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Multiple-model adaptive state estimation of the HIV-1 infection using a moving horizon approach

机译:移动视域方法对HIV-1感染的多模型自适应状态估计

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This paper addresses the problem of state estimation under parametric uncertainty of discrete lumped nonlinear systems with application to the HIV-1 infection. We present an estimation algorithm using a multiple-model adaptive estimation approach with a bank of moving horizon estimators with decimated observations. This is motivated by its possible applications to the HIV-1 infection where, in practice, we are unable to observe the patient on a regular basis (non-periodic measurements) and because the HIV-1 dynamics depends on parameters unique to each patient (parameter uncertainty). We show that under reasonable assumptions, the proposed estimation algorithm is robust to parametric uncertainty and the estimation error converges to a small neighborhood of zero. The robustness and performance of the algorithm are illustrated through computer simulations.
机译:本文解决了离散集总非线性系统在参数不确定性下的状态估计问题,并将其应用于HIV-1感染。我们提出了一种估计算法,该算法使用多模型自适应估计方法,并带有一组带有被观测观测值的运动层估计器。这是由于其可能应用于HIV-1感染的缘故,在这种情况下,实际上我们无法定期观察患者(非定期测量),并且由于HIV-1动态取决于每个患者的独特参数(参数不确定性)。我们表明,在合理的假设下,所提出的估计算法对于参数不确定性具有鲁棒性,并且估计误差收敛到零的小邻域。通过计算机仿真说明了算法的鲁棒性和性能。

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