Missing Temperature Data Recovery Methods Based on Smoothness, Bandlimitedness and Sparseness Priors

C. Tseng, Su-Ling Lee
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引用次数: 1

Abstract

In this paper, three missing temperature data recovery methods using smoothness, bandlimitedness and sparseness priors are presented. First, the temperature data collected from the sensor network is represented by graph signal such that graph Laplacian matrix (GLM) and graph Fourier transform (GFT) can be employed to develop the missing data recovery methods. Second, the smoothness measure of graph signal is defined by GLM and the recovery problem based on smoothness prior is formulated as an optimization problem whose solution can be obtained by solving the matrix inversion. Third, a recovery method based on bandlimitedness prior in GFT domain is studied and an iterative method is used to get the recovery data. Fourth, the sparseness prior in GFT domain is applied to estimate the missing temperature data by the iterative thresholding method. Finally, real temperature data collected in Taiwan is used to evaluate the performance of three recovery methods based on different priors.
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基于平滑、带宽限制和稀疏先验的缺失温度数据恢复方法
本文提出了三种基于平滑先验、带宽限制先验和稀疏先验的缺失温度数据恢复方法。首先,将传感器网络采集到的温度数据用图信号表示,利用图拉普拉斯矩阵(GLM)和图傅立叶变换(GFT)建立缺失数据恢复方法。其次,通过GLM定义图信号的平滑度量,并将基于平滑先验的恢复问题表述为一个优化问题,通过求解矩阵反演得到该问题的解。第三,研究了基于GFT域带宽限制先验的恢复方法,并采用迭代法获得恢复数据。第四,利用GFT域稀疏先验,采用迭代阈值法对缺失温度数据进行估计。最后,利用台湾地区的实际温度数据,对三种基于不同先验的恢复方法进行了性能评价。
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