Iterative data-driven construction of surrogates for an efficient Bayesian identification of oil spill source parameters from image contours

IF 2.1 3区 地球科学 Q3 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Computational Geosciences Pub Date : 2024-05-09 DOI:10.1007/s10596-024-10288-9
Samah El Mohtar, Olivier Le Maître, Omar Knio, Ibrahim Hoteit
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Abstract

Identifying the source of an oil spill is an essential step in environmental forensics. The Bayesian approach allows to estimate the source parameters of an oil spill from available observations. Sampling the posterior distribution, however, can be computationally prohibitive unless the forward model is replaced by an inexpensive surrogate. Yet the construction of globally accurate surrogates can be challenging when the forward model exhibits strong nonlinear variations. We present an iterative data-driven algorithm for the construction of polynomial chaos surrogates whose accuracy is localized in regions of high posterior probability. Two synthetic oil spill experiments, in which the construction of prior-based surrogates is not feasible, are conducted to assess the performance of the proposed algorithm in estimating five source parameters. The algorithm successfully provided a good approximation of the posterior distribution and accelerated the estimation of the oil spill source parameters and their uncertainties by an order of 100 folds.

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迭代数据驱动的代用物构建,用于从图像轮廓中高效贝叶斯识别溢油源参数
确定油类泄漏源是环境取证的重要步骤。贝叶斯方法可以根据现有的观察结果估算出油类泄漏源参数。然而,对后验分布进行采样可能会导致计算量过大,除非用廉价的替代品取代前验模型。然而,当前瞻性模型表现出强烈的非线性变化时,构建全局精确的代用模型可能具有挑战性。我们提出了一种数据驱动的迭代算法,用于构建多项式混沌代用模型,其准确性被定位在后验概率较高的区域。在两个合成溢油实验中,构建基于先验概率的代用值是不可行的,我们对所提出的算法在估计五个源参数方面的性能进行了评估。该算法成功地提供了后验分布的良好近似值,并将溢油源参数及其不确定性的估算速度提高了 100 倍。
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来源期刊
Computational Geosciences
Computational Geosciences 地学-地球科学综合
CiteScore
6.10
自引率
4.00%
发文量
63
审稿时长
6-12 weeks
期刊介绍: Computational Geosciences publishes high quality papers on mathematical modeling, simulation, numerical analysis, and other computational aspects of the geosciences. In particular the journal is focused on advanced numerical methods for the simulation of subsurface flow and transport, and associated aspects such as discretization, gridding, upscaling, optimization, data assimilation, uncertainty assessment, and high performance parallel and grid computing. Papers treating similar topics but with applications to other fields in the geosciences, such as geomechanics, geophysics, oceanography, or meteorology, will also be considered. The journal provides a platform for interaction and multidisciplinary collaboration among diverse scientific groups, from both academia and industry, which share an interest in developing mathematical models and efficient algorithms for solving them, such as mathematicians, engineers, chemists, physicists, and geoscientists.
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