Abweichender Titel nach Übersetzung der Verfasserin/des VerfassersThis master thesis introduces an approach to using Generative Adversarial Networks for the generation of phase space to replace the generated phase space instead of large phase space datasets. The original approach was produced by Monte Carlo method of ImagingRing system at MedAustron. This is intended to create the generated particles that can be used in research areas, while creating the conventional sampling of phase space is time consuming and challenging. To evaluate the outcome of GAN, some methods are proposed to validate the generated particles. The efficiency of the generated particles produced by GAN has been checked and satisfactory results have been gained for thi...