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FAST AND FLEXIBLE UNCERTAINTY QUANTIFICATION THROUGH A DATA-DRIVEN SURROGATE MODEL

机译:通过数据驱动的替代模型快速灵活地进行不确定性定量

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摘要

To assess a computer model's descriptive and predictive power, the model's response to uncertainties in the input must be quantified. However, simulations of complex systems typically need a lot of computational resources, and thus prohibit exhaustive sweeps of high-dimensional spaces. Moreover, the time available to compute a result for decision systems is often very limited. In this paper, we construct a data-driven surrogate model from time delays of observations of a complex, microscopic model. We employ diffusion maps to reduce the dimensionality of the delay space. The surrogate model allows faster generation of the quantity of interest over time than the original, microscopic model. It is a nonintrusive method, and hence does not need access to the model formulation. In contrast to most other surrogate approaches, the construction allows quantities of interest that are not closed dynamically, because a closed state space is constructed through Takens delay embedding. Also, the surrogate can be stored to and loaded from storage with very little effort. The surrogate model is decoupled from the original model, and the fast execution speed allows us to quickly evaluate many different parameter distributions. We demonstrate the capability of the approach in combination with forward UQ on a parametrized Burgers' equation, and the microscopic simulation of a train station. The surrogate model can accurately capture the dynamical features in both examples, with relative errors always smaller than 10%. The simulation time in the real-world example can be reduced by an order of magnitude.
机译:为了评估计算机模型的描述能力和预测能力,必须量化模型对输入不确定性的响应。但是,复杂系统的仿真通常需要大量的计算资源,因此禁止对高维空间进行详尽的扫描。此外,可用于计算决策系统结果的时间通常非常有限。在本文中,我们从复杂的微观模型的观测时间延迟构建了一个数据驱动的替代模型。我们采用扩散图来减少延迟空间的维数。与原始的微观模型相比,替代模型可以更快地生成感兴趣的数量。这是一种非侵入性方法,因此不需要访问模型公式。与大多数其他替代方法相反,此构造允许未动态关闭的感兴趣数量,因为通过Takens延迟嵌入构造了一个封闭状态空间。而且,可以毫不费力地将代理存储到存储中并从存储中加载。代理模型与原始模型分离,并且快速的执行速度使我们能够快速评估许多不同的参数分布。我们证明了该方法与参数化Burgers方程的正向UQ结合以及火车站的微观仿真的能力。替代模型可以在两个示例中准确捕获动态特征,相对误差始终小于10%。实际示例中的仿真时间可以减少一个数量级。

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