Computer models are widely used across a range of scientific disciplines to describe various complex physical systems, however to perform full uncertainty quantification we often need to employ emulators. An emulator is a fast statistical construct that mimics the slow to evaluate computer model, and greatly aids the vastly more computationally intensive uncertainty quantification calculations that an important scientific analysis often requires. We examine the problem of emulating computer models that possess multiple, partial discontinuities occurring at known non-linear location. We introduce the TENSE framework, based on carefully designed correlation structures that respect the discontinuities while enabling full exploitation of any smoothness/continuity elsewhere. This leads to a single emulator object that can be updated by all runs simultaneously, and also used for efficient design. This approach avoids having to split the input space into multiple subregions. We apply the TENSE framework to the TNO Challenge II, emulating the OLYMPUS reservoir model, which possess multiple such discontinuities.
翻译:计算机模型被广泛用于一系列科学学科,以描述各种复杂的物理系统,然而,为了充分量化不确定性,我们往往需要使用模拟器。模拟器是一种快速的统计结构,模仿计算机模型评估速度缓慢,并极大地帮助进行一项重要的科学分析经常需要的、在计算上更加密集的不确定性量化计算。我们研究了模拟计算机模型的问题,这些计算机模型在已知的非线性地点存在多重、部分不连续现象。我们引入了TENSE框架,其依据是精心设计的关联结构,尊重不连续状态,同时允许充分利用其他地方的任何平滑/不连续状态。这导致形成一个单一的模拟对象,可以由所有运行者同时更新,并用于高效的设计。这种方法避免了将输入空间分成多个次区域。我们将TESE框架应用于TNO挑战II, 模拟拥有多个此类不连续性的OLYMPUS储油模型。