Rainfall Forecasting Using Neural Network

An accurate rainfall forecasting is a challenging problem for agriculture dependent countries like India for analyzing the crop productivity, use of water resources and pre-planning of water resources. This book provides issues involved in prediction of daily, monthly, and yearly rainfall data using neural network. We incorporate various models such as ARIMA, Feed Forward Neural Network (FFNN), Radial Basis Function Neural Network (RBFNN), and Time Delay Neural Network (TDNN) techniques for rainfall prediction. All the models implemented using MATLAB software. The purpose of the book is to uses Genetic Algorithm (GA) for optimizing biases and weights of neural network. The results of ARIMA model are compared with the results obtained using three neural network models.

Weitere Produkte vom selben Autor

Experimental Investigation of Twin Screw Extruder Machine Limbachiya, Rohit R., Limbachiya, Vaibhav J., Darji, Yashesh A.

39,90 €*
TRUST BASED SECURE ROUTING IN MOBILE ADHOC NETWORK Joshi, Sachi, Patel, Upesh

43,90 €*
An Experimental Investigation with CNT Darji, Yashesh A., Patel, Dhaval M., Patel, Bhargav J.

49,90 €*