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Node Clustering Based on Feature Correlation and Maximum Entropy for WSN

机译:基于特征相关和最大熵的无线传感器网络节点聚类

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Recently, wireless sensor network (WSN) has been drawing a great deal of attention both in academia and industry. Numerous schemes have been developed to maximize the performance and reliability of WSN, and node clustering is commonly employed for efficient management of the sensor nodes. In this paper a novel node clustering scheme is proposed which is based on the correlation between the features collected from the nodes, while the features are weighted using the maximum entropy model. It allows efficient measurement of the similarity between the features, and thus proper node clustering is achieved. Extensive computer simulation demonstrates that the proposed scheme significantly outperforms the existing representative schemes in terms of Adjusted Rand Index, Fowlkes-Mallows Index, and relative effectiveness.
机译:最近,无线传感器网络(WSN)在学术界和工业界都引起了极大的关注。已经开发出许多方案来最大化WSN的性能和可靠性,并且节点群集通常用于传感器节点的有效管理。本文提出了一种新颖的节点聚类方案,该方案基于从节点收集的特征之间的相关性,同时使用最大熵模型对特征进行加权。它允许有效测量特征之间的相似性,从而实现正确的节点聚类。大量的计算机仿真表明,在调整的兰德指数,福克斯-马洛斯指数和相对有效性方面,所提出的方案明显优于现有的代表性方案。

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