MACHINE LEARNING FOR SIGNAL MODELING OF GAN HEMTS

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Nazarbayev University School of Sciences and Humanities

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High power and high frequency systems have been designed with better performance through the use of semiconductor devices called Gallium Nitride High Electron Mobility Transistors (GaN HEMTs)[1][2]. Hence, GaN HEMTs are used generally because they have large advantages over traditional semiconductors from Si and GaAs, especially in the areas of Radio Frequency (RF) and microwave applications[3]. As GaN-based devices have high thermal conductivity, a wide band gap, and can work at high voltages and temperatures, they are more preferable than the Si-based devices. GaN HEMTs have these characteristics, which make them very suitable for applications where high power and efficiency are required[4]. Hence, all this fact makes GaN HEMTs so common and used by so many engineers in the modern engineering communication systems (radar systems, satellite communications, high-performance amplifiers, wireless communication networks)...

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Aitzhanov, S. (2025). Machine Learning for Signal Modeling of GaN HEMTs. Nazarbayev University School of Sciences and Humanities

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