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Retrospective Cost Optimization for Adaptive State Estimation, Input Estimation, and Model Refinement

机译:追溯成本优化,用于自适应状态估计,输入估计和模型细化

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Retrospective cost optimization was originally developed for adaptive control. In this paper, we show how this technique is applicable to three distinct but related problems, namely, state estimation, input estimation, and model refinement. To illustrate these techniques, we give two examples. In the first example, retrospective cost model refinement is used with synthetic data to estimate the cooling dynamics that are missing from a model of the ionosphere-thermosphere. In the second example, retrospective cost adaptive state estimation is used with data from a satellite to estimate a solar driver in the ionosphere- thermosphere, with performance gauged by using data from a second satellite.
机译:追溯成本优化最初是为自适应控制而开发的。在本文中,我们展示了该技术如何适用于三个不同但相关的问题,即状态估计,输入估计和模型优化。为了说明这些技术,我们举两个例子。在第一个示例中,回顾性成本模型细化与综合数据一起用于估算电离层-热层模型所缺少的冷却动力学。在第二个示例中,回顾性成本自适应状态估计与来自卫星的数据一起使用,以估计电离层-热层中的太阳驱动器,并通过使用来自第二颗卫星的数据对性能进行评估。

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