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Model Reduction In State Identification Problems With An Application To Determination Of Thermal Parameters

机译:状态识别问题的模型简化及其在热参数确定中的应用

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摘要

Large-dimensional parameter estimation problems are often computationally unstable and are therefore characterized as ill-posed inverse problems. Inverse problems tolerate measurement and modelling errors poorly which usually calls for accurate computational implementations of the underlying models. These implementations often turn out to be computationally too demanding for a specific application, especially in case of time-varying problems. The so-called approximation error approach has recently been developed to cope with both modelling and numerical discretization errors. This approach has been applied to both stationary (time-invariant) and nonstationary problems. Given a fixed available computational capacity, the employment of the approximation error approach usually yields significantly better estimates than with a conventional error model. In addition, the error estimates are more feasible than with a conventional error model. In this paper we extend the previous results and provide computationally efficient forms for the extended Kalman filters for large-dimensional state identification problems. We apply the approach to the determination of distributed thermal parameters of tissue. In the measurement setting the tissue is heated with focused ultrasound and the temperature evolution is observed through magnetic resonance imaging.
机译:大型参数估计问题通常在计算上不稳定,因此被表征为不适定的逆问题。反问题容忍的测量和建模错误很差,通常需要底层模型的精确计算实现。对于特定的应用,这些实现通常在计算上要求太高,尤其是在时变问题的情况下。最近已经开发出所谓的近似误差方法来应对建模误差和数值离散误差。此方法已应用于固定问题(时间不变)和非固定问题。给定固定的可用计算能力,与传统误差模型相比,采用近似误差方法通常会产生明显更好的估计。另外,误差估计比常规误差模型更可行。在本文中,我们扩展了先前的结果,并为扩展的卡尔曼滤波器提供了有效的计算形式,以解决大型状态识别问题。我们将这种方法应用于确定组织的分布热参数。在测量设置中,用聚焦超声加热组织,并通过磁共振成像观察温度的变化。

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