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Maximum Achievable Throughput in a Wireless Sensor Network Using In-Network Computation for Statistical Functions

机译:使用统计功能进行网络内计算的无线传感器网络中的最大可实现吞吐量

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摘要

Many applications require the sink to compute a function of the data collected by the sensors. Instead of sending all the data to the sink, the intermediate nodes could process the data they receive to significantly reduce the volume of traffic transmitted: this is known as in-network computation. Instead of focusing on asymptotic results for large networks as is the current practice, we are interested in explicitly computing the maximum achievable throughput of a given network when the sink is interested in the first M statistical moments of the collected data. Here, the kth statistical moment is defined as the expectation of the kth power of the data. Flow models have been routinely used in multihop wireless networks when there is no in-network computation, and they are typically tractable for relatively large networks. However, deriving such models is not obvious when in-network computation is allowed. We develop a discrete-time model for the real-time network operation and perform two transformations to obtain a flow model that keeps the essence of in-network computation. This gives an upper bound on the maximum achievable throughput. To show its tightness, we derive a numerical lower bound by computing a solution to the discrete-time model based on the solution to the flow model. This lower bound turns out to be close to the upper bound, proving that the flow model is an excellent approximation to the discrete-time model. We then provide several engineering insights on these networks.
机译:许多应用需要接收器来计算传感器收集的数据的函数。中间节点不必将所有数据发送到接收器,而是可以处理它们接收的数据,以显着减少传输的流量:这称为网络内计算。当接收器对收集到的数据的前M个统计矩感兴趣时,我们将感兴趣的是显式计算给定网络的最大可实现吞吐量,而不是像当前的实践那样关注大型网络的渐近结果。在此,第k个统计矩被定义为对数据的第k次幂的期望。当没有网络内计算时,流模型通常用于多跳无线网络中,并且对于较大的网络通常很容易处理。但是,当允许进行网络内计算时,推导此类模型并不明显。我们为实时网络操作开发了一个离散时间模型,并执行了两次转换以获取一种流模型,该模型保留了网络内计算的本质。这给出了最大可达到吞吐量的上限。为了显示其紧密性,我们通过基于流动模型的解计算离散时间模型的解来导出数值下界。这个下界接近上限,证明了流动模型是离散时间模型的极佳近似。然后,我们提供有关这些网络的一些工程见解。

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