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Distributed target localization using quantized received signal strength

机译:使用量化的接收信号强度进行分布式目标定位

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摘要

In this paper, we propose a distributed gradient algorithm for received signal strength based target localization using only quantized data. The Maximum Likelihood of the Quantized RSS is derived and Particle Swarm Optimization is used to provide an initial estimate for the gradient algorithm. A practical quantization threshold designer is presented for RSS data. To derive a distributed algorithm using only the quantized signal, the local estimate at each node is also quantized. The RSS measurements and the local estimate at each sensor node are quantized in different ways. By using a quantization elimination scheme, a quantized distributed gradient method is proposed. In the distributed algorithm, the quantization noise in the local estimate is gradually eliminated with each iteration. Section 5 shows that the performance of the centralized algorithm can reach the Cramer Rao Lower Bound. The proposed distributed algorithm using a small number of bits can achieve the performance of the distributed gradient algorithm using unquantized data.
机译:在本文中,我们提出了仅基于量化数据的,基于接收信号强度的目标定位的分布式梯度算法。推导了量化RSS的最大似然,并使用粒子群优化为梯度算法提供了初始估计。提出了一种针对RSS数据的实用量化阈值设计器。为了仅使用量化信号来导出分布式算法,还对每个节点处的局部估计进行量化。每个传感器节点的RSS测量和本地估计都以不同的方式进行量化。通过使用一种量化消除方案,提出了一种量化的分布式梯度方法。在分布式算法中,每次迭代逐渐消除局部估计中的量化噪声。第5部分显示了集中式算法的性能可以达到Cramer Rao Lower Bound。所提出的使用少量比特的分布式算法可以实现使用未量化数据的分布式梯度算法的性能。

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