Search engine for discovering works of Art, research articles, and books related to Art and Culture
ShareThis
Javascript must be enabled to continue!

Analyzing Multi-Year Nitrate Concentration Evolution in Alabama Aquatic Systems Using a Machine Learning Model

View through CrossRef
Rising nitrate contamination in water systems poses significant risks to public health and ecosystem stability, necessitating advanced modeling to understand nitrate dynamics more accurately. This study applies the long short-term memory (LSTM) modeling to investigate the hydrologic and environmental factors influencing nitrate concentration dynamics in rivers and aquifers across the state of Alabama in the southeast of the United States. By integrating dynamic data such as streamflow and groundwater levels with static catchment attributes, the machine learning model identifies primary drivers of nitrate fluctuations, offering detailed insights into the complex interactions affecting multi-year nitrate concentrations in natural aquatic systems. In addition, a novel LSTM-based approach utilizes synthetic surface water nitrate data to predict groundwater nitrate levels, helping to address monitoring gaps in aquifers connected to these rivers. This method reveals potential correlations between surface water and groundwater nitrate dynamics, which is particularly meaningful given the lack of water quality observations in many aquifers. Field applications further show that, while the LSTM model effectively captures seasonal trends, limitations in representing extreme nitrate events suggest areas for further refinement. These findings contribute to data-driven water quality management, enhancing understanding of nitrate behavior in interconnected water systems.
Title: Analyzing Multi-Year Nitrate Concentration Evolution in Alabama Aquatic Systems Using a Machine Learning Model
Description:
Rising nitrate contamination in water systems poses significant risks to public health and ecosystem stability, necessitating advanced modeling to understand nitrate dynamics more accurately.
This study applies the long short-term memory (LSTM) modeling to investigate the hydrologic and environmental factors influencing nitrate concentration dynamics in rivers and aquifers across the state of Alabama in the southeast of the United States.
By integrating dynamic data such as streamflow and groundwater levels with static catchment attributes, the machine learning model identifies primary drivers of nitrate fluctuations, offering detailed insights into the complex interactions affecting multi-year nitrate concentrations in natural aquatic systems.
In addition, a novel LSTM-based approach utilizes synthetic surface water nitrate data to predict groundwater nitrate levels, helping to address monitoring gaps in aquifers connected to these rivers.
This method reveals potential correlations between surface water and groundwater nitrate dynamics, which is particularly meaningful given the lack of water quality observations in many aquifers.
Field applications further show that, while the LSTM model effectively captures seasonal trends, limitations in representing extreme nitrate events suggest areas for further refinement.
These findings contribute to data-driven water quality management, enhancing understanding of nitrate behavior in interconnected water systems.

Related Results

Selection of Injectable Drug Product Composition using Machine Learning Models (Preprint)
Selection of Injectable Drug Product Composition using Machine Learning Models (Preprint)
BACKGROUND As of July 2020, a Web of Science search of “machine learning (ML)” nested within the search of “pharmacokinetics or pharmacodynamics” yielded over 100...
Resource recovery through simultaneous denitrification and fermentation in engineered anaerobic systems
Resource recovery through simultaneous denitrification and fermentation in engineered anaerobic systems
[EMBARGOED UNTIL 08/01/2025] Anaerobic digestion (AD) is widely used to process organic waste and is a promising platform for producing bioenergy and biomaterials. However, the fin...
Nitrate Surveillance Monitoring Program (Annual Report May 2021 - March 2022)
Nitrate Surveillance Monitoring Program (Annual Report May 2021 - March 2022)
Every Member State is required to monitor and report levels of nitrate in specified foodstuffs as part of the European Commission regulation and the UK also requires this informati...
Reduction of Nitrate Ions by Morningglory Leaves
Reduction of Nitrate Ions by Morningglory Leaves
The reduction and assimilation of nitrate ions by 14-day old tall morningglory [Ipomoea purpurea(L.) Roth] seedlings were studied by monitoring the leaf nitrate, protein, and activ...
Design Of Insulated Flowlines For Mobile Bay
Design Of Insulated Flowlines For Mobile Bay
ABSTRACT Insulated CRA flowlines are used in Mobile Bay for connecting well templates to host processing platforms. This paper describes the design of the flowlin...
Evaluation of nitrate redistribution in surface and subsurface drip irrigation systems
Evaluation of nitrate redistribution in surface and subsurface drip irrigation systems
Nitrogen compounds added to the soil may convert to nitrate and cause contamination. The distribution and uniformity of soil nitrate in surface vs. subsurface drip irrigation syste...

Back to Top