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Resource allocation optimization for distributed vector estimation with digital transmission

机译:数字传输的分布式矢量估计的资源分配优化

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We consider the problem of distributed estimation of an unknown zero-mean Gaussian random vector with a known covariance matrix in a wireless sensor network (WSN). Sensors transmit their binary modulated quantized observations to a fusion center (FC), over orthogonal MAC channels subject to fading and additive noise. Assuming the FC employs the linear minimum mean-square error (MMSE) estimator, we obtain an upper bound on MSE distortion. We investigate optimal resource allocation strategies that minimize the MSE bound, subject to total bandwidth (measured in quantization bits) and total transmit power constraints. The bound consists of two terms, where the first and second terms, respectively, account for the MSE distortion due to quantization and communication channel errors. Therefore, we find the bit allocation that minimizes the first distortion term. Given the optimal bit allocation, we obtain the power allocation that minimizes the second distortion term. Our simulation results are in agreement with our analysis and show that the proposed bit and power allocation scheme outperforms uniform bit and power allocation scheme.
机译:我们考虑无线传感器网络(WSN)中具有已知协方差矩阵的未知零均值高斯随机向量的分布式估计问题。传感器在经受衰落和加性噪声影响的正交MAC信道上将其二进制调制量化观测值传输到融合中心(FC)。假设FC使用线性最小均方误差(MMSE)估计器,我们将获得MSE失真的上限。我们研究了根据总带宽(以量化位为单位)和总发射功率约束而将MSE限制最小化的最佳资源分配策略。边界由两个项组成,其中第一和第二项分别说明了由于量化和通信信道错误而导致的MSE失真。因此,我们找到了使第一失真项最小的位分配。给定最佳的比特分配,我们获得使第二失真项最小的功率分配。我们的仿真结果与我们的分析一致,表明所提出的比特和功率分配方案优于统一的比特和功率分配方案。

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