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A novel heuristic approach for distance- and connectivity-based multihop node localization in wireless sensor networks

机译:一种用于无线传感器网络中基于距离和连接性的多跳节点定位的新颖启发式方法

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摘要

The availability of accurate location information of constituent nodes becomes essential in many applications of wireless sensor networks. In this context, we focus on anchor-based networks where the position of some few nodes are assumed to be fixed and known a priori, whereas the location of all other nodes is to be estimated based on noisy pairwise distance measurements. This localization task embodies a non-convex optimization problem which gets even more involved by the fact that the network may not be uniquely localizable, especially when its connectivity is not sufficiently high. To efficiently tackle this problem, we present a novel soft computing approach based on a hybridization of the Harmony Search (HS) algorithm with a local search procedure that iteratively alleviates the aforementioned non-uniqueness of sparse network deployments. Furthermore, the areas in which sensor nodes can be located are limited by means of connectivity-based geometrical constraints. Extensive simulation results show that the proposed approach outperforms previously published soft computing localization techniques in most of the simulated topologies. In particular, to assess the effectiveness of the technique, we compare its performance, in terms of Normalized Localization Error (NLE), to that of Simulated Annealing (SA)-based and Particle Swarm Optimization (PSO)-based techniques, as well as a naive implementation of a Genetic Algorithm (GA) incorporating the same local search procedure here proposed. Non-parametric hypothesis tests are also used so as to shed light on the statistical significance of the obtained results.
机译:在无线传感器网络的许多应用中,组成节点的准确位置信息的可用性变得至关重要。在这种情况下,我们专注于基于锚的网络,其中一些节点的位置被假定为固定的并且是先验的,而所有其他节点的位置将基于有噪声的成对距离测量值进行估计。该本地化任务体现了一个非凸优化问题,该问题可能由于网络可能无法唯一地本地化(尤其是在其连接性不够高时)而更加复杂。为了有效解决此问题,我们提出了一种新的基于Harmony Search(HS)算法与本地搜索过程混合的新型软计算方法,该方法迭代地缓解了上述稀疏网络部署的非唯一性。此外,借助于基于连通性的几何约束来限制传感器节点可以位于的区域。大量的仿真结果表明,所提出的方法在大多数仿真拓扑中均优于先前发布的软计算本地化技术。特别是,为了评估该技术的有效性,我们将其性能(根据归一化定位误差(NLE))与基于模拟退火(SA)和基于粒子群优化(PSO)的技术进行比较,以及本文提出了一种遗传算法(GA)的简单实现,该算法结合了相同的本地搜索过程。还使用非参数假设检验来阐明获得结果的统计意义。

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