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Generic cooperative and distributed algorithm for recovery of signals with the same sparsity profile in wireless sensor networks: a non-convex approach

机译:用于在无线传感器网络中恢复具有相同稀疏性曲线的信号的通用协同和分布式算法:非凸法

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Most of the wireless sensor networks (WSNs) are equipped with battery-powered devices with limited processing/communication resources which necessitate the designed algorithms to reduce the computational burden on nodes as much as possible. This could be achieved using distributed algorithms in which the computations are distributed between all of the nodes. In WSNs, the sensors observe phenomena that could be common to some of them, in addition to the intra-signal correlation; therefore, the acquired signals by the sensors possess some inter-signal correlation. These joint structures could be exploited if the designed algorithms are cooperative. On this basis, in this paper a new distributed and cooperative signal recovery algorithm in the application of compressive sensing for WSNs is proposed. We consider a situation that the sensor nodes intend to recover signals that differ from one sensor to another, in the underdetermined systems of equations, while these signals have common sparsity profile. In fact, we introduce a general structure which can be applied to many optimization problems with different non-convex objective functions and different constraints. In this paper, this method will be used on three problems with different constraints and will result in three completely distributed methods. The simulation results show that the proposed method presents better performance compared to the other existing algorithms in terms of both recovery and convergence rate.
机译:大多数无线传感器网络(WSN)配备有电池供电的设备,具有有限的加工/通信资源,这需要设计的算法,以尽可能地降低节点上的计算负担。这可以使用分布式算法来实现,其中计算在所有节点之间分布。在WSN中,除了帧内相关性外,传感器还观察到它们中的一些人可能是共同的现象;因此,传感器的获取信号具有一些信号间相关性。如果设计的算法是合作的,可以利用这些联合结构。在此基础上,提出了一种新的分布式和协作信号恢复算法在应用WSN的压缩感测中。我们考虑了传感器节点打算恢复与另一个传感器不同的信号在未定规定的方程式系统中恢复信号,而这些信号具有共同的稀疏性。事实上,我们介绍了一种通用结构,可以应用于许多不同的非凸面目标函数和不同约束的优化问题。在本文中,该方法将在不同约束的三个问题上使用,并将产生三种完全分布式的方法。仿真结果表明,该方法与恢复和收敛速率相比,与其他现有算法相比具有更好的性能。

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