Dataset on sub-daily vertical profiles of physicochemical parameters and chlorophyll concentration in El Val reservoir, together with its daily meteorological data, storage state and downstream flow (2018–2022)
María Castrillo, Fernando Aguilar, Daniel García-Díaz

TL;DR
This paper presents a dataset of sub-daily vertical profiles of physicochemical parameters and chlorophyll concentration in El Val reservoir, along with meteorological and flow data from 2018 to 2022.
Contribution
The novelty lies in providing a detailed and comprehensive dataset for El Val reservoir to support hydrological modeling and analysis of thermal stratification.
Findings
The dataset includes physicochemical variables, meteorological data, and flow rates for El Val reservoir.
The data are useful for deterministic, data-driven, or hybrid hydrological models.
The dataset supports the study of thermal stratification and management strategies in reservoirs.
Abstract
The dataset addressed in this article contains parameters about El Val reservoir (province of Zaragoza, Spain). It includes physicochemical variables, the water level, the stored water volume, its meteorological conditions and the flow rate of its effluent, the Queiles River, a few metres downstream of the dam. The El Val reservoir stores water from the Val River, but it also receives water from the Queiles River through a pipeline and from several ravines. The dam releases on the Queiles River, which is a tributary of the Ebro River (the second one in Spain in length and discharge rate). A multiparametric probe (aquaDam, Adasa Systems), hanging from a structure located in the dam, every 6 h makes a vertical profile taking the measurements at each metre of depth from the surface to approximately 573 m above sea level (m.a.s.l.), in other words, between 2 and 3 m above the bottom outlet.…
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Taxonomy
TopicsHydrological Forecasting Using AI · Water Quality Monitoring Technologies · Hydrology and Watershed Management Studies
