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首页> 外文期刊>Environmental Modelling & Software >Using machine learning models to predict and choose meshes reordered by graph algorithms to improve execution times for hydrological modeling
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Using machine learning models to predict and choose meshes reordered by graph algorithms to improve execution times for hydrological modeling

机译:使用机器学习模型来预测并选择由图算法重新排序的网格,以改善水文建模的执行时间

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摘要

Is it possible to predict the execution time of a spatially distributed hydrological model by only examining the mesh? This article investigates this question by using a benchmark mesh with the Penn State Integrated Hydrologic Model (PIHM). The benchmark mesh triangles are reordered using ten different graph search algorithms that treat each mesh triangle as a graph root to select the remaining triangles in the watershed domain. PIHM then executed these graph-reordered meshes to create performance datasets to find which graph search algorithm and triangle root combinations improved PIHM's execution time. The performance datasets were used to train and classify seven different machine learning (ML) models to predict the fastest execution times. Analyzing these ML results facilitated a strategy for end users of the HydroTerre expert system to choose meshes that improve execution times for their hydrological science research with PIHM.
机译:是否可以通过仅检查网格来预测空间分布的水文模型的执行时间?本文通过使用宾夕法尼亚州综合水文模型(PIHM)来调查该问题。使用十个不同的图形搜索算法重新排序基准Mesh三角形,该算法将每个网格三角形视为图形根,以选择流域域中的剩余三角形。然后,PIHM执行这些图形重新排序的网格以创建性能数据集以查找哪个图形搜索算法和三角形根组合改善了PIHM的执行时间。性能数据集用于培训和分类七种不同的机器学习(ML)模型以预测最快的执行时间。分析这些ML结果促进了HydroTerre专家系统的最终用户的策略,以选择用PIHM改善其水文科学研究的执行时间的网格。

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