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A Missing Sensor Data Estimation Algorithm Based on Temporal and Spatial Correlation

机译:基于时空关联的传感器数据缺失估计算法

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In wireless sensor network, data loss is inevitable due to its inherent characteristics. This phenomenon is even serious in some situation which brings a big challenge to the applications of sensor data. However, the traditional data estimation methods can not be directly used in wireless sensor network and existing estimation algorithms fail to provide a satisfactory accuracy or have high complexity. To address this problem,Temporal and Spatial Correlation Algorithm(TSCA) is proposed to estimate missing data as accurately as possible in this paper. Firstly, it saves all the data sensed at the same time as a time series, and the most relevant series are selected as the analysis sample, which improves efficiency and accuracy of the algorithm significantly. Secondly, it estimates missing values from temporal and spatial dimensions. Different weights are assigned to these two dimensions. Thirdly, there are two strategies to deal with severe data loss, which improves the applicability of the algorithm. Simulation results on different sensor datasets verify that the proposed approach outperforms existing solutions in terms of estimation accuracy.
机译:在无线传感器网络中,由于其固有的特性,数据丢失是不可避免的。这种现象在某些情况下甚至很严重,这给传感器数据的应用带来了巨大挑战。但是,传统的数据估计方法不能直接用于无线传感器网络,现有的估计算法无法提供令人满意的精度或具有很高的复杂度。为了解决这个问题,本文提出了时空相关算法(TSCA)来尽可能准确地估计缺失数据。首先,它可以将所有同时检测到的数据保存为一个时间序列,并选择最相关的序列作为分析样本,从而显着提高了算法的效率和准确性。其次,它从时间和空间维度估计缺失值。这两个维度分配了不同的权重。第三,有两种处理严重数据丢失的策略,提高了算法的适用性。在不同传感器数据集上的仿真结果证明,该方法在估计精度方面优于现有解决方案。

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