Tk-Properness条件下多传感器不确定观测的Tessarine信号最优预测

J. Jiménez-López, R. M. Fernández-Alcalá, J. Navarro-Moreno, J. C. Ruiz-Molina
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引用次数: 0

摘要

本文研究了多传感器不确定观测信号的最优单阶段预测问题。在每个时刻,来自每个传感器的观测信号分量存在非零概率,要么包含相应的信号分量,要么只有噪声。为了模拟不确定性,在观测方程中加入了由伯努利随机变量建模的乘法噪声。在信号与观测值加性噪声相关的假设下,提出了一种计算信号及其均方误差的最优最小二乘线性预测器的递推算法。通过一个数值模拟实例对理论结果进行了验证,并对所提估计器在不同不确定概率下的性能进行了评价。
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Optimal Prediction of Tessarine Signals from Multi-sensor Uncertain Observations under Tk-Properness Conditions
: In this paper, the optimal one-stage prediction problem of tessarine signals from multi-sensor uncertain observations is approached. At each instant of time, there exists a non-null probability that the observation tessarine component coming from each sensor, contains the corresponding signal component, or only noise. To model the uncertainty, multiplicative noises modeled by Bernoulli random variables are included in the observation equations. Under correlation hypotheses between the signal and observation additive noises, a recursive algorithm to calculate the optimal least-squares linear predictor of the signal and its mean-squared error is proposed, derived by using an innovation approach. The theoretical results are illustrated by means of a numerical simulation example, in which the performance of the proposed estimator is evaluated under different uncertainty probabilities.
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