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Putri Reghina Hilmi Inscription

by | Apr 14, 2023

Name : Princess Reghina Hilmi Inscription
NIM : 24010119130040
Title : Development of Gray Forecasting Model GM(1,1) with Background Value Optimization and Fourier Series to Predict Emission Levels
Greenhouse Gas (GHG) (Case Study of Environment and Forestry Office of Central Java)

Which was held at:
Day/Date : Tuesday, 11 April 2023
Hours: 13.00 WIB – finished
Place : F104 – Mathematics Discussion Room Gd. F Lt. 1 FSM UNDIP

Test Team :
1. Abdul Aziz, S.Si., M.Sc.
2.Dr. Susilo Hariyanto, S.Si., M.Sc.
3. Siti Khabibah, S.Si., M.Sc.

This thesis discusses the Gray Forecasting Model GM(1,1) which was developed with Background Value Optimization and Residual Sequence Modification using Fourier Series to produce better forecasting accuracy than the original GM(1,1) method.
The results of the development of this method will then be used to predict the levels of Green House Gas (GHG) emissions in Central Java Province in the following year, as a reference for determining appropriate mitigation actions going forward.