
MOHAMMED ABDULLAH MOHAMMED ALNASER
Research Interests
Gender | MALE |
---|---|
Place of Work | Hawija Technical Institute |
Position | Teacher |
Qualification | Master |
Speciality | Radiation physics |
moh.phy90_hwj@ntu.edu.iq | |
Phone | 07703660588 |
Address | Iraq. kirkuk, Kirkuk, Kirkuk, Iraq |
Skills
Arabic language (95%)
English language (65%)
Word and Excel (80%)
Academic Qualification
Master's degree
Jan 6, 2020 - Jan 26, 2022Master's degree in Radiation Physics from Suleyman Demirel University in Isparta, Türkiye, 2022
Bachelor of Science in Physics
Oct 15, 2012 - Jul 12, 2016I completed my Bachelor's degree in Physics from the University of Kirkuk, College of Science, in 2016.
Technical Diploma
Sep 20, 2009 - Jul 1, 2011Diploma in Chemical Industries Department, Kirkuk Technical Institute, Northern Technical University, 2011
Working Experience
company ,Kunz [I worked with the German company Kunz for electric power, Iraq branch]
Oct 1, 2016 - Oct 1, 2019Publications
A Deep auto-encoder based Framework for efficient weather forecasting
Dec 9, 2024Journal International Journal of Computational and Experimental Science and ENgineering (IJCESEN)
Issue ISSN: 2149-9144
Volume 1053-1059
Weather forecasting has a plethora of benefits in different domains. Traditional weather forecasting approaches apply science and technology to predict weather conditions in a given place and time. With the emergence of artificial intelligence (AI), there are increased possibilities for weather forecasting research. Instead of ground-level observations, AI approaches learn from historical and current atmospheric data to develop predictions. We suggested a framework for autonomous weather forecasting based on deep learning. Our framework is a variant of the Convolutional Neural Network (CNN) model, which exploits the encoder and decoder to learn parameterizations from the given data and forecast weather. The proposed model can interpret spatial information associated with geopotential fields and automatically infers forecasting know-how with higher accuracy levels. A variable selection process is incorporated to determine geopotential height that impacts the weather conditions. We proposed an algorithm called Deep Weather Forecasting (DWF) to realize the proposed framework. Our empirical study has revealed that the proposed framework evaluates different deep learning models and compares their performance. Our deep learning models outperformed many existing regression models. U-Net showed the highest performance with the least MAE, 0.2268, compared to all other models.