2023
DOI: 10.3390/w15203624
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Improving Forecasting Accuracy of Multi-Scale Groundwater Level Fluctuations Using a Heterogeneous Ensemble of Machine Learning Algorithms

Dilip Kumar Roy,
Tasnia Hossain Munmun,
Chitra Rani Paul
et al.

Abstract: Accurate groundwater level (GWL) forecasts are crucial for the efficient utilization, strategic long-term planning, and sustainable management of finite groundwater resources. These resources have a substantial impact on decisions related to irrigation planning, crop selection, and water supply. This study evaluates data-driven models using different machine learning algorithms to forecast GWL fluctuations for one, two, and three weeks ahead in Bangladesh’s Godagari upazila. To address the accuracy limitations… Show more

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Cited by 7 publications
(1 citation statement)
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“…Utilizing machine learning (ML) algorithms to forecast zooplankton proliferation offers a data-driven method to predict ecosystem behavior, providing a more nuanced understanding than traditional modeling approaches. ML excels at handling complex, nonlinear relationships within data, potentially capturing intricate patterns that conventional statistical methods might miss [34]. Consequently, combining fuzzy cognitive maps with machine learning techniques can provide valuable insights into complex ecological systems.…”
Section: Introductionmentioning
confidence: 99%
“…Utilizing machine learning (ML) algorithms to forecast zooplankton proliferation offers a data-driven method to predict ecosystem behavior, providing a more nuanced understanding than traditional modeling approaches. ML excels at handling complex, nonlinear relationships within data, potentially capturing intricate patterns that conventional statistical methods might miss [34]. Consequently, combining fuzzy cognitive maps with machine learning techniques can provide valuable insights into complex ecological systems.…”
Section: Introductionmentioning
confidence: 99%