Computational issues on observability and optimal sensor locations

Sarah King, W. Kang, Liang Xu
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引用次数: 6

Abstract

In this paper we discuss computational issues related to optimal sensor placement in numerical weather prediction (NWP). Specifically we will discuss the application of observability as a metric for sensor placement to an atmospheric flow model and the arising optimization problem. Atmospheric data assimilation is the process of estimating the initial system state based on observations needed in NWP to produce a forecast of future weather conditions. Optimal placement of sensors for data assimilation leading to an improvement in the analysis of the data assimilation and improved forecast quality is of great interest. The traditional definition of observability is not necessarily suitable for NWP applications because of the high dimensions used in NWP. We use the concept of partial observability where the observability of a system is computed on a reduced subspace and is obtained using dynamic optimization. This definition allows for a characterization of the observability of complicated systems. Using partial observability for optimal sensor placement leads to a max-min problem. We use an empirical gramian to reduce this problem into one of eigenvalue optimization. Our focus will be to develop computational methods that are both efficient and scalable. We will leverage tools typically available in data assimilation and introduce tools used in nonsmooth optimization. We will use the shallow water equations as a testbed for our method of optimal sensor placement in four dimensional variational data assimilation.
可观测性和最优传感器位置的计算问题
本文讨论了数值天气预报(NWP)中与传感器最优放置有关的计算问题。具体来说,我们将讨论可观测性作为传感器放置的度量在大气流动模型中的应用以及由此产生的优化问题。大气资料同化是根据NWP所需的观测估计系统初始状态的过程,以产生对未来天气条件的预测。数据同化传感器的最优位置导致数据同化分析的改进和预测质量的提高是非常有趣的。传统的可观测性定义并不一定适用于NWP应用,因为NWP使用了高维数。我们使用了部分可观察性的概念,其中系统的可观察性是在约简子空间上计算的,并通过动态优化得到。这个定义允许对复杂系统的可观测性进行表征。使用部分可观测性来优化传感器位置会导致一个极大极小问题。我们使用经验文法将该问题简化为特征值优化问题。我们的重点将是开发既高效又可扩展的计算方法。我们将利用数据同化中通常可用的工具,并介绍用于非光滑优化的工具。我们将使用浅水方程作为我们在四维变分数据同化中最佳传感器放置方法的测试平台。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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