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FWB: Funneling Wider Bandwidth algorithm for high performance data collection in Wireless Sensor Networks

机译:FWB:漏斗式更宽带宽算法,用于无线传感器网络中的高性能数据收集

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Many Wireless Sensor Networks (WSNs) applications demand to collect large volumes of data in a coordinated approach. To do this, a many-to-one pattern (convergecast) communication in tree-based WSN is used, but traffic near the sink node commonly becomes the network bottleneck. Thus, we propose an extension to a wireless network standard to provide wider bandwidth channels. We explore how fast the information can be collected in a WSN organized as a tree, with the radios operating with these wider bandwidth channels. As consequence, we proposed and implemented Funneling Wider Bandwidth (FWB), an algorithm that minimizes schedule length in networks with radios operating with the proposed extension. We proved that the algorithm is optimal in calculating a minimum number of time slots. In this way, we obtain a higher average throughput and a lesser number of time slots. Results from simulations and experiments on a real testbed confirm these gains. The proposed approach could be adapted and used with other related standards such as WirelessHART (TM), ISA 100.11a and IEEE 802.15.4e TSCH. Experiment results showed that with this wider bandwidth emulated in a given topology, the packets received per second by the sink node increased by 122.8% in comparison with just one bandwidth.
机译:许多无线传感器网络(WSN)应用程序要求以协调的方式收集大量数据。为此,使用了基于树的WSN中的多对一模式(聚合广播)通信,但宿节点附近的流量通常成为网络瓶颈。因此,我们提出了对无线网络标准的扩展,以提供更宽的带宽信道。我们将探索在以树状组织的WSN中以多大带宽带宽运行无线电的速度。因此,我们提出并实施了“漏斗式更宽带宽(FWB)”算法,该算法可最大程度地减少带有建议扩展功能的无线电网络中的调度长度。我们证明了该算法在计算最小数量的时隙方面是最佳的。这样,我们可以获得更高的平均吞吐量和更少的时隙数。在真实测试床上进行的仿真和实验结果证实了这些优势。所提出的方法可以被修改并与其他相关标准一起使用,例如WirelessHART(TM),ISA 100.11a和IEEE 802.15.4e TSCH。实验结果表明,在给定的拓扑结构中模拟这种较宽的带宽,与仅一个带宽相比,宿节点每秒接收的数据包增加了122.8%。

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