Emmanuel Adetiba

Work place: Department of Electrical and Information Engineering and Covenant Applied Informatics & Communication African Center of Excellence (CApIC-ACE), Covenant University, Ota, Nigeria

E-mail: emmanuel.adetiba@covenantuniversity.edu.ng

Website: https://orcid.org/0000-0001-9227-7389

Research Interests:

Biography

Prof. Emmanuel Adetiba a member of IEEE, received the Ph.D. degree in information and communication engineering from Covenant University, Ota, Nigeria. He was the Director of the Center for Systems and Information Services (aka ICT Center), Covenant University, from 2017 to 2019. He is the incumbent Deputy Director of the Covenant Applied Informatics and Communication Africa Centre of Excellence (CApIC-ACE) and a Co-PI of the FEDGEN Cloud Computing Research Project at the center (World Bank and AFD funded). He is the Founder and a Principal Investigator of the Advanced Signal Processing and Machine Intelligence Research (ASPMIR) Group. He is a Full Professor and the former Head of the Department of Electrical and Information Engineering, Covenant University, from 2021 to 2023. He is also a member of the HRA, Industrial Engineering Department, Durban University of Technology, Durban, South Africa. His research interests and experiences include machine intelligence, software-defined radio, cognitive radio, biomedical signal processing, and cloud and high-performance computing (C&HPC). He is a registered engineer (R. Engr) with the Council for the Regulation of Engineering in Nigeria (COREN) and a member of the Institute of Information Technology Professionals (IITP), South Africa.

Author Articles
3D mmWave MIMO Channel Modeling and Reconstruction for Street Canyon and High-rise Scenarios

By Olabode Idowu-Bismark Oluwadamilola Oshin Emmanuel Adetiba

DOI: https://doi.org/10.5815/ijwmt.2025.03.02, Pub. Date: 8 Jun. 2025

The use of millimeter-wave (mmWave) and full-dimensional multiple-input multiple-output (FD-MIMO) antenna systems for 3D wireless communication is being exploited for enhanced network capacity improvement in the ongoing fifth-generation (5G) deployment. For adequate assessment of competing air interface, random access channelization, and beam alignment procedure in mmWave systems, adequate channel estimation and channel models for different use scenarios are necessary. Conventional pilot-based channel estimation methods are remarkably time-consuming as the number of users or antennas tends toward large numbers. Channel reconstruction has been identified as one of the solutions to the above problem. In this work, a ray-tracing study was conducted using a Wireless Insite ray tracing engine to predict measured statistics for large-scale channel parameters (LSPs). Other LSP such as the shadow fading (SF) were generated using algorithm 1. Algorithm 2 was used to generate the small-scale channel parameters (SSP). The LSPs and SSPs were used as input in algorithm 3 to generate the channel coefficients used for the channel reconstruction in the MATLAB LTE toolbox. The results provided an accurate reconstructed downlink channel state information (CSI) for FDD-based mmWave massive-MIMO system in both the line-of sight (LOS) and non-line of sight scenarios. The results provide an opportunity to adapt the transmitted signal to the CSI and thereby optimize the received signal for spatial multiplexing or to achieve low bit error rates in wireless communication.

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