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On the Construction of Uncertain Time Series Surrogates Using Polynomial Chaos and Gaussian Processes

机译:用多项式混沌和高斯工艺建设不确定时间序列代理

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The analysis of time series is a fundamental task in many flow simulations such as oceanic and atmospheric flows. A major challenge is the design of a faithful and accurate time-dependent surrogate built with a tractable sample set and a manageable number of degrees of freedom. Several techniques are implemented to handle the time-dependent aspect of the quantity of interest including uncoupled approaches, low-rank approximations, auto-regressive models and global Bayesian emulators. These approaches rely on two popular methods for uncertainty quantification: polynomial chaos and Gaussian process regression. The different techniques are tested and compared on the uncertain evolution of the sea surface height forecast at two locations exhibiting contrasting levels of variance. Two ensemble sizes are considered as well as two versions of polynomial chaos (ordinary least squares or ridge regression) and Gaussian processes (squared exponential or Matern covariance function) in order to assess their impact on the results. The conclusions focus on the advantages and the drawbacks, in terms of accuracy, flexibility and computational costs of the different techniques.
机译:时间序列的分析是许多流模拟的基本任务,例如海洋和大气流。一项重大挑战是设计具有易于样本集和可管理的自由度的忠实和准确的时间替代代理。实施了几种技术以处理兴趣数量的时间依赖性方面,包括解耦方法,低秩近似,自动回归模型和全球贝叶斯仿真器。这些方法依赖于两个流行的不确定性量化方法:多项式混沌和高斯过程回归。测试不同的技术并比较了在表现出对比方差水平的两个位置的海面高度预测的不确定演变。考虑两种集合尺寸以及两个版本的多项式混沌(普通最小二乘或脊回归)和高斯过程(平方指数或Matern协方差函数),以评估它们对结果的影响。在不同技术的准确性,灵活性和计算成本方面,结论侧重于优点和缺点。

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