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SWAT meta-modeling as support of the management scenario analysis in large watersheds

机译:SWAT元模型作为大型流域管理方案分析的支持

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摘要

In the last two decades, numerous models and modeling techniques have been developed to simulate nonpoint source pollution effects. Most models simulate the hydrological, chemical, and physical processes involved in the entrainment and transport of sediment, nutrients, and pesticides. Very often these models require a distributed modeling approach and are limited in scope by the requirement of homogeneity and by the need to manipulate extensive data sets. Physically based models are extensively used in this field as a decision support for managing the nonpoint source emissions. A common characteristic of this type of model is a demanding input of several state variables that makes the calibration and effort-costing in implementing any simulation scenario more difficult. In this study the USDA Soil and Water Assessment Tool (SWAT) was used to model the Venice Lagoon Watershed (VLW), Northern Italy. A Multi-Layer Perceptron (MLP) network was trained on SWAT simulations and used as a meta-model for scenario analysis. The MLP meta-model was successfully trained and showed an overall accuracy higher than 70% both on the training and on the evaluation set, allowing a significant simplification in conducting scenario analysis.
机译:在过去的二十年中,已经开发了许多模型和建模技术来模拟面源污染的影响。大多数模型模拟了沉积物,养分和农药的夹带和运输所涉及的水文,化学和物理过程。这些模型通常需要分布式建模方法,并且在范围上受到同质性要求以及需要处理大量数据集的限制。基于物理的模型在该领域中广泛用作管理非点源排放的决策支持。这类模型的一个共同特征是要求输入多个状态变量,这使得在实施任何模拟方案时进行校准和付出成本变得更加困难。在这项研究中,USDA土壤和水评估工具(SWAT)用于模拟意大利北部的威尼斯泻湖流域(VLW)。多层感知器(MLP)网络接受了SWAT模拟训练,并用作情景分析的元模型。 MLP元模型已成功地进行了训练,并且在训练和评估集上的总体准确性均高于70%,从而大大简化了方案分析。

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