CV


Mojtaba Hajiabadi

Mojtaba Hajiabadi

Assistant Professor

Faculty: Electrical and Computer Engineering

Department: Electronic

Degree: Ph.D

CV
Mojtaba Hajiabadi

Assistant Professor Mojtaba Hajiabadi

Faculty: Electrical and Computer Engineering - Department: Electronic Degree: Ph.D |

Dr. Mojtaba Hajiabadi, a graduate of Electrical Engineering with a focus on Telecommunication Systems, earned his Bachelor's degree in 2012 from the University of Birjand, his Master's degree in 2014, and his Ph.D. in 2018 from Ferdowsi University of Mashhad. He was an outstanding student, holding third rank in his Bachelor's, first in his Master's, and first in his Ph.D. In 2018, he completed a doctoral research opportunity at KU Leuven University in Belgium under the supervision of Professor Marc Moonen, a distinguished IEEE Fellow.

During his Ph.D., Dr. Hajiabadi received several awards from the National Elites Foundation, including research grants, teaching assistantships, and an international research opportunity grant. After completing his studies, he worked for five years in Iran's telecommunications industry, contributing to satellite communication transceivers in the aerospace sector and optical telecommunication systems at the Infrastructure Communications Company. Since 2022, he has been a full-time faculty member in the Communication Engineering Department, Faculty of Electrical and Computer Engineering, at the University of Birjand. His research interests include adaptive filters, machine learning, and AI in wireless communication systems.

If you are interested in collaborating on research in his field of expertise, you may contact him via the following email address:

Email: mhajiabadi@birjand.ac.ir

نمایش بیشتر

Adaptive Receiver Based on Maximum Correntropy Criterion Robust to Non-Gaussian Noise for In-Band Full-Duplex Underwater Communications

AuthorsMojtaba Hajiabadi
JournalWireless Personal Communications
Page number35-57
Serial number143
Volume number1
Paper TypeFull Paper
Published At2025
Journal GradeISI
Journal TypeTypographic
Journal CountryIran, Islamic Republic Of
Journal IndexJCR،Scopus

Abstract

To enhance spectral efficiency in underwater communications, in-band full-duplex transmission has emerged as a promising solution. However, the presence of non-Gaussian noise in underwater channels poses significant challenges for conventional self-interference cancellation and channel equalization algorithms. In this paper, we propose self-interference cancellation and channel equalization algorithms based on the maximum correntropy criterion, a machine learning technique rooted in information theory. These algorithms effectively mitigate non-Gaussian noise, leading to improved system performance. Simulation results demonstrate a 4dB improvement in signal-to-noise ratio (SNR) over conventional RLS-based methods under non-Gaussian noise conditions, significantly reducing the bit error rate (BER) and enhancing the reliability of underwater communications. The proposed receiver achieves robust performance across diverse noise models, validating its effectiveness in practical underwater environments.

Paper URL