The global decline of water quality in rivers and streams has resulted in a pressing need to design new watershed management strategies. Water quality can be affected by multiple stressors including population growth, land use change, global warming, and extreme events, with repercussions on human and ecosystem health. A scientific understanding of factors affecting riverine water quality and predictions at local to regional scales, and at sub-daily to decadal timescales are needed for optimal management of watersheds and river basins. Here, we discuss how machine learning (ML) can enable development of more accurate, computationally tractable, and scalable models for analysis and predictions of river water quality. We review relevant state...
Pollution from many different sources severely affects the quality of our water supply. Over the pas...
As one of the earth's key ecosystems, rivers have been intensively studied and modelled through the ...
This study introduces a machine learning-based approach to forecast the water quality of the Kereh R...
The global decline of water quality in rivers and streams has resulted in a pressing need to design ...
Water is a prime necessity for the survival and sustenance of all living beings. Over the past few y...
Department of Urban and Environmental Engineering (Environmental Science and Engineering)Management ...
Water quality indices (WQIs) are used for the simple assessment and classification of the water qual...
Abstract Human activities alter river water quality and quantity, with consequences for the ecosyste...
Water quality deterioration is a global and pervasive issue due to pollution caused by industrializa...
Water quality assessment and prediction is a more and more important issue. Traditional ways either ...
The deteriorating quality of natural water resources like lakes, streams and estuaries, is one of t...
The increasing release of nutrients to aquatic environments has led to great concern regarding eutro...
Accurate and sufficient water quality data is essential for watershed management and sustainability....
This study explores the river-flow-induced impacts on the performance of machine learning models app...
Water is a valuable, necessary and unfortunately rare commodity in both developing and developed cou...
Pollution from many different sources severely affects the quality of our water supply. Over the pas...
As one of the earth's key ecosystems, rivers have been intensively studied and modelled through the ...
This study introduces a machine learning-based approach to forecast the water quality of the Kereh R...
The global decline of water quality in rivers and streams has resulted in a pressing need to design ...
Water is a prime necessity for the survival and sustenance of all living beings. Over the past few y...
Department of Urban and Environmental Engineering (Environmental Science and Engineering)Management ...
Water quality indices (WQIs) are used for the simple assessment and classification of the water qual...
Abstract Human activities alter river water quality and quantity, with consequences for the ecosyste...
Water quality deterioration is a global and pervasive issue due to pollution caused by industrializa...
Water quality assessment and prediction is a more and more important issue. Traditional ways either ...
The deteriorating quality of natural water resources like lakes, streams and estuaries, is one of t...
The increasing release of nutrients to aquatic environments has led to great concern regarding eutro...
Accurate and sufficient water quality data is essential for watershed management and sustainability....
This study explores the river-flow-induced impacts on the performance of machine learning models app...
Water is a valuable, necessary and unfortunately rare commodity in both developing and developed cou...
Pollution from many different sources severely affects the quality of our water supply. Over the pas...
As one of the earth's key ecosystems, rivers have been intensively studied and modelled through the ...
This study introduces a machine learning-based approach to forecast the water quality of the Kereh R...