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A GPU accelerated adjoint-based optimizer for inverse modeling of the two-dimensional shallow water equations

机译:GPU加速的基于伴随的优化器,用于二维浅水方程的逆向建模

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摘要

The increasing computational capacity of current computing technologies makes feasible the application of predictive high-resolution mathematical models for studying physical phenomena. Additionally, this can be enhanced if those methods are incorporated to some optimization method in order to perform inverse modeling. In this paper, an optimization procedure based on the adjoint equations is used for the reconstruction of information in a 2D Shallow Water model previously developed and proved to be fast, robust and accurate. The continuous adjoint approach used for the evaluation of the gradient that is introduced in a gradient-based optimizer. Furthermore, the computation of both physical and adjoint systems is accelerated by the use of GPU programming. Even though notable speed-ups are achieved with this technique they are only possible in small to medium size grids due to memory limitations. A novel checkpointing strategy is proposed to allow data handling in these devices hence offering the possibility to overcome that limitation. (C) 2016 Elsevier Ltd. All rights reserved.
机译:当前计算技术的不断增长的计算能力使预测性高分辨率数学模型在物理现象研究中的应用成为可能。另外,如果将那些方法合并到某种优化方法中以执行逆建模,则可以增强此功能。在本文中,基于伴随方程的优化程序被用于先前开发的二维浅水模型中的信息重构,并被证明是快速,鲁棒和准确的。基于梯度的优化器中引入的用于评估梯度的连续伴随方法。此外,使用GPU编程可加快物理系统和辅助系统的计算速度。即使使用此技术可以显着提高速度,但由于内存限制,它们只能在中小型网格中使用。提出了一种新颖的检查点策略,以允许在这些设备中处理数据,从而提供了克服该限制的可能性。 (C)2016 Elsevier Ltd.保留所有权利。

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