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Dynamic Data-driven Deformable Reduced Models for Coherent Fluids 1

机译:相干流体的动态数据驱动可变形简化模型 1

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In autonomous mapping of geophysical fluids, a DDDAS framework involves reduced models constructed offline for online use. Here we show that classical model reduction is ill-suited to deal with model errors manifest in coherent fluids as feature errors including position, scale, shape or other deformations. New fluid representations are required. We propose augmenting amplitude vector spaces by non-parametric deformation vector fields which enables the synthesis of new Principal Appearance and Geometry modes, Coherent Random Field expansions, and an Adaptive Reduced Order Model by Alignment (AROMA) framework. AROMA dynamically deforms reduced models in response to feature errors. It provides robustness and efficiency in inference by unifying perceptual and physical representations of coherent fluids that to the best of our knowledge has not hitherto been proposed.
机译:在地球物理流体的自动测绘中,DDDAS框架涉及为在线使用而离线构建的简化模型。在这里,我们表明经典模型约简不适用于处理相干流体中表现为特征误差(包括位置,比例,形状或其他变形)的模型误差。需要新的流体表示。我们提议通过非参数形变矢量场来增加幅度矢量空间,从而能够合成新的主要外观和几何模式,相干随机场展开以及通过路线自适应自适应降阶模型(AROMA)框架。 AROMA会根据特征错误动态变形精简模型。它通过统一相干流体的知觉和物理表示来提供推理的鲁棒性和效率,而据我们所知,到目前为止,尚未提出这些知识。

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