
无线传感器网络(WSNs)的许多应用都需要平衡高能效、高吞吐量、低延迟和低损耗等多种经常相互冲突的性能要求。找到合适的WSN参数配置以实现最佳权衡需要深入了解驻留在不同层的关键参数对性能的联合影响。在本文中,我们对aWSN链路的数据传输性能进行了广泛的实验研究,在6个月的时间里,在7个关键堆栈参数的约5万个参数配置下,测量了4个主要性能指标,即能量、吞吐量、延迟和损耗。与现有工作不同的是,从广泛的测量数据中进行了丰富的观察,重点关注这些参数对性能的共同影响。具体来说,对于这四个性能指标中的每一个,都推导出一组用于参数优化的指导原则。此外,我们提出了每个性能指标的经验模型来量化联合效应,这使得在考虑链路质量和其他参数设置的情况下,能够找到诸如有效载荷大小或重传等参数的最佳设置,以实现更好的性能权衡。为了验证该方法的可行性,将得到的关节参数优化结果应用于实例。将结果与遵循文献中具有代表性的单参数调优指南所获得的结果进行比较。结果表明,通过综合考虑多层参数的共同作用,无线传感器网络可以获得更好的性能折衷。
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