Accurate prediction of the chemical constituents in major river systems is a necessary task for water quality management, aquatic life well-being and the overall healthcare planning of river systems. In this study, the capability of a newly proposed hybrid forecasting model based on the firefly algorithm (FFA) as a metaheuristic optimizer, integrated with the multilayer perceptron (MLP-FFA), is investigated for the prediction of monthly water quality in Langat River basin, Malaysia. The predictive ability of the MLP-FFA model is assessed against the MLP-based model. To validate the proposed MLP-FFA model, monthly water quality data over a 10-year duration (2001–2010) for two different hydrological stations (1L04 and 1L05) provided by the Ir...
In any aquatic system analysis, the modelling water quality parameters are of considerable significa...
The concentration of dissolved oxygen (DO) is important for the healthy functioning of aquatic ecosy...
A new fuzzy neural network method to predict minimum dissolved oxygen (DO) concentration in a highly...
Accurate prediction of the chemical constituents in major river systems is a necessary task for wate...
The process of predicting water quality over a catchment area is complex due to the inherently nonli...
This study examined the potential of Multi-layer Perceptron Neural Network (MLP-NN) in predicting di...
Abstract As an important hydrological parameter, dissolved oxygen (DO) concentration is a well-accep...
Water quality status in terms of one crucial parameter such as dissolved oxygen (D.O.) has been an i...
Applications of artificial intelligence (AI) models have been massively explored for various enginee...
Most of the water quality models previously developed and used in dissolved oxygen (DO) prediction a...
Predicting the level of dissolved oxygen (DO) is an important issue ensuring the sustainability of t...
The Danube is the second-largest river in Europe and the conservation of its water quality is very ...
AbstractMost of the water quality models previously developed and used in dissolved oxygen (DO) pred...
The objective of this study is to develop a feed forward neural network (FFNN) model and a radial ba...
River Nzoia in Kenya, due to its role in transporting industrial and municipal wastes in addition to...
In any aquatic system analysis, the modelling water quality parameters are of considerable significa...
The concentration of dissolved oxygen (DO) is important for the healthy functioning of aquatic ecosy...
A new fuzzy neural network method to predict minimum dissolved oxygen (DO) concentration in a highly...
Accurate prediction of the chemical constituents in major river systems is a necessary task for wate...
The process of predicting water quality over a catchment area is complex due to the inherently nonli...
This study examined the potential of Multi-layer Perceptron Neural Network (MLP-NN) in predicting di...
Abstract As an important hydrological parameter, dissolved oxygen (DO) concentration is a well-accep...
Water quality status in terms of one crucial parameter such as dissolved oxygen (D.O.) has been an i...
Applications of artificial intelligence (AI) models have been massively explored for various enginee...
Most of the water quality models previously developed and used in dissolved oxygen (DO) prediction a...
Predicting the level of dissolved oxygen (DO) is an important issue ensuring the sustainability of t...
The Danube is the second-largest river in Europe and the conservation of its water quality is very ...
AbstractMost of the water quality models previously developed and used in dissolved oxygen (DO) pred...
The objective of this study is to develop a feed forward neural network (FFNN) model and a radial ba...
River Nzoia in Kenya, due to its role in transporting industrial and municipal wastes in addition to...
In any aquatic system analysis, the modelling water quality parameters are of considerable significa...
The concentration of dissolved oxygen (DO) is important for the healthy functioning of aquatic ecosy...
A new fuzzy neural network method to predict minimum dissolved oxygen (DO) concentration in a highly...