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Bibliographic Details
Main Author: Dhital, Supath
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2408.02242
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author Dhital, Supath
author_facet Dhital, Supath
contents The application of Machine Learning (ML) to hydrologic modeling is fledgling. Its applicability to capture the dependencies on watersheds to forecast better within a short period is fascinating. One of the key reasons to adopt ML algorithms over physics-based models is its computational efficiency advantage and flexibility to work with various data sets. The diverse applications, particularly in emergency response and expanding over a large scale, demand the hydrological model in a short time and make researchers adopt data-driven modeling approaches unhesitatingly. In this work, in the era of ML and deep learning (DL), how it can help to improve the overall run time of physics-based model and potential constraints that should be addressed while modeling. This paper covers the opportunities and challenges of adopting ML for hydrological modeling and subsequently how it can help to improve the simulation time of physics-based models and future works that should be addressed.
format Preprint
id arxiv_https___arxiv_org_abs_2408_02242
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Methods to improve run time of hydrologic models: opportunities and challenges in the machine learning era
Dhital, Supath
Machine Learning
The application of Machine Learning (ML) to hydrologic modeling is fledgling. Its applicability to capture the dependencies on watersheds to forecast better within a short period is fascinating. One of the key reasons to adopt ML algorithms over physics-based models is its computational efficiency advantage and flexibility to work with various data sets. The diverse applications, particularly in emergency response and expanding over a large scale, demand the hydrological model in a short time and make researchers adopt data-driven modeling approaches unhesitatingly. In this work, in the era of ML and deep learning (DL), how it can help to improve the overall run time of physics-based model and potential constraints that should be addressed while modeling. This paper covers the opportunities and challenges of adopting ML for hydrological modeling and subsequently how it can help to improve the simulation time of physics-based models and future works that should be addressed.
title Methods to improve run time of hydrologic models: opportunities and challenges in the machine learning era
topic Machine Learning
url https://arxiv.org/abs/2408.02242