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首页> 外文期刊>Proceedings of the International Association of Hydrological Sciences >Coupling physically based and data-driven models for assessing freshwater inflow into the Small Aral Sea
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Coupling physically based and data-driven models for assessing freshwater inflow into the Small Aral Sea

机译:基于物理和数据驱动的模型耦合,用于评估淡水流入小咸海的情况

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摘要

The Aral Sea desiccation and related changes in hydroclimatic conditions on a regional level is a hot topic for past decades. The key problem of scientific research projects devoted to an investigation of modern Aral Sea basin hydrological regime is its discontinuous nature – the only limited amount of papers takes into account the complex runoff formation system entirely. Addressing this challenge we have developed a continuous prediction system for assessing freshwater inflow into the Small Aral Sea based on coupling stack of hydrological and data-driven models. Results show a good prediction skill and approve the possibility to develop a valuable water assessment tool which utilizes the power of classical physically based and modern machine learning models both for territories with complex water management system and strong water-related data scarcity. The source code and data of the proposed system is available on a Github page ( https://github.com/SMASHIproject/IWRM2018 ).
机译:在过去的几十年中,咸海的干燥和区域性气候气候条件的相关变化是一个热门话题。致力于研究现代咸海流域水文状况的科学研究项目的关键问题是其不连续的性质-仅有的数量有限的论文完全考虑到了复杂的径流形成系统。为应对这一挑战,我们开发了一种连续预测系统,用于基于水文模型和数据驱动模型的耦合堆栈来评估流入小咸海的淡水。结果显示出良好的预测能力,并批准了开发有价值的水评估工具的可能性,该工具利用经典的基于物理的模型和现代的机器学习模型的强大功能,对具有复杂水管理系统和与水相关的数据稀缺的地区进行评估。拟议系统的源代码和数据可在Github页面(https://github.com/SMASHIproject/IWRM2018)上找到。

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