Theoretical study of Magnetoresistance Oscillations in Semi-parabolic Plus Semi-inverse Squared Quantum Wells in the Presence of Intense Electromagnetic Waves
Nguyen Thu Huong, Nguyen Quang Bau, Cao Thi Vi Ba, Bui Thi Dung,, Nguyen Cong Toan, and Anh-Tuan Tran

TL;DR
This theoretical study explores how intense electromagnetic waves influence magnetoresistance oscillations in semi-parabolic plus semi-inverse squared quantum wells, revealing controllable effects on SdH oscillations through external fields and structural parameters.
Contribution
The paper derives an analytical expression for longitudinal magnetoresistance in complex quantum wells under intense electromagnetic waves, highlighting the influence of external and structural parameters on oscillations.
Findings
SdH oscillations decrease with temperature without IEMW.
IEMW induces beats in SdH oscillations with amplitudes increasing with wave intensity.
Structural parameters significantly affect magnetoresistance and oscillation behavior.
Abstract
Magnetoresistance oscillations in semiconductor quantum wells, with the semi-parabolic plus semi-inverse squared potential, under the influence of intense electromagnetic waves (IEMW), is studied theoretically. Analytical expression for the longitudinal magnetoresistance (LMR) is derived from the quantum kinetic equation for electrons, using the Fr\"ohlich Hamiltonian of the electron-acoustic phonon system. Numerical calculation results show the complex dependence of LMR on the parameters of the external field (electric, magnetic field and temperature) as well as the structure parameters of the confinement potential. In the absence of IMEW, Shubnikov-de Haas (SdH) oscillations appear with amplitudes that decrease with temperature in agreement with previous theoretical and experimental results. In the presence of IEMW, the SdH oscillations appear in beats with amplitudes that increase…
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