In this research, three different evolutionary algorithms (EAs), namely, particle swarm optimization (PSO), genetic algorithm (GA) and differential evolution (DE), are integrated with the adaptive neuro-fuzzy inference system (ANFIS) model. The developed hybrid models are proposed to forecast rainfall time series. The capability of the proposed evolutionary hybrid ANFIS was compared with the conventional ANFIS in forecasting monthly rainfall for the Pahang watershed, Malaysia. To select the optimal model, sixteen different combinations of six different lag attributes taking into account the effect of monthly, seasonal, and annual history were considered. The performances of the forecasting models were assessed using various forecasting skil...
The performance of the bio-inspired adaptive neuro-fuzzy inference system (ANFIS) models are propose...
Abstract Rainfall is perhaps the most important source of drinking and agriculture water for the inh...
Artificial neural networks (ANNs) are being used increasingly to forecast rainfall. In this study, s...
In this research, three different evolutionary algorithms (EAs), namely, particle swarm optimization...
In this study, a new hybrid model integrated adaptive neuro fuzzy inference system with Firefly Opti...
Tengger Indonesia is one of the rich areas in agricultural commodities and one of its commodities is...
Floods are potential natural disasters that might disrupt human activities, resulting in severe loss...
Accurate prediction of future rainfall based on current conditions and historical events is importan...
Rainfall forcasting is a non-linear forecasting process that varies according to area and strongly i...
This paper proposes a methodology to create an interpretable fuzzy model for monthly rainfall time s...
The present study proposes a new hybrid evolutionary Adaptive Neuro-Fuzzy Inference Systems (ANFIS) ...
Uncertain atmosphere is a prevalent factor affecting the existing prediction approaches. Rough set a...
Accurate rainfall time series prediction is one of the important tasks in hydrological study. A conv...
Runoff prediction still represents an extremely important issue in applied hydrology. On the other h...
Rainfall Prediction is a very challenging task. In India which is an agricultural country, the succe...
The performance of the bio-inspired adaptive neuro-fuzzy inference system (ANFIS) models are propose...
Abstract Rainfall is perhaps the most important source of drinking and agriculture water for the inh...
Artificial neural networks (ANNs) are being used increasingly to forecast rainfall. In this study, s...
In this research, three different evolutionary algorithms (EAs), namely, particle swarm optimization...
In this study, a new hybrid model integrated adaptive neuro fuzzy inference system with Firefly Opti...
Tengger Indonesia is one of the rich areas in agricultural commodities and one of its commodities is...
Floods are potential natural disasters that might disrupt human activities, resulting in severe loss...
Accurate prediction of future rainfall based on current conditions and historical events is importan...
Rainfall forcasting is a non-linear forecasting process that varies according to area and strongly i...
This paper proposes a methodology to create an interpretable fuzzy model for monthly rainfall time s...
The present study proposes a new hybrid evolutionary Adaptive Neuro-Fuzzy Inference Systems (ANFIS) ...
Uncertain atmosphere is a prevalent factor affecting the existing prediction approaches. Rough set a...
Accurate rainfall time series prediction is one of the important tasks in hydrological study. A conv...
Runoff prediction still represents an extremely important issue in applied hydrology. On the other h...
Rainfall Prediction is a very challenging task. In India which is an agricultural country, the succe...
The performance of the bio-inspired adaptive neuro-fuzzy inference system (ANFIS) models are propose...
Abstract Rainfall is perhaps the most important source of drinking and agriculture water for the inh...
Artificial neural networks (ANNs) are being used increasingly to forecast rainfall. In this study, s...