Data Reconstruction of Wireless Sensor Network Based on Graph Signal

Zhiyang Xu
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Abstract

The environmental and other factors can cause data missing in power systems; thus, data reconstruction is of great significance. In this paper, we model the observed signal as time-varying signal based on graph signal processing (GSP) and establish an optimization problem with the objective of minimizing the error between the true signal and the reconstructed signal at the sampling points and improving the smoothness of the reconstructed signal. To solve the optimization problem, Taylor series expansion is performed on the Hessian inverse matrix of the objective function, and truncated Taylor series is used as an approximation of the Hessian inverse matrix. In the simulation, the algorithm proposed in this paper is compared with the gradient descent algorithm, and the result shows that the proposed algorithm converges faster and the reconstructed signal is more accurate.
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基于图信号的无线传感器网络数据重构
在电力系统中,环境和其他因素会导致数据丢失,因此数据重建意义重大。本文基于图信号处理(GSP)将观测信号建模为时变信号,并建立了一个优化问题,目标是最小化采样点上真实信号与重建信号之间的误差,并提高重建信号的平滑度。为解决优化问题,对目标函数的 Hessian 逆矩阵进行了泰勒级数展开,并使用截断泰勒级数作为 Hessian 逆矩阵的近似值。在仿真中,本文提出的算法与梯度下降算法进行了比较,结果表明,本文提出的算法收敛速度更快,重建信号的精度更高。
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