Scopus Indexed Publications

Paper Details


Title
An Artificial Intelligence Based Rainfall Prediction Using LSTM and Neural Network
Author
Imrus Salehin, Iftakhar Mohammad Talha, MD. MEHEDI HASAN, Mohd. Saifuzzaman, Nazmun Nessa Moon, Sadia Tamim Dip,
Email
Abstract
The most difficult task of meteorology is to predict rainfall. In our study, we proposed an amount of rainfall prediction model that can be easily determined using artificial intelligence and LSTM techniques. This is an advanced method to find out the rainfall. The deep learning approach is most valuable for this type of method implementation and its accuracy finds out. A long short-term memory algorithm is applied to memory sequence data measurement and calculate previous data very fast and create the best prediction. The people of this country are mostly dependent on agriculture so that this prediction system is very necessary. Timely rainfall assessment will increase crop yields and reduce costs in agriculture. Considering all these factors, we have created our model which will help us to determine the amount of rainfall. We have collected data from 6 regions to do this. To predict, we have taken 6 parameters (temperature, dew point, humidity, wind pressure, wind speed, and wind direction). After analyzing all our data, we got 76% accuracy in our work. We also focus on a vast dataset in long time weather for the better result.

Keywords
Rainfall Forecast , LSTM , RNN , Artificial Intelligence
Journal or Conference Name
IEEE International Women in Engineering (WIE) Conference on Electrical and Computer Engineering (WIECON-ECE)
Publication Year
2020
Indexing
scopus