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A predictive Bayesian data-derived multi-modal Gaussian model of sunken oil mass

机译:预测性贝叶斯数据推导的下沉油团多态高斯模型

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摘要

Hydrodynamic modeling of sunken oil is hindered by insufficient knowledge of bottom currents. In this paper, the development of a predictive Bayesian model, SOSim, for inferring the location of sunken oil in time, based on sparse, qualitative or quantitative near-real time field data collected immediately following a spill, is described. Mapped output represents unconditional multi-modal Gaussian relative probabilities of finding oil at points across a relatively flat bay bottom, in time. The method of images is extended to address curvilinear reflecting shorelines. The model is demonstrated to locate the entire DBL-152 spill, given field data covering part of the area affected, and to project oil movement near curvilinear shoreline boundaries given simulated field data at two points in time. Limitations include accountability for discontinuous boundary conditions. Further development is recommended, including development of capability for accepting bathymetric data, for modeling continuous oil releases, and for 3-D modeling of suspended oil. (C) 2015 Elsevier Ltd. All rights reserved.
机译:井底电流知识不足,阻碍了沉油的流体动力学建模。在本文中,描述了基于泄漏后立即收集的稀疏,定性或定量的近实时现场数据,开发一种预测贝叶斯模型(SOSim)以推断下沉油的及时位置。映射的输出表示及时在相对平坦的海湾底部的点找到油的无条件多峰高斯相对概率。图像方法已扩展为解决曲线反射海岸线。在给定的现场数据覆盖了部分受影响区域的情况下,证明了该模型能够定位整个DBL-152溢漏,并在两个时间点提供了仿真的现场数据,从而预测了曲线海岸线边界附近的石油运动。限制包括对不连续边界条件的责任。建议进一步开发,包括开发用于接收测深数据,建模连续油释放和悬浮油的3-D建模的功能。 (C)2015 Elsevier Ltd.保留所有权利。

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