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Regularized Nonlinear Moving-Horizon Observer With Robustness to Delayed and Lost Data

机译:具有时延和丢失数据鲁棒性的正则化非线性运动视野观测器

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摘要

Moving-horizon estimation provides a general method for state estimation with strong theoretical convergence properties under the critical assumption that global solutions are found to the associated nonlinear programming problem at each sampling instant. A particular benefit of the approach is the use of a moving window of data that is used to update the estimate at each sampling instant. This provides robustness to temporary data deficiencies such as lack of excitation and measurement noise, and the inherent robustness can be further enhanced by introducing regularization mechanisms. In this paper, we study moving-horizon estimation in cases when output measurements are lost or delayed, which is a common situation when digitally coded data are received over low-quality communication channels or random access networks. Modifications to a basic moving-horizon state estimation algorithm and conditions for exponential convergence of the estimation errors are given, and the method is illustrated by using a simulation example and experimental data from an offshore oil drilling operation.
机译:在每个采样时刻都找到针对相关非线性规划问题的整体解的关键假设下,移动水平估计为状态估计提供了一种通用的方法,具有很强的理论收敛性。该方法的一个特别好处是使用了移动的数据窗口,该窗口用于在每个采样时刻更新估计。这为临时数据缺陷(例如缺少激励和测量噪声)提供了鲁棒性,并且可以通过引入正则化机制来进一步增强固有的鲁棒性。在本文中,我们研究在输出测量丢失或延迟的情况下的移动水平估计,这是在低质量的通信信道或随机访问网络上接收数字编码数据时的常见情况。给出了对基本运动水平状态估计算法的修改以及估计误差呈指数收敛的条件,并通过一个模拟实例和一个海上石油钻井作业的实验数据对方法进行了说明。

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