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Multivariate Spatial Condition Mapping Using Subtractive Fuzzy Cluster Means

机译:使用减法模糊聚类均值的多元空间条件映射

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摘要

Wireless sensor networks are usually deployed for monitoring given physical phenomena taking place in a specific space and over a specific duration of time. The spatio-temporal distribution of these phenomena often correlates to certain physical events. To appropriately characterise these events-phenomena relationships over a given space for a given time frame, we require continuous monitoring of the conditions. WSNs are perfectly suited for these tasks, due to their inherent robustness. This paper presents a subtractive fuzzy cluster means algorithm and its application in data stream mining for wireless sensor systems over a cloud-computing-like architecture, which we call sensor cloud data stream mining. Benchmarking on standard mining algorithms, the k-means and the FCM algorithms, we have demonstrated that the subtractive fuzzy cluster means model can perform high quality distributed data stream mining tasks comparable to centralised data stream mining.
机译:通常将无线传感器网络部署为监视在特定空间和特定时间段内发生的给定物理现象。这些现象的时空分布通常与某些物理事件有关。为了在给定的时间范围内在给定的空间内恰当地表征这些事件-现象的关系,我们需要对条件进行连续监控。由于其固有的鲁棒性,WSN非常适合这些任务。本文提出了一种减法模糊聚类均值算法及其在类似云计算架构的无线传感器系统数据流挖掘中的应用,我们称之为传感器云数据流挖掘。以标准挖掘算法,k均值和FCM算法为基准,我们证明了减法模糊聚类均值模型可以执行与集中式数据流挖掘相当的高质量分布式数据流挖掘任务。

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