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Minimal Energy Decentralized Estimation via Exploiting the Statistical Knowledge of Sensor Noise Variance

机译:利用传感器噪声方差的统计知识进行最小能量分散估计

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We study the problem of minimal-energy decentralized estimation via sensor networks with the best-linear-unbiased-estimator fusion rule. While most of the existing solutions require the knowledge of instantaneous noise variances for energy allocation, the proposed approach instead relies on an associated statistical model. The minimization of total energy is subject to a performance constraint in terms of the reciprocal of mean square errors averaged over the considered distribution. A closed-form formula for such a mean distortion metric, as well as an associated tractable lower bound, is derived. By imposing a target distortion constraint in terms of this bound and further through feasible set relaxation, the problem can be reformulated in the form of convex optimization and is then analytically solved. The proposed method shares several attractive features of the existing designs via instantaneous noise variances. Through simulations it is seen to significantly improve the energy efficiency against the uniform allocation scheme.
机译:我们通过具有最佳线性无偏估计器融合规则的传感器网络研究最小能量分散估计的问题。尽管大多数现有解决方案都需要了解瞬时噪声方差以进行能量分配,但所提出的方法却依赖于关联的统计模型。总能量的最小化受到在考虑的分布上平均的均方误差的倒数的性能限制。得出了这种平均失真度量的封闭式公式,以及相关的可处理的下界。通过在此界限上施加目标失真约束,并进一步通过可行的集松弛,可以以凸优化的形式重新构造问题,然后进行分析解决。所提出的方法通过瞬时噪声方差共享现有设计的几个吸引人的特征。通过仿真,可以看出,与统一分配方案相比,能源效率得到了显着提高。

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