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首页> 外文期刊>SIAM/ASA Journal on Uncertainty Quantification >Probabilistic Gradients for Fast Calibration of Differential Equation Models
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Probabilistic Gradients for Fast Calibration of Differential Equation Models

机译:概率梯度快速校准微分方程模型

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Calibration of large-scale differential equation models to observational or experimental data is a widespread challenge throughout applied sciences and engineering. A crucial bottleneck in state=of-the-art calibration methods is the calculation of local sensitivities, i.e., derivatives of the loss function with respect to the estimated parameters, which often necessitates several numerical solves of the underlying system of partial or ordinary differential equations. In this paper we present a new probabilistic approach to computing local sensitivities. The proposed method has several advantages over classical methods. First, it operates within a constrained computational budget and provides a probabilistic quantification of uncertainty incurred in the sensitivities from this constraint. Second, information from previous sensitivity estimates can be recycled in subsequent computations, reducing the overall computational effort for iterative gradient-based calibration methods. The methodology presented is applied to two challenging test problems and compared against classical methods.
机译:校准的大规模的微分方程模型来观测或实验数据在应用科学广泛的挑战和工程。是状态=的校准方法计算当地的敏感性,即对衍生品的损失函数估计参数,通常需要几个数值的解决底层系统部分或普通微分方程。一个新的概率方法计算当地敏感问题。优于传统方法。运行在一个受限制的计算预算和提供了一个概率量化的不确定性引起的从这个约束敏感性。从先前的灵敏度信息估计可以回收在随后的计算中,减少了总体计算工作基于迭代的梯度校正方法。方法应用于两个具有挑战性的测试问题和比较经典的方法。

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