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首页> 外文期刊>Journal of Hydrology >Development of a surrogate method of groundwater modeling using gated recurrent unit to improve the efficiency of parameter auto-calibration and global sensitivity analysis
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Development of a surrogate method of groundwater modeling using gated recurrent unit to improve the efficiency of parameter auto-calibration and global sensitivity analysis

机译:开发一种基于门控循环单元的地下水建模替代方法,以提高参数自动校准和全局灵敏度分析的效率

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摘要

The correlations of the multiple time-series outputs of an original simulation model are difficult to take into account using traditional surrogate model techniques. This study proposes a novel surrogate model based on a deep learning structure called gated recurrent unit (GRU) network, with the aim of developing a substitute for an original simulation model with large temporal and spatial variations and of improving the computational efficiency of studies that require thousands of model executions. First, a numerical groundwater flow model was established as the original simulation model, and then, a GRU network was trained using the two-dimensional outputs of the original simulation model. After this, the parameter was auto-calibrated by combining the GRU surrogate with the particle swarm optimization (PSO) algorithm. Furthermore, a Sobol' sensitivity analysis was conducted for multiple time nodes. The results demonstrate that the GRU-based surrogate model exhibits a high accuracy and the ability to manage problems with multiple time-series outputs. The GRU surrogate combined with the PSO algorithm has an excellent ability to implement high-dimensionality parameter calibration tasks. In addition, the Sobol' sensitivity analysis based on the GRU surrogate exhibits a sufficient capacity to capture the temporal characteristics of the simulation model parameters. The surrogate based on the GRU also significantly reduces the computational costs. The GRU-based surrogate technique not only can facilitate the groundwater studies, but can also have an excellent application potential for other long-term water resource managements.
机译:使用传统的代理模型技术很难考虑原始仿真模型的多个时间序列输出的相关性。本研究提出了一种基于深度学习结构的新型代理模型,称为门控循环单元(GRU)网络,旨在开发具有较大时间和空间变化的原始模拟模型的替代品,并提高需要数千个模型执行的研究的计算效率。首先,建立地下水数值模型作为原始模拟模型,然后利用原始模拟模型的二维输出对GRU网络进行训练。在此之后,通过将 GRU 代理项与粒子群优化 (PSO) 算法相结合来自动校准参数。此外,还对多个时间节点进行了Sobol敏感性分析。结果表明,基于GRU的代理模型具有较高的准确率,并且能够管理具有多个时间序列输出的问题。GRU代理与PSO算法相结合,具有出色的高维参数标定任务实现能力。此外,基于GRU代理的Sobol'灵敏度分析表现出足够的能力来捕获仿真模型参数的时间特征。基于 GRU 的代理项也大大降低了计算成本。基于GRU的替代技术不仅可以促进地下水研究,而且在其他长期水资源管理中也具有很好的应用潜力。

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