[HTML][HTML] The role of deep learning in urban water management: A critical review
Deep learning techniques and algorithms are emerging as a disruptive technology with the
potential to transform global economies, environments and societies. They have been …
potential to transform global economies, environments and societies. They have been …
Differentiable modelling to unify machine learning and physical models for geosciences
Process-based modelling offers interpretability and physical consistency in many domains of
geosciences but struggles to leverage large datasets efficiently. Machine-learning methods …
geosciences but struggles to leverage large datasets efficiently. Machine-learning methods …
[HTML][HTML] Modeling, challenges, and strategies for understanding impacts of climate extremes (droughts and floods) on water quality in Asia: a review
The increasing frequency and intensity of extreme climate events are among the most
expected and recognized consequences of climate change. Prediction of water quality …
expected and recognized consequences of climate change. Prediction of water quality …
[HTML][HTML] Data-driven evolution of water quality models: An in-depth investigation of innovative outlier detection approaches-A case study of Irish Water Quality Index …
Recently, there has been a significant advancement in the water quality index (WQI) models
utilizing data-driven approaches, especially those integrating machine learning and artificial …
utilizing data-driven approaches, especially those integrating machine learning and artificial …
Applications of deep learning in water quality management: A state-of-the-art review
Excellent water quality (WQ) is an indispensable element in ensuring sustainable water
resource development. It is highly associated with the 3rd (good health and well-being), the …
resource development. It is highly associated with the 3rd (good health and well-being), the …
Explaining the mechanism of multiscale groundwater drought events: A new perspective from interpretable deep learning model
This study presents a new approach to understand the causes of groundwater drought
events with interpretable deep learning (DL) models. As prerequisites, accurate long short …
events with interpretable deep learning (DL) models. As prerequisites, accurate long short …
[HTML][HTML] A data-driven model for water quality prediction in Tai Lake, China, using secondary modal decomposition with multidimensional external features
R Tan, Z Wang, T Wu, J Wu - Journal of Hydrology: Regional Studies, 2023 - Elsevier
Abstract Study region Tai Lake, the third largest freshwater lake in China, with a history of
serious ecological pollution incidents. Study focus Lake water quality prediction techniques …
serious ecological pollution incidents. Study focus Lake water quality prediction techniques …
Nitrate concentrations predominantly driven by human, climate, and soil properties in US rivers
Nitrate is one of the most widespread and persistent pollutants in our time. Our
understanding of nitrate dynamics has advanced substantially in the past decades, although …
understanding of nitrate dynamics has advanced substantially in the past decades, although …
Application of classification machine learning algorithms for characterizing nutrient transport in a clay plain agricultural watershed
Excess nutrients in surface water and groundwater can lead to water quality deterioration in
available water resources. Thus, the classification of nutrient concentrations in water …
available water resources. Thus, the classification of nutrient concentrations in water …
A new benchmark on machine learning methodologies for hydrological processes modelling: a comprehensive review for limitations and future research directions
ZM Yaseen - Knowledge-Based Engineering …, 2023 - … journals.publicknowledgeproject.org
The best practice of watershed management is through the understanding of the
hydrological processes. As a matter of fact, hydrological processes are highly associated …
hydrological processes. As a matter of fact, hydrological processes are highly associated …