Maximum Likelihood (ML)-Based Quantizer Design for Distributed Systems

Y. Kim
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引用次数: 1

Abstract

We consider the problem of designing independently operating local quantizers at nodes in distributed estimation systems, where many spatially distributed sensor nodes measure a parameter of interest, quantize these measurements, and send the quantized data to a fusion node, which conducts the parameter estimation. Motivated by the discussion that the estimation accuracy can be improved by using the quantized data with a high probability of occurrence, we propose an iterative algorithm with a simple design rule that produces quantizers by searching boundary values with an increased likelihood. We prove that this design rule generates a considerably reduced interval for finding the next boundary values, yielding a low design complexity. We demonstrate through extensive simulations that the proposed algorithm achieves a significant performance gain with respect to traditional quantizer designs. A comparison with the recently published novel algorithms further illustrates the benefit of the proposed technique in terms of performance and design complexity.
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基于最大似然(ML)的分布式系统量化器设计
我们考虑在分布式估计系统的节点上设计独立运行的局部量化器的问题,在分布式估计系统中,许多空间分布的传感器节点测量感兴趣的参数,量化这些测量,并将量化的数据发送到融合节点,融合节点进行参数估计。考虑到使用高概率出现的量化数据可以提高估计精度的讨论,我们提出了一种设计规则简单的迭代算法,该算法通过搜索可能性增加的边界值来产生量化子。我们证明了该设计规则大大缩短了寻找下一个边界值的间隔,产生了较低的设计复杂性。我们通过广泛的模拟证明,与传统的量化器设计相比,所提出的算法实现了显著的性能增益。与最近发表的新算法的比较进一步说明了所提出的技术在性能和设计复杂性方面的优势。
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