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Efficient and accurate sensor network localization

机译:高效准确的传感器网络定位

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Wireless sensor networks (WSN) have great potential in ubiquitous computing. However, the severe resource constraints of WSN rule out the use of many existing networking protocols and require careful design of systems that prioritizes energy conservation over performance optimization. A key infrastructural problem in WSN is localization-the problem of determining the geographical locations of nodes. WSN typically have some nodes called seeds that know their locations using global positioning systems or other means. Non-seed nodes compute their locations by exchanging messages with nodes within their radio range. Several algorithms have been proposed for localization in different scenarios. Algorithms have been designed for networks in which each node has ranging capabilities, i.e., can estimate distances to its neighbours. Other algorithms have been proposed for networks in which no node has such capabilities. Some algorithms only work when nodes are static. Some other algorithms are designed specifically for networks in which all nodes are mobile. We propose a very general, fully distributed localization algorithm called range-based Monte Carlo boxed (RMCB) for WSN. RMCB allows nodes to be static or mobile and that can work with nodes that can perform ranging as well as with nodes that lack ranging capabilities. RMCB uses a small fraction of seeds. It makes use of the received signal strength measurements that are available from the sensor hardware. We use RMCB to investigate the question: "When does range-based localization work better than range-free localization?" We demonstrate using empirical signal strength data from sensor hardware (Texas Instruments EZ430-RF2500) and simulations that RMCB outperforms a very good range-free algorithm called weighted Monte Carlo localization (WMCL) in terms of localization error in a number of scenarios and has a similar computational complexity to WMCL. We also implement WMCL and RMCB on sensor hardware and demonstrate that it outperforms WMCL. The performance of RMCB depends critically on the quality of range estimation. We describe the limitations of our range estimation approach and provide guidelines on when range-based localization is preferable.
机译:无线传感器网络(WSN)在普适计算中具有巨大潜力。但是,WSN的严格资源限制排除了许多现有网络协议的使用,并且需要仔细设计优先考虑节能而不是性能优化的系统。 WSN中的关键基础设施问题是本地化,即确定节点地理位置的问题。 WSN通常具有一些称为“种子”的节点,这些节点使用全球定位系统或其他方式知道其位置。非种子节点通过与无线电范围内的节点交换消息来计算其位置。已经提出了几种用于在不同情况下进行定位的算法。已经为网络设计了算法,其中每个节点都具有测距功能,即可以估计到其邻居的距离。对于没有节点具有这种能力的网络,已经提出了其他算法。某些算法仅在节点为静态时起作用。其他一些算法是专门为所有节点都在其中移动的网络设计的。我们提出了一种非常通用的,完全分布式的WSN定位算法,称为基于范围的蒙特卡罗盒装(RMCB)。 RMCB允许节点为静态或移动节点,并且可以与可执行测距的节点以及缺乏测距功能的节点一起使用。 RMCB使用一小部分种子。它利用了可从传感器硬件获得的接收信号强度测量值。我们使用RMCB来调查以下问题:“何时基于范围的本地化比无范围本地化更好?”我们使用传感器硬件(Texas Instruments EZ430-RF2500)的经验信号强度数据进行了演示,并进行了仿真,结果表明,在许多情况下,RMCB在定位误差方面均优于称为加权蒙特卡洛定位(WMCL)的非常好的无范围算法。与WMCL相似的计算复杂度。我们还将在传感器硬件上实现WMCL和RMCB,并证明其性能优于WMCL。 RMCB的性能关键取决于范围估计的质量。我们描述了距离估算方法的局限性,并提供了何时基于距离的本地化更可取的指南。

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