A framework to quantify uncertainty in simulations of oil transport in the ocean

作者:Goncalves Rafael C*; Iskandarani Mohamed; Srinivasan Ashwanth; Thacker W Carlisle; Chassignet Eric; Knio Omar M
来源:JOURNAL OF GEOPHYSICAL RESEARCH-OCEANS, 2016, 121(4): 2058-2077.
DOI:10.1002/2015JC011311

摘要

An uncertainty quantification framework is developed for the DeepC Oil Model based on a nonintrusive polynomial chaos method. This allows the model's output to be presented in a probabilistic framework so that the model's predictions reflect the uncertainty in the model's input data. The new capability is illustrated by simulating the far-field dispersal of oil in a Deepwater Horizon blowout scenario. The uncertain input consisted of ocean current and oil droplet size data and the main model output analyzed is the ensuing oil concentration in the Gulf of Mexico. A 1331 member ensemble was used to construct a surrogate for the model which was then mined for statistical information. The mean and standard deviations in the oil concentration were calculated for up to 30 days, and the total contribution of each input parameter to the model's uncertainty was quantified at different depths. Also, probability density functions of oil concentration were constructed by sampling the surrogate and used to elaborate probabilistic hazard maps of oil impact. The performance of the surrogate was constantly monitored in order to demarcate the spacetime zones where its estimates are reliable.

  • 出版日期2016-4