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An enhanced K-Means clustering technique with Hopfield Artificial Neural Network based on reactive clustering protocol

机译:基于反应聚类协议的Hopfield人工神经网络改进的K-Means聚类技术

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An efficient algorithm is presented in this paper to enhance the lifetime of WSN and to become the network more energy efficient. In wireless sensor networks, due to the enhancement in the quantity of data, it becomes very complex to analyze those data, Categorize those data into singular collection. This may leads to the requirement for better data mining techniques. One of the mostly used clustering techniques is K-Means clustering. This paper proposed a new technique to enhance the K-Means clustering, which can result in better performance. For initialization, this paper uses an improved version of Hopfield Artificial Neural Network (HANN) algorithm. Also Reactive networks, is in combined with the k-means clustering, as opposed to proactive networks, Immediately it May Respond to changes in relevant parameters of interest. The experimental result indicates that the proposed K-Means clustering algorithm gives the better results as compared to the other techniques.
机译:本文提出了一种有效的算法来延长WSN的寿命,并使网络更加节能。在无线传感器网络中,由于数据量的增加,分析这些数据变得非常复杂,将这些数据归类为单个集合。这可能导致需要更好的数据挖掘技术。 K-Means聚类是最常用的聚类技术之一。本文提出了一种新的技术来增强K-Means聚类,可以提高性能。对于初始化,本文使用了改进的Hopfield人工神经网络(HANN)算法。相对于主动网络,反应网络也与k均值聚类相结合,可以立即响应感兴趣的相关参数的变化。实验结果表明,与其他技术相比,提出的K-Means聚类算法具有更好的效果。

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