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Adaptive Kalman Filtering for Systems Subject to Randomly Delayed and Lost Measurements

机译:经受随机延迟和丢失测量的系统的自适应卡尔曼滤波

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摘要

This paper investigates the problem of state estimation for discrete-time linear systems where the observation data are transmitted from the sensor to the filter subject to random delay and dropout. The loss and latency of the measurements are modeled by a group of Bernoulli distributed random variables with uncertain probabilities, which appear in the Kalman filter parameters. An adaptation factor, which is defined by comparing the theoretical and practical values of the innovation covariance, is employed to adjust the filter gains during estimation. Simulation results are presented to verify the improved performance of the proposed adaptive filter.
机译:本文研究了离散时间线性系统的状态估计问题,在该系统中,观测数据从传感器传输到滤波器时会受到随机延迟和丢失的影响。测量的损失和等待时间由一组不确定概率的伯努利分布随机变量建模,这些变量出现在卡尔曼滤波器参数中。通过比较创新协方差的理论值和实际值定义的自适应因子可用于在估算期间调整滤波器增益。给出仿真结果以验证所提出的自适应滤波器的改进性能。

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