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Optimizing a class of in-network processing applications in networked sensor systems

机译:优化网络传感器系统中的一类网络内处理应用程序

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A key application of networked sensor systems is to detect and classify events of interest in an environment. Such applications require processing of raw data and the fusion of individual decisions. In-network processing of the sensed data has been shown to be more energy efficient than the centralized scheme that gathers all the raw data to a (powerful) base station for further processing. We formulate the problem as a special class of flow optimization problem. We propose a decentralized adaptive algorithm to maximize the throughput of a class of in-network processing applications. This algorithm is further implemented as a decentralized in-network processing protocol that adapts to any changes in link bandwidths and node processing capabilities. Simulations show that the proposed in-network processing protocol achieves up to 95% of the optimal system throughput. We also show that path based greedy heuristics have very poor performance in the worst case.
机译:网络传感器系统的关键应用是检测和分类环境中感兴趣的事件。此类应用程序需要处理原始数据并融合各个决策。与将所有原始数据收集到一个(功能强大的)基站进行进一步处理的集中式方案相比,对感测到的数据进行网络内处理已显示出更高的能源效率。我们将该问题表述为一类特殊的流量优化问题。我们提出了一种分散式自适应算法,以最大化一类网络内处理应用程序的吞吐量。该算法被进一步实现为分散的网络内处理协议,该协议可适应链路带宽和节点处理能力的任何变化。仿真表明,所提出的网络内处理协议可实现高达95%的最佳系统吞吐量。我们还表明,在最坏的情况下,基于路径的贪婪启发式算法的性能非常差。

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