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首页> 外文期刊>Wireless personal communications: An Internaional Journal >Achieve Adaptive Data Storage and Retrieval Using Mobile Sinks in Wireless Sensor Networks
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Achieve Adaptive Data Storage and Retrieval Using Mobile Sinks in Wireless Sensor Networks

机译:使用无线传感器网络中的移动宿地实现自适应数据存储和检索

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摘要

In WSNs (Wireless Sensor Networks), data storage and retrieval is a challenging problem because of the limited resource and the short communication radius of the sensor nodes. Most of the existed schemes choose one or more static sensor nodes or Sinks to act as the rendezvous nodes, which can be seen as the connectors between the data producers and the data consumers. However, those schemes cannot avoid both the “hot spot” problem and the “bottleneck” problem, which refer to the much higher load balance of the sensor nodes around the rendezvous nodes. Moreover, most of the existing schemes never consider the dynamic nature of WSNs, which leads to the lack of adaptability. In this paper, we propose a novel dynamic-optimization-based framework named SRMSN using mobile Sinks to solve such a problem. SRMSN utilizes two heuristic methods, which are based on the virtual-grid-division technology and the diversity-factor-analysis technology, to determine the optimal target locations of the mobile Sinks in each time interval when each Sink node stay at a certain position and the optimal length of each of the time intervals adaptively, aiming at improving the adaptability and the efficiency of WSNs on data storage and retrieval. Simulation results show that SRMSN can reduce and balance the energy consumption greatly as well as decrease the average delay of data storage and retrieval in comparison with the state-of-the-art scheme on data storage and retrieval in WSNs.
机译:在WSN(无线传感器网络)中,由于资源和传感器节点的短通信半径,数据存储和检索是一个具有挑战性的问题。大多数都存在的方案选择一个或多个静态传感器节点或沉积,以充当集合节点,这可以被视为数据生产商和数据消费者之间的连接器。但是,这些方案无法避免“热点”问题和“瓶颈”问题,这指出了在集合节点周围的传感器节点的更高负载平衡。此外,大多数现有计划永远不会考虑WSN的动态性质,这导致缺乏适应性。在本文中,我们提出了一种新的基于动态优化的框架,使用移动水槽解决了SRMSN来解决这样的问题。 SRMSN利用了两个启发式方法,该方法基于虚拟网格分割技术和分集因子分析技术,以确定每个时间间隔中的移动宿的最佳目标位置,当每个汇聚节点保持在一定位置时自适应地,每个时间间隔的最佳长度,旨在提高WSN对数据存储和检索的适应性和效率。仿真结果表明,SRMSN可以大大降低和平衡能量消耗,并降低数据存储和检索的平均延迟,与WSN中的数据存储和检索的最新方案相比。

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