Abstract
Abstract. 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).
Funder
Russian Science Foundation
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