Rainfall is a vital phenomenon that contributes in the success of sugar industry season. The ability to determine the amount of precipitation in sugarcane areas enhances the profitability of the season. Different types of climate indices and attributes are usually applied to model rainfall forecasting systems. In this paper, we present a novel genetic algorithm based feature selection approach to determine which climate indices and attributes are most significant for rainfall forecasting in sugarcane areas. The most significant features are features that return the highest accuracy for rainfall forecasting through artificial neural networks. The approach is evaluated on realworld data that contain different weather forecasting features. A s...
Management strategies for sustainable sugarcane production need to deal with the increasing complexi...
In this study, a novel ensemble is proposed to forecast monthly rainfall for sugarcane areas in Quee...
Accurately and timely predicting climatic variables are most challenging task for the researchers. S...
Rainfall is a complex meteorological process that affects the environment, human based activities, a...
Rainfall is a complex process that result from different atmospheric interactions. Rainfall forecast...
The climate input features and neural network parameters highly affect the overall performance of th...
Sugarcane is an important agricultural crop grown on the east coast of Australia. The timing and amo...
Agriculture is vulnerable to the interannual climate variability and to its unpredictability, in suc...
Rainfall forecasting or Weather forecasting has been one of the most challenging problems around the...
Precipitation is viewed as a complex phenomenon that influences the efficiency of the agricultural s...
This paper discusses the formation of an appropriate regression model in precipitation prediction. P...
Agriculture is the most important factor in India for survival. Rainfall is the most critical factor...
Abstract-Weather is certainly the most important factor over which man has no control, and hence it ...
We developed a method to predict heavy rainfall in South Korea with a lead time of one to six hours....
Drought forecasting is a vital task for sustainable development and water resource management. Emerg...
Management strategies for sustainable sugarcane production need to deal with the increasing complexi...
In this study, a novel ensemble is proposed to forecast monthly rainfall for sugarcane areas in Quee...
Accurately and timely predicting climatic variables are most challenging task for the researchers. S...
Rainfall is a complex meteorological process that affects the environment, human based activities, a...
Rainfall is a complex process that result from different atmospheric interactions. Rainfall forecast...
The climate input features and neural network parameters highly affect the overall performance of th...
Sugarcane is an important agricultural crop grown on the east coast of Australia. The timing and amo...
Agriculture is vulnerable to the interannual climate variability and to its unpredictability, in suc...
Rainfall forecasting or Weather forecasting has been one of the most challenging problems around the...
Precipitation is viewed as a complex phenomenon that influences the efficiency of the agricultural s...
This paper discusses the formation of an appropriate regression model in precipitation prediction. P...
Agriculture is the most important factor in India for survival. Rainfall is the most critical factor...
Abstract-Weather is certainly the most important factor over which man has no control, and hence it ...
We developed a method to predict heavy rainfall in South Korea with a lead time of one to six hours....
Drought forecasting is a vital task for sustainable development and water resource management. Emerg...
Management strategies for sustainable sugarcane production need to deal with the increasing complexi...
In this study, a novel ensemble is proposed to forecast monthly rainfall for sugarcane areas in Quee...
Accurately and timely predicting climatic variables are most challenging task for the researchers. S...