Nutrients loading reduction in watershed is essential for lake restoration from eutrophication. The efficient and optimal decision-making on loading reduction is generally based on water quality modeling and the quantitative identification of nutrient sources at the watershed scale. The modeling process is influenced inevitably by inherent uncertainties, especially by uncertain parameters due to equifinality. Therefore, the emerging question is: if there is parameter uncertainty, how to ensure the robustness of the optimal decisions? Based on simulation-optimization models, an integrated approach of pattern identification and analysis of robustness was proposed in this study that focuses on the impact of parameter uncertainty in water quali...
Catchment water quality models have many parameters, several output variables and a complex structur...
Abstract: This paper investigates three sources of uncertainty in a river water quality modelling sy...
In this study, an interval-stochastic fractile optimization (ISFO) model is advanced for developing ...
While water diversion and dilution are often proposed and implemented for lake eutrophication manage...
Practical and optimal reduction of watershed loads under deep uncertainty requires sufficient search...
Water quality management and load reduction are subject to inherent uncertainties in watershed syste...
In this research work, soil and water assessment tool (SWAT) and fuzzy credibility chance-constraine...
Water quality management is subject to large uncertainties due to inherent randomness in the natural...
Joint optimization of population pattern and end-of-pipe control is proposed for Lake Dianchi water-...
We selected Tai Lake in China as the research area, and based on the Eco-lab model, we parameterized...
Nutrient load reduction is a well-recognized requirement for aquatic ecosystem restoration. However,...
A multi-objective chance-constrained programming integrated with Genetic Algorithm and robustness ev...
Previous optimization-based watershed decision making approaches suffer two major limitations. First...
A multi-objective chance-constrained programming integrated with Genetic Algorithm and robustness ev...
A Bayesian approach was applied to river water quality modeling (WQM) for load and parameter estimat...
Catchment water quality models have many parameters, several output variables and a complex structur...
Abstract: This paper investigates three sources of uncertainty in a river water quality modelling sy...
In this study, an interval-stochastic fractile optimization (ISFO) model is advanced for developing ...
While water diversion and dilution are often proposed and implemented for lake eutrophication manage...
Practical and optimal reduction of watershed loads under deep uncertainty requires sufficient search...
Water quality management and load reduction are subject to inherent uncertainties in watershed syste...
In this research work, soil and water assessment tool (SWAT) and fuzzy credibility chance-constraine...
Water quality management is subject to large uncertainties due to inherent randomness in the natural...
Joint optimization of population pattern and end-of-pipe control is proposed for Lake Dianchi water-...
We selected Tai Lake in China as the research area, and based on the Eco-lab model, we parameterized...
Nutrient load reduction is a well-recognized requirement for aquatic ecosystem restoration. However,...
A multi-objective chance-constrained programming integrated with Genetic Algorithm and robustness ev...
Previous optimization-based watershed decision making approaches suffer two major limitations. First...
A multi-objective chance-constrained programming integrated with Genetic Algorithm and robustness ev...
A Bayesian approach was applied to river water quality modeling (WQM) for load and parameter estimat...
Catchment water quality models have many parameters, several output variables and a complex structur...
Abstract: This paper investigates three sources of uncertainty in a river water quality modelling sy...
In this study, an interval-stochastic fractile optimization (ISFO) model is advanced for developing ...