This is a Preprint and has not been peer reviewed. This is version 1 of this Preprint.

How to deal w___ missing input data
Downloads
Authors
Abstract
Deep learning hydrologic models have made their way from research to applications. More and more national hydrometeorological agencies, hydro power operators, and engineering consulting companies are building Long Short-Term Memory (LSTM) models for operational use cases. All of these efforts come across similar sets of challenges—challenges that are different from those in controlled scientific studies. In this paper, we tackle one of these issues: how to deal with missing input data? Operational systems depend on the real-time availability of various data products—most notably, meteorological forcings. The more external dependencies a model has, however, the more likely it is to experience an outage in one of them. We introduce and compare three different solutions that can generate predictions even when some of the meteorological input data do not arrive in time, or not arrive at all.
DOI
https://doi.org/10.31223/X50M8N
Subjects
Artificial Intelligence and Robotics, Hydrology, Water Resource Management
Keywords
hydrology, LSTM, Deep learning, machine learning, streamflow, NaN
Dates
Published: 2025-03-14 16:38
Last Updated: 2025-03-14 23:38
License
CC BY Attribution 4.0 International
Additional Metadata
Data Availability (Reason not available):
_
There are no comments or no comments have been made public for this article.