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Power-Efficient Dimensionality Reduction for Distributed Channel-Aware Kalman Tracking using Wireless Sensor Networks

机译:使用无线传感器网络的分布式通道感知卡尔曼跟踪的节能高效降维

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Estimation and tracking of nonstationary dynamical processes is of paramount importance in various applications including localization and navigation. The goal of this paper is to perform such tasks in a distributed fashion using data collected at power-limited sensors communicating with a fusion center (FC) over noisy links. For a prescribed power budget, linear dimensionality reducing operators are derived per sensor to account for the sensor-FC channel and minimize the meansquare error (MSE) of Kalman filtered state estimates formed at the FC. Using these operators and state predictions fed back from the FC online, sensors compress their local innovation sequences and communicate them to the FC where tracking estimates are corrected. Analysis and corroborating simulations confirm that the novel channel-aware distributed tracker outperforms competing alternatives.
机译:非平稳动力过程的估计和跟踪在包括定位和导航在内的各种应用中至关重要。本文的目标是使用在有噪声的链路上与融合中心(FC)通信的功率受限传感器收集的数据,以分布式方式执行此类任务。对于规定的功率预算,每个传感器派生线性降维运算符,以说明传感器FC通道,并最小化在FC处形成的卡尔曼滤波状态估计值的均方误差(MSE)。使用这些运算符和从FC在线反馈的状态预测,传感器压缩其本地创新序列,并将其传达给FC,在FC上校正跟踪估计。分析和证实性仿真证实,这种新型的可感知通道的分布式跟踪器优于其他竞争产品。

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