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A hybrid indoor localization solution using a generic architectural framework for sparse distributed wireless sensor networks

机译:一种混合室内定位解决方案,使用用于稀疏分布式无线传感器网络的通用架构框架

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Indoor localization and navigation using wireless sensor networks is still a big challenge if expensive sensor nodes are not involved. Previous research has shown that in a sparse distributed sensor network the error distance is way too high. Even room accuracy can not be guaranteed. In this paper, an easy-to-use generic positioning framework is proposed, which allows users to plug in a single or multiple positioning algorithms. We illustrate the usability of the framework by discussing a new hybrid positioning solution. The combination of a weighted (range-based) and proximity (range-free) algorithm is made. Both solutions separately have an average error distance of 13.5m and 2.5m respectively. The latter result is quite accurate due to the fact that our testbeds are not sparse distributed. Our hybrid algorithm has an average error distance of 2.66m only using a selected set of nodes, simulating a sparse distributed sensor network. All our experiments have been executed in the iMinds testbed: namely at “de Zuiderpoort”. These algorithms are also deployed in two real-life environments: “De Vooruit” and “De Vijvers”.
机译:如果不涉及昂贵的传感器节点,则使用无线传感器网络的室内定位和导航仍然是一个很大的挑战。以前的研究表明,在稀疏分布式传感器网络中,误差距离太高。甚至房间准确性也无法保证。在本文中,提出了一种易于使用的通用定位框架,允许用户插入单个或多个定位算法。我们通过讨论新的混合定位解决方案来说明框架的可用性。进行加权(基于范围)和接近(无级)算法的组合。两种解决方案分别的平均误差距离分别为13.5米和2.5米。由于我们的测试床不稀疏分布式,后一种结果非常准确。我们的混合算法仅使用所选节点组的平均误差距离为2.66米,模拟稀疏分布式传感器网络。我们的所有实验都已在模仿被测试的模仿中执行:即“de zuiderpoort”。这些算法也部署在两个现实生活环境中:“devooruit”和“devijvers”。

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