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TASC: topology adaptive spatial clustering for sensor networks

机译:Tasc:传感器网络的拓扑自适应空间聚类

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The ability to extract topological regularity out of large randomly deployed sensor networks holds the promise to maximally leverage correlation for data aggregation and also to assist with sensor localization and hierarchy creation. This paper focuses on extracting such regular structures from physical topology through the development of a distributed clustering scheme. The topology adaptive spatial clustering (TASC) algorithm presented here is a distributed algorithm that partitions the network into a set of locally isotropic, non-overlapping clusters without prior knowledge of the number of clusters, cluster size and node coordinates. This is achieved by deriving a set of weights that encode distance measurements, connectivity and density information within the locality of each node. The derived weights form the terrain for holding a coordinated leader election in which each node selects the node closer to the center of mass of its neighborhood to become its leader. The clustering algorithm also employs a dynamic density reachability criterion that groups nodes according to their neighborhood's density properties. Our simulation results show that the proposed algorithm can trace locally isotropic structures in non-isotropic network and cluster the network with respect to local density attributes. We also found out that TASC exhibits consistent behavior in the presence of moderate measurement noise levels.
机译:从大型随机部署的传感器网络中提取拓扑规律的能力保持了最大限度地利用数据聚合的相关性,也可以帮助传感器本地化和层次结构创建。本文专注于通过开发分布式聚类方案从物理拓扑中提取这些常规结构。这里呈现的拓扑自适应空间聚类(TASC)算法是分布式算法,其将网络分区为一组本地各向同性,非重叠群集,而无需先验知识的集群,群集大小和节点坐标。这是通过导出一组重量来实现,该重量在每个节点的局部性内编码距离测量,连接和密度信息。派生权重形成用于举办协调的领导者选举的地形,其中每个节点选择更靠近其邻域的中心的节点以成为其领导者。聚类算法还采用动态密度可达性标准,该标准根据其邻域的密度属性组的节点。我们的仿真结果表明,该算法可以追踪非各向同性网络中的局部各向同性结构,并相对于局部密度属性聚类网络。我们还发现TSC在存在中等测量噪声水平的情况下表现出一致的行为。

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