首页> 外文期刊>ifac papersonline >Resolving Temporal Variations in Data-Driven Flow Models Constructed by Motion Tomography * * The research work is supported by ONR grants N00014-10-10712 (YIP) and N00014-14-1-0635; and NSF grants OCE-1032285, IIS-1319874, and CMMI-1436284.
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Resolving Temporal Variations in Data-Driven Flow Models Constructed by Motion Tomography * * The research work is supported by ONR grants N00014-10-10712 (YIP) and N00014-14-1-0635; and NSF grants OCE-1032285, IIS-1319874, and CMMI-1436284.

机译:解决运动断层扫描构建的数据驱动流动模型中的时间变化 * * 该研究工作得到了 ONR 资助 N00014-10-10712 (YIP) 和 N00014-14-1-0635 的支持;和 NSF 授予 OCE-1032285、IIS-1319874 和 CMMI-1436284。

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摘要

Abstract: Modeling and predicting ocean flow are great challenges in physical oceanography. To answer such challenges, mobile sensing platforms have been an effective tool for providing Lagrangian flow information. Such information is typically incorporated into ocean models using Lagrangian data assimilation which requires significant amount of computing power and time. Motion tomography (MT) constructs generic environmental models (GEMs) that combine computational ocean models with real-time data collected from mobile platforms to provide high-resolution predictions near the mobile platforms. MT employs Lagrangian data from mobile platforms to create a spatial map of flow in the region traversed by the mobile platforms. This paper extends the MT method to resolve the coupling between temporal variations and spatial variations in flow modeling. Along with Lagrangian data from a mobile sensor, Eulerian data are collected from a stationary sensor deployed in the region where the mobile sensor collects data. Assimilation of these two data sets into GEMs introduces a nonlinear filtering problem. This paper presents the formulation of such nonlinear filtering problem and derives a filtering method for estimating flow model parameters. We analyze observability for the derived filters and demonstrate that the resulting method improves navigation accuracy for mobile platforms.
机译:摘要: 海洋流动的建模和预测是物理海洋学的一大挑战。为了应对这些挑战,移动传感平台已成为提供拉格朗日流量信息的有效工具。这些信息通常使用拉格朗日数据同化法整合到海洋模型中,这需要大量的计算能力和时间。运动断层扫描 (MT) 构建通用环境模型 (GEM),将计算海洋模型与从移动平台收集的实时数据相结合,以提供移动平台附近的高分辨率预测。MT 使用来自移动平台的拉格朗日数据来创建移动平台所经过区域的流动空间地图。本文扩展了MT方法,以解决流动建模中时间变化和空间变化之间的耦合问题。除了来自移动传感器的拉格朗日数据外,欧拉数据也是从部署在移动传感器收集数据的区域中的固定传感器收集的。将这两个数据集同化到全球教育监测中会带来一个非线性滤波问题。该文提出了这种非线性滤波问题的公式,并推导了一种用于估计流动模型参数的滤波方法。我们分析了派生过滤器的可观测性,并证明了所得方法提高了移动平台的导航精度。

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