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Auteurs principaux: K., Muralidharan, Das, Agniva, Pandya, Shrey, Kim, Jong Min
Format: Preprint
Publié: 2025
Sujets:
Accès en ligne:https://arxiv.org/abs/2505.24235
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author K., Muralidharan
Das, Agniva
Pandya, Shrey
Kim, Jong Min
author_facet K., Muralidharan
Das, Agniva
Pandya, Shrey
Kim, Jong Min
contents The impact of statistical methodologies on studying groundwater has been significant in the last several decades, due to cheaper computational abilities and presence of technologies that enable us to extract and measure more and more data. This paper focuses on the validation of statistical methodologies that are in practice and continue to be at the earliest disposal of the researcher, demonstrating how traditional time-series models and modern neural networks may be a viable option to analyze and make viable forecasts from data commonly available in this domain, and suggesting a copula-based strategy to obtain directional dependencies of groundwater level, spatially. This paper also proposes a sphere of model validation, seldom addressed in this domain: the model longevity or the model shelf-life. Use of such validation techniques not only ensure lower computational cost while maintaining reasonably high accuracy, but also, in some cases, ensure robust predictions or forecasts, and assist in comparing multiple models.
format Preprint
id arxiv_https___arxiv_org_abs_2505_24235
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Alternate Groundwater Modelling Strategies: A Multi-Faceted Data-Driven Approach
K., Muralidharan
Das, Agniva
Pandya, Shrey
Kim, Jong Min
Applications
Computation
Machine Learning
The impact of statistical methodologies on studying groundwater has been significant in the last several decades, due to cheaper computational abilities and presence of technologies that enable us to extract and measure more and more data. This paper focuses on the validation of statistical methodologies that are in practice and continue to be at the earliest disposal of the researcher, demonstrating how traditional time-series models and modern neural networks may be a viable option to analyze and make viable forecasts from data commonly available in this domain, and suggesting a copula-based strategy to obtain directional dependencies of groundwater level, spatially. This paper also proposes a sphere of model validation, seldom addressed in this domain: the model longevity or the model shelf-life. Use of such validation techniques not only ensure lower computational cost while maintaining reasonably high accuracy, but also, in some cases, ensure robust predictions or forecasts, and assist in comparing multiple models.
title Alternate Groundwater Modelling Strategies: A Multi-Faceted Data-Driven Approach
topic Applications
Computation
Machine Learning
url https://arxiv.org/abs/2505.24235