Noureddine Lasla, A. Derhab, Abdelraouf Ouadjaout, Miloud Bagaa, A. Ksentini, N. Badache
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引用次数: 6
Abstract
The area-based localization algorithms use only the location information of some reference nodes, called anchors, to give the residence area of the remaining nodes. The current algorithms use triangle, ring or circle as a geometric shape to determine the sensors' residence area. Existing works suffer from two major problems: (1) in some cases, they might issue wrong decisions about nodes' presence inside a given area, or (2) they require high anchor density to achieve a low location estimation error. In this paper, we deal with the localization problem by introducing a new way to determine the sensors' residence area which shows a better accuracy than the existing algorithms. Our new localization algorithm, called HSL (Half Symmetric Lens based localization algorithm for WSN), is based on the geometric shape of half-symmetric lens. We also uses the Voronoi diagram in HSL to mitigate the problem of unlocalizable sensor nodes. Finally, we conduct extensive simulations to evaluate the performance of HSL. Simulation results show that HSL has better locatable ratio and location accuracy compared to representative state-of-the-art area-based algorithms.
基于区域的定位算法仅使用一些参考节点(称为锚点)的位置信息来给出剩余节点的驻留区域。目前的算法使用三角形、环形或圆形作为几何形状来确定传感器的驻留区域。现有的工作存在两个主要问题:(1)在某些情况下,它们可能会对给定区域内节点的存在做出错误的决策,或者(2)它们需要高锚密度来实现低位置估计误差。在本文中,我们通过引入一种新的确定传感器驻留区域的方法来解决定位问题,该方法比现有算法具有更高的精度。我们的定位算法称为HSL (Half Symmetric Lens based localization algorithm for WSN),它是基于半对称透镜的几何形状。我们还在HSL中使用了Voronoi图来缓解传感器节点不可定位的问题。最后,我们进行了大量的仿真来评估HSL的性能。仿真结果表明,与目前具有代表性的基于区域的定位算法相比,HSL具有更好的定位率和定位精度。