2023
DOI: 10.3389/frwa.2023.1184992
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Evaluating deep learning architecture and data assimilation for improving water temperature forecasts at unmonitored locations

Jacob A. Zwart,
Jeremy Diaz,
Scott Hamshaw
et al.

Abstract: Deep learning (DL) models are increasingly used to forecast water quality variables for use in decision making. Ingesting recent observations of the forecasted variable has been shown to greatly increase model performance at monitored locations; however, observations are not collected at all locations, and methods are not yet well developed for DL models for optimally ingesting recent observations from other sites to inform focal sites. In this paper, we evaluate two different DL model structures, a long short… Show more

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