论文标题
分布式图过滤器的量化分析和可靠的设计
Quantization Analysis and Robust Design for Distributed Graph Filters
论文作者
论文摘要
分布式图滤波器已在无线传感器网络(WSN)中找到应用程序,以求解分布式任务,例如共识,信号降解和重建。但是,当通过WSN使用时,图形过滤器应处理网络有限的能源,处理和通信功能。量化起着改善后者的基本作用,但其对分布式图滤波的影响几乎没有理解。由于噪声和干扰,WSN也很容易出现随机的链接损失。滤波器输出受量化误差和拓扑随机性误差的影响,如果在滤波器设计阶段未正确解释该误差,则可能通过滤波迭代而导致累积误差,并显着降低性能。在本文中,我们分析了量化如何影响时间不变和时变图的分布式图滤波。我们为两个最常见的图形过滤器的量化效果提供了见解:有限的脉冲响应(FIR)和自回旋移动平均线(ARMA)图形滤波器。当定量步骤固定或在过滤迭代中动态变化时,我们就可以在过滤器性能上设计理论性能保证。对于FIR滤波器,我们表明动态量化得出的步骤大小比固定式量化更具控制量噪声的控制。对于ARMA图过滤器,我们表明,降低量化的量化在迭代上的量化将量化噪声降低到稳态下的零。此外,我们提出了强大的滤波器设计策略,以最大程度地减少时间流行和随时间变化的网络的量化噪声。关于合成和两个真实数据集的数值实验证实了我们的发现,并显示了量化位,滤波顺序和鲁棒性与拓扑随机性之间的不同权衡。
Distributed graph filters have found applications in wireless sensor networks (WSNs) to solve distributed tasks such as consensus, signal denoising, and reconstruction. However, when employed over WSN, the graph filters should deal with the network limited energy, processing, and communication capabilities. Quantization plays a fundamental role to improve the latter but its effects on distributed graph filtering are little understood. WSNs are also prone to random link losses due to noise and interference. The filter output is affected by both the quantization error and the topological randomness error, which, if it is not properly accounted in the filter design phase, may lead to an accumulated error through the filtering iterations and significantly degrade the performance. In this paper, we analyze how quantization affects distributed graph filtering over both time-invariant and time-varying graphs. We bring insights on the quantization effects for the two most common graph filters: the finite impulse response (FIR) and autoregressive moving average (ARMA) graph filter. We devise theoretical performance guarantees on the filter performance when the quantization stepsize is fixed or changes dynamically over the filtering iterations. For FIR filters, we show that a dynamic quantization stepsize leads to more control on the quantization noise than the fixed-stepsize quantization. For ARMA graph filters, we show that decreasing the quantization stepsize over the iterations reduces the quantization noise to zero at the steady-state. In addition, we propose robust filter design strategies that minimize the quantization noise for both time-invariant and time-varying networks. Numerical experiments on synthetic and two real data sets corroborate our findings and show the different trade-offs between quantization bits, filter order, and robustness to topological randomness.