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Sensor selection and power allocation via maximizing Bayesian fisher information for distributed vector estimation

机译:通过最大化贝叶斯费舍尔信息进行分布式矢量估计的传感器选择和功率分配

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In this paper we study the problem of distributed estimation of a Gaussian vector with linear observation model in a wireless sensor network (WSN) consisting of K sensors that transmit their modulated quantized observations over orthogonal erroneous wireless channels (subject to fading and noise) to a fusion center, which estimates the unknown vector. Due to limited network transmit power, only a subset of sensors can be active at each task period. Here, we formulate the problem of sensor selection and transmit power allocation that maximizes the trace of Bayesian Fisher Information Matrix (FIM) under network transmit power constraint, and propose three algorithms to solve it. Simulation results demonstarte the superiority of these algorithms compared to the algorithm that uniformly allocates power among all sensors.
机译:在本文中,我们研究了由K个传感器组成的无线传感器网络(WSN)中使用线性观测模型对高斯矢量进行分布式估计的问题,该传感器通过正交错误的无线信道(受衰落和噪声干扰)将调制后的量化观测结果传输到无线传感器网络。融合中心,它估计未知向量。由于网络发射功率有限,在每个任务周期只能激活一部分传感器。在此,我们提出了传感器选择和发射功率分配的问题,该问题在网络发射功率约束下最大化了贝叶斯费舍尔信息矩阵(FIM)的踪迹,并提出了三种算法来解决。与在所有传感器之间均匀分配功率的算法相比,仿真结果证明了这些算法的优越性。

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