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Adaptive Cluster-Based Data Collection in Sensor Networks with Direct Sink Access

机译:具有直接接收器访问的传感器网络中基于群集的自适应数据收集

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摘要

Recently wireless sensor networks featuring direct sink access have been studied as an efficient architecture to gather and process data for numerous applications. We focus on the joint effect of clustering and data correlation on the performance of such networks. We propose a novel Cluster-based Data Collection scheme for sensor networks with Direct Sink Access (CDC-DSA), and provide an analytical framework to evaluate its performance in terms of energy consumption, latency, and robustness. In our scheme, CHs use a low-overhead and simple medium access control (MAC) conceptually similar to ALOHA to contend for the reachback channel to the data sink. Since in our model data is collected periodically, the packet arrival is not modeled by a continuous random process and, therefore, our framework is based on transient analysis rather than a steady state analysis. Using random geometry tools, we study how the optimal average cluster size and energy savings vary in a response to various data correlation levels under the proposed MAC. Extensive simulations for various protocol parameters show that our analysis is fairly accurate for a wide range of parameters. Our results suggest that despite the tradeoff between energy consumption and latency, both of which can be substantially reduced by proper clustering design.
机译:最近,已经研究了具有直接接收器访问功能的无线传感器网络,作为一种有效的体系结构,可以为众多应用程序收集和处理数据。我们关注于聚类和数据关联对此类网络性能的联合影响。我们为具有直接接收器访问(CDC-DSA)的传感器网络提出了一种新颖的基于集群的数据收集方案,并提供了一个分析框架,以评估其在能耗,延迟和鲁棒性方面的性能。在我们的方案中,CH使用概念上类似于ALOHA的低开销且简单的媒体访问控制(MAC)争夺到达数据接收器的返回通道。由于在我们的模型中数据是定期收集的,因此数据包的到达不是通过连续的随机过程进行建模的,因此,我们的框架基于瞬态分析而不是稳态分析。使用随机几何工具,我们研究了在建议的MAC下,最佳平均群集大小和节能如何响应各种数据相关性级别而变化。各种协议参数的广泛仿真表明,我们对大量参数的分析相当准确。我们的结果表明,尽管在能耗和等待时间之间进行了权衡,但通过适当的集群设计可以显着减少这两者。

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