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A Distributed Spatial-Temporal Similarity Data Storage Scheme in Wireless Sensor Networks

机译:无线传感器网络中的分布式时空相似数据存储方案

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摘要

Since centralized data storage and search schemes often lead to high overhead and latency, distributed data-centric storage becomes a preferable approach in large-scale wireless sensor networks (WSNs). However, most of existing distributed methods lack optimization for spatial-temporal search to query events occurred in a certain geographical area and a certain time period. Furthermore, for data search routing, most methods rely on locating systems (e.g., GPS), which consume high energy. This paper proposes a distributed spatial-temporal Similarity Data Storage (SDS) scheme. SDS provides efficient spatial-temporal and similarity data searching service, and is applicable for both static and dynamic WSNs. It disseminates event data in such a way that the distance between WSN neighborhoods represents the similarity of data stored in them. In addition, SDS carpooling routing algorithm efficiently routes messages without the aid of GPS. Theoretical and experimental results show that SDS yields significant improvements on the efficiency of data querying compared with existing approaches, and obtains stable performance in dynamic environments.
机译:由于集中式数据存储和搜索方案通常会导致高开销和延迟,因此在大规模无线传感器网络(WSN)中,以数据为中心的分布式存储成为一种首选方法。但是,大多数现有的分布式方法都缺乏针对时空搜索的优化,以查询发生在特定地理区域和特定时间段内的事件。此外,对于数据搜索路由,大多数方法依赖于消耗大量能量的定位系统(例如,GPS)。本文提出了一种分布式时空相似数据存储(SDS)方案。 SDS提供有效的时空和相似性数据搜索服务,并且适用于静态和动态WSN。它以使WSN邻域之间的距离代表存储在其中的数据的相似性的方式分发事件数据。此外,SDS拼车路由算法无需GPS即可有效地路由消息。理论和实验结果表明,与现有方法相比,SDS大大提高了数据查询效率,并在动态环境中获得了稳定的性能。

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