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基于GBTR矩阵补全的无线传感器网络高效数据收集方法

Efficient Data Gathering Methods in Wireless Sensor Networks Using GBTR Matrix Completion.

作者信息

Wang Donghao, Wan Jiangwen, Nie Zhipeng, Zhang Qiang, Fei Zhijie

机构信息

School of Instrumentation Science and Opto-Electronics Engineering, Beihang University, Beijing 100191, China.

出版信息

Sensors (Basel). 2016 Sep 21;16(9):1532. doi: 10.3390/s16091532.

Abstract

To obtain efficient data gathering methods for wireless sensor networks (WSNs), a novel graph based transform regularized (GBTR) matrix completion algorithm is proposed. The graph based transform sparsity of the sensed data is explored, which is also considered as a penalty term in the matrix completion problem. The proposed GBTR-ADMM algorithm utilizes the alternating direction method of multipliers (ADMM) in an iterative procedure to solve the constrained optimization problem. Since the performance of the ADMM method is sensitive to the number of constraints, the GBTR-A2DM2 algorithm obtained to accelerate the convergence of GBTR-ADMM. GBTR-A2DM2 benefits from merging two constraint conditions into one as well as using a restart rule. The theoretical analysis shows the proposed algorithms obtain satisfactory time complexity. Extensive simulation results verify that our proposed algorithms outperform the state of the art algorithms for data collection problems in WSNs in respect to recovery accuracy, convergence rate, and energy consumption.

摘要

为了获得无线传感器网络(WSN)高效的数据收集方法,提出了一种新颖的基于图变换正则化(GBTR)的矩阵填充算法。该算法探索了传感数据基于图变换的稀疏性,并将其作为矩阵填充问题中的惩罚项。所提出的GBTR - ADMM算法在迭代过程中利用乘子交替方向法(ADMM)来解决约束优化问题。由于ADMM方法的性能对约束数量敏感,因此获得了GBTR - A2DM2算法以加速GBTR - ADMM的收敛。GBTR - A2DM2受益于将两个约束条件合并为一个以及使用重启规则。理论分析表明所提出的算法具有令人满意的时间复杂度。大量的仿真结果验证了我们提出的算法在恢复精度、收敛速度和能耗方面优于用于无线传感器网络数据收集问题的现有算法。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/287e/5038805/6b355df79d69/sensors-16-01532-g001.jpg

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