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Widely linear estimation for multisensor quaternion systems with mixed uncertainties in the observations

机译:具有混合不确定性的多传感器四元数系统的广泛线性估计

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The optimal widely linear state estimation problem for quaternion systems with multiple sensors and mixed uncertainties in the observations is solved in a unified framework. For that, we devise a unified model to describe the mixed uncertainties of sensor delays, packet dropouts and uncertain observations by using three Bernoulli distributed quaternion random processes. The proposed model is valid for linear discrete-time quaternion stochastic systems measured by multiple sensors and it allows us to provide filtering, prediction and smoothing algorithms for estimating the quaternion state through a widely linear processing. Simulation results are employed to show the superior performance of such algorithms in comparison to standard widely linear methods when mixed uncertainties are present in the observations. (C) 2019 The Franklin Institute. Published by Elsevier Ltd. All rights reserved.
机译:在统一框架下,解决了具有多个传感器和混合不确定性的四元数系统的最佳广义线性状态估计问题。为此,我们设计了一个统一的模型,通过使用三个Bernoulli分布式四元数随机过程来描述传感器延迟,数据包丢失和不确定观测值的混合不确定性。所提出的模型对于由多个传感器测量的线性离散时间四元数随机系统是有效的,它使我们能够提供滤波,预测和平滑算法,以通过广泛的线性处理来估计四元数状态。当观测结果中存在混合不确定性时,通过仿真结果可以证明与标准的广泛线性方法相比,这种算法具有更好的性能。 (C)2019富兰克林研究所。由Elsevier Ltd.出版。保留所有权利。

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