Forecasting electricity demand of Bangladesh and its relation with physical and natural variables using group method of data handling model
Abstract
The purpose of this work is to forecast the electricity demand of Bangladesh using
the Group Method of Data Handling (GMDH). Electricity is one of the key variables
in ensuring economic growth and a higher standard of life. For a developing country
like Bangladesh, it is very important to have a near accurate forecast of electricity
demand for future planning. After careful preparation of a time series data set of
GDP, GNI, CO2 emission, ambient temperature, the data sheet was fed into the
GMDH model and an acceptable forecast was found. GMDH Shell software is used
for the application of GMDH algorithm and time series analysis.This purpose is also
resolved by deep learning and ANN application.High extensive correlation among
features and pre processing could make fruitful in optimal prediction