具有相同位量化器的分布式贝叶斯估计的性能限制

Xia Li, Jun-hai Guo, Hao Chen, U. Rogers
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引用次数: 4

摘要

本文推导了已知参数先验概率密度函数的传感器网络分布贝叶斯参数估计问题的性能极限。在给定待估计参数的情况下,假设传感器的观测值是条件独立且同分布的,并且传感器采用独立且相同的量化器。性能极限是根据分布式估计方案对所有可能的传感器观测模型所能达到的最佳渐近性能来确定的。该性能限制是通过在理想设置下推导最优概率量化器获得的,在理想设置下,传感器直接观察参数,没有任何噪声或失真。在均匀先验条件下,导出的贝叶斯性能极限和相关量化器与先前在极小极大框架下开发的性能极限和量化器相同,其中假设参数是固定但未知的。在分布式贝叶斯设置下提出的性能限制与广泛使用的基于全精度传感器观测的性能界限进行了比较。比较表明,在大多数有意义的信噪比(SNR)区域,本文推导的性能极限相对要严格得多。而且,与非量化观测的性能极限不同,这种性能极限在一定的噪声观测模型下是可以达到的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The performance limit for distributed Bayesian estimation with identical one-bit quantizers
In this paper, a performance limit is derived for a distributed Bayesian parameter estimation problem in sensor networks where the prior probability density function of the parameter is known. The sensor observations are assumed conditionally independent and identically distributed given the parameter to be estimated, and the sensors employ independent and identical quantizers. The performance limit is established in terms of the best possible asymptotic performance that a distributed estimation scheme can achieve for all possible sensor observation models. This performance limit is obtained by deriving the optimal probabilistic quantizer under the ideal setting, where the sensors observe the parameter directly without any noise or distortion. With a uniform prior, the derived Bayesian performance limit and the associated quantizer are the same as the previous developed performance limit and quantizers under the minimax framework, where the parameter is assumed to be fixed but unknown. This proposed performance limit under distributed Bayesian setting is compared against a widely used performance bound that is based on full-precision sensor observations. This comparison shows that the performance limit derived in this paper is comparatively much tighter in most meaningful signalto- noise ratio (SNR) regions. Moreover, unlike the unquantized observations performance limit which can never be achieved, this performance limit can be achieved under certain noise observation models.
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