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Inner Shelf Sorted Bedforms: Long-Term Evolution and a New Hybrid Model.

机译:内层架子床形:长期演变和新的混合模型。

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摘要

Sorted bedforms are spatial extensive (100 m-km) features present on many inner continental shelves with subtle bathymetric relief (cm-m) and localized, abrupt variations in grain size (fine sand to coarse sand/gravel). Sorted bedforms provide nursery habitat for fish, are a control on benthic biodiversity, function as sediment reservoirs, and influence nearshore waves and currents. Research suggests these bedforms are a consequence of a sediment sorting feedback as opposed to the more common flow-bathymetry interaction. This dissertation addresses three topics related to sorted bedforms: 1) Modeling the long-term evolution of bedform patterns, 2) Refinement of morphological and sediment transport relations used in the sorted bedform model with 'machine learning'; 3) Development of a new sorted bedform model using these new 'data-driven' components.;Chapter 1 focuses on modeling the long term evolution of sorted bedforms. A range of sorted bedform model behaviors is possible in the long term, from pattern persistence to spatial-temporal intermittency. Vertical sorting (a result of pattern maturation processes) causes the burial of coarse material until a critical state of seabed coarseness is reached. This critical state causes a local cessation of the sorting feedback, leading to a self-organized spatially intermittent pattern, a hallmark of observed sorted bedforms. Various patterns emerge when numerical experiments include erosion, deposition, and storm events.;Modeling of sorted bedforms relies on the parameterization of processes that lack deterministic descriptions. When large datasets exist, machine learning (optimization tools from computer science) can be used to develop parameterizations directly from data. Using genetic programming (a machine learning technique) and large multisetting datasets I develop smooth, physically meaningful predictors for ripple morphology (wavelength, height, and steepness; Chapter 2) and near bed suspended sediment reference concentration under unbroken waves (Chapter 3). The new predictors perform better than existing empirical formulations.;In Chapter 3, the new components derived from machine learning are integrated into the sorted bedform model to create a 'hybrid' model: a novel way to incorporate observational data into a numerical model. Results suggest that the new hybrid model is able to capture dynamics absent from previous models, specifically, the two observed end-member pattern modes of sorted bedforms (i.e., coarse material on updrift bedform flanks or coarse material in bedform troughs). However, caveats exist when data driven components do not have parity with traditional theoretical components of morphodynamic models, and I address the challenges of integrating these disparate pieces and the future of this type of 'hybrid' modeling.
机译:排序后的床形具有广泛的空间特征(100 m-km),存在于许多内部大陆架上,并具有细微的测深(cm-m)和局部的,突然的粒度变化(从细砂到粗砂/砾石)。排序的床形为鱼类提供了苗圃栖息地,是对底栖生物多样性的控制,可作为沉积物库,并影响近岸海浪和洋流。研究表明,这些床形是沉积物分选反馈的结果,而不是更常见的流式比重法相互作用。本文研究了与排序的床形有关的三个主题:1)对床形样式的长期演变进行建模; 2)利用“机器学习”细化排序的床形模型中使用的形态学和泥沙输送关系; 3)使用这些新的“数据驱动”组件开发新的分类床形模型。;第1章着重于对分类床形的长期演变进行建模。从模式持久性到时空间歇性,从长远来看,可能会有一系列排序的床形模型行为。垂直分选(模式成熟过程的结果)会导致埋入较粗的物料,直到达到海底粗糙度的临界状态为止。此临界状态导致分拣反馈的局部停止,从而导致自组织的空间间歇模式,这是观察到的分拣床形的标志。当数值实验包括侵蚀,沉积和暴风雨事件时,会出现各种模式。分类床形的建模依赖于缺乏确定性描述的过程的参数化。当存在大型数据集时,可以使用机器学习(计算机科学的优化工具)直接从数据中开发参数化。使用遗传编程(一种机器学习技术)和大型多集数据集,我可以为波纹形态(波长,高度和陡度;第2章)和不间断波附近的近床悬浮沉积物参考浓度(第3章)开发出对物理有意义的平滑预测器。新的预测变量的性能要优于现有的经验公式。在第3章中,将从机器学习衍生的新组件集成到排序的床型模型中,以创建“混合”模型:将观测数据合并到数值模型中的一种新颖方法。结果表明,新的混合模型能够捕获以前模型中缺少的动力学,特别是已观察到的两种排序床形的最终成员模式模式(即,向上漂移的床形侧面上的粗料或床形槽中的粗料)。但是,当数据驱动的组件无法与形态动力学模型的传统理论组件相提并论时,存在警告,并且我要解决集成这些不同的组件以及此类“混合”建模的未来的挑战。

著录项

  • 作者

    Goldstein, Evan Benjamin.;

  • 作者单位

    Duke University.;

  • 授予单位 Duke University.;
  • 学科 Geomorphology.;Marine Geology.
  • 学位 Ph.D.
  • 年度 2014
  • 页码 138 p.
  • 总页数 138
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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