4th International Cumhuriyet Artificial Intelligence Applications Conference, Sivas, Türkiye, 25 Eylül 2025, ss.37-49, (Tam Metin Bildiri)
This study addresses the challenges in analyzing data from a ground-based atmospheric Cherenkov gamma telescope, aiming to simulate and observe high-energy gamma particles. Notable challenges include differentiating signals from high-energy gamma rays and background noise induced by cosmic-rayinitiated hadronic showers. Robust methodologies, especially for statistical significance amidst varying energy levels, are essential. The study underscores the need for nuanced solutions in effective data analysis, contributing significantly to our understanding of high-energy gamma phenomena. A cooperative coevolution-based artificial neural network model, developed in response to these challenges, achieves a classification accuracy of over 91%. This success highlights the model’s efficacy in addressing scientific problems, effectively separating gamma rays from background noise, and contributing to future research on atmospheric Cherenkov gamma telescopes.