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Trend Cluster Based Kriging Interpolation in Sensor Data Networks

机译:基于趋势集群的传感器数据网络中的克里格插值

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Spatio-temporal data collected in sensor networks are often affected by faults due to power outage at nodes, wrong time synchronizations, interference, network transmission failures, sensor hardware issues or high energy consumption during communications. Therefore, acquisition of information by wireless sensor networks is a challenging step in monitoring physical ubiquitous phenomena (e.g. weather, pollution, traffic). This issue gives raise to a fundamental trade-off: higher density of sensors provides more data, higher resolution and better accuracy, but requires more communications and processing. A data mining approach to reduce communication and energy requirements is investigated: the number of transmitting sensors is decreased as much as possible, even keeping a reasonable degree of data accuracy. Kriging techniques and trend cluster discovery are employed to estimate unknown data in any un-sampled location of the space and at any time point of the past. Kriging is a statistical interpolation group of techniques, suited for spatial data, which estimates the unknown data in any space location by a proper weighted mean of nearby observed data. The trend clusters are stream patterns which compactly represent sensor data by means of spatial clusters having prominent data trends in time. Kriging is here applied to estimate unknown data taking into account a spatial correlation model of the sensor network. Trends are used as a guideline to transfer this model across the time horizon of the trend itself. Experiments are performed with a real sensor data network, in order to evaluate this interpolation technique and demonstrate that Kriging and trend clusters outperform, in terms of accuracy, interpolation competitors like Nearest Neighbor or Inverse Distance Weighting.
机译:在传感器网络中收集的时空数据通常受到由于节点的停电而导致的故障影响,错误的时间同步,干扰,网络传输故障,传感器硬件问题或通信中的高能耗。因此,通过无线传感器网络获取信息是监测物理普遍存存现象的具有挑战性的步骤(例如天气,污染,交通)。这个问题给出了基本折衷的基本折衷:更高的传感器密度提供更多数据,更高的分辨率和更好的准确性,但需要更多的通信和处理。研究了降低通信和能量要求的数据挖掘方法:发射传感器的数量尽可能地降低,甚至保持合理的数据准确度。 Kriging技术和趋势集群发现被用于估计空间的任何未采样位置的未知数据以及过去的任何时间点。 Kriging是一个适用于空间数据的统计插值组,其通过附近观察数据的适当加权平均值估计任何空间位置中的未知数据。趋势集群是流模式,其通过具有突出数据趋势的空间簇紧凑地表示传感器数据。克里格特在这里应用于考虑传感器网络的空间相关模型来估计未知数据。趋势被用作在趋势本身的时间范围内转移该模型的指导。使用真实的传感器数据网络进行实验,以便评估该插值技术,并证明Kriging和趋势集群在准确性,内插竞争者如最近的邻居或逆距离加权等方面占此胜过。

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