Sensor-Aware Adaptive Push-Pull Query Processing in Wireless Sensor Networks

R. Bose, A. Helal
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引用次数: 6

Abstract

Till date, sensor network research has assumed that the cost of transmitting a sensor reading over the network is much higher than the cost of sampling a sensor. However, this assumption is no longer always valid, due to availability of new generation sensor platform hardware, which utilizes industry standard mesh-networking protocols such as ZigBee on top of relatively high-speed, yet low-power wireless radios. In fact, we have experimentally verified that the energy consumed for acquiring a sample from a sensor can be significantly higher than the energy consumed for transmitting its reading over the network. Hence, new querying strategies need to be formulated, which optimize the order of sampling sensors across the network in such a manner that sensors with expensive acquisition costs are not sampled unless absolutely required. We propose distributed pull-push querying mechanisms, which optimize the query plan by adapting to variable costs of acquiring readings from different sensors across the network. The goal of these mechanisms is to minimize the energy consumption of nodes executing a query while ensuring that the latency of query response does not exceed user-specified bounds. To validate our approach, we also describe experimental results, which analyze the performance of various plan options in terms of energy consumption and latency under the effect of various parameters such as selectivity of data and number of sensors participating in the query.
无线传感器网络中感知传感器的自适应推拉查询处理
到目前为止,传感器网络研究假设通过网络传输传感器读数的成本远远高于采样传感器的成本。然而,由于新一代传感器平台硬件的可用性,这种假设不再总是有效的,新一代传感器平台硬件在相对高速但低功耗的无线无线电之上利用诸如ZigBee之类的行业标准网状网络协议。事实上,我们已经通过实验验证,从传感器获取样本所消耗的能量可能显著高于通过网络传输其读数所消耗的能量。因此,需要制定新的查询策略,优化整个网络中采样传感器的顺序,使得除非绝对需要,否则不会对采集成本昂贵的传感器进行采样。我们提出了分布式推拉查询机制,该机制通过适应从网络中不同传感器获取读数的可变成本来优化查询计划。这些机制的目标是最小化节点执行查询的能量消耗,同时确保查询响应的延迟不超过用户指定的界限。为了验证我们的方法,我们还描述了实验结果,在各种参数(如数据的选择性和参与查询的传感器数量)的影响下,从能耗和延迟方面分析了各种计划选项的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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