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Efficient Data Aggregation for Human Activity Detection with Smart Home Sensor Network Using K-Means Clustering Algorithm

机译:使用K-means聚类算法使用智能家庭传感器网络的人类活动检测有效数据聚集

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摘要

Smart home sensor network utilizes various sensors to measure physical and send data to a base station. The pattern of measured data in each room can be considered as an active pattern when activity occurrence in that room and a irrelevant pattern when no activity in the room. In order to improve data aggregation in smart home, we propose human activity pattern-based data aggregation, which applies K-means clustering algorithm based on human activity into cluster heads of cluster-based sensor network. The result of simulation shows that the clustering algorithm can detect active event by calculating the similarity between the active pattern of collected data and human activity according to room usage.
机译:智能家庭传感器网络利用各种传感器来测量物理并将数据发送到基站。 当在该房间内的活动发生时,每个房间中的测量数据模式可以被认为是当房间中没有活动中的活动时的活动模式。 为了改善智能家庭中的数据聚合,我们提出了基于人的活动模式的数据聚合,其将基于人类活动的K-means聚类算法应用于基于群集的传感器网络的集群头。 仿真结果表明,通过根据房间使用,聚类算法可以通过计算收集数据和人类活动的活动模式之间的相似性来检测活动事件。

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