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Averaging based distributed estimation algorithm for rate-constrained sensor networks with additive quantization model

机译:基于速率平均的具有累加量化模型的速率受限传感器网络分布式估计算法

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In this paper, we consider the problem of parameter estimation over sensor networks under data rate constraint. A general additive quantization model is introduced to capture the data rate constraint. Existing works on the effect of the additive model on standard consensus algorithms show that convergence can be guaranteed only if the quantization error variances form a convergent series. We propose to incorporate a moving average step into the consensus algorithm to smear out the randomness caused by quantization errors. It is shown that the proposed algorithm achieves the performance of the optimal centralized sample mean estimator even if the quantization error variances are not vanishing. This is guaranteed by establishing a law of the iterated logarithm for weighted sums of independent random vectors. Moreover, an explicit bound of the rate of convergence is given to quantify its almost sure performance. Finally, simulations are provided to validate the theoretical results.
机译:本文考虑了数据速率约束下传感器网络的参数估计问题。引入了一般的加性量化模型来捕获数据速率约束。现有的关于加性模型对标准共识算法影响的研究表明,只有当量化误差方差形成一个收敛序列时,才能保证收敛。我们建议将移动平均步长纳入共识算法中,以抹平量化误差引起的随机性。结果表明,即使量化误差方差没有消失,该算法也能达到最优集中样本均值估计器的性能。通过为独立随机向量的加权和建立迭代对数定律,可以保证这一点。此外,给出了收敛速度的明确界限以量化其几乎确定的性能。最后,提供了仿真以验证理论结果。

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