分数型非局部模型参数学习的优化方法

O. Burkovska, Christian A. Glusa, M. D'Elia
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引用次数: 16

摘要

分数型非局部算子是不遵循经典扩散行为的应用程序的流行建模选择;然而,非局部仿真的一个主要挑战是模型参数的选择。在这项工作中,我们提出了一种基于优化的方法,用于具有可选截断半径的分数模型的参数识别。我们将推理问题表述为一个最优控制问题,其目标是最小化观测数据与模型近似解之间的差异,控制变量是分数阶和截断长度。对于最小化问题的数值解,我们提出了一种基于梯度的方法,其中我们通过近似状态方程的双线性形式及其导数相对于分数阶来增强数值性能。若干一维和二维的数值试验验证了理论结果,证明了本文方法的鲁棒性和适用性。
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An optimization-based approach to parameter learning for fractional type nonlocal models
Nonlocal operators of fractional type are a popular modeling choice for applications that do not adhere to classical diffusive behavior; however, one major challenge in nonlocal simulations is the selection of model parameters. In this work we propose an optimization-based approach to parameter identification for fractional models with an optional truncation radius. We formulate the inference problem as an optimal control problem where the objective is to minimize the discrepancy between observed data and an approximate solution of the model, and the control variables are the fractional order and the truncation length. For the numerical solution of the minimization problem we propose a gradient-based approach, where we enhance the numerical performance by an approximation of the bilinear form of the state equation and its derivative with respect to the fractional order. Several numerical tests in one and two dimensions illustrate the theoretical results and show the robustness and applicability of our method.
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