Search Results for author: Jeffrey H. Reed

Found 14 papers, 0 papers with code

ASCENT: A Context-Aware Spectrum Coexistence Design and Implementation Toolset for Policymakers in Satellite Bands

no code implementations7 Feb 2024 Ta-seen Reaz Niloy, Saurav Kumar, Aniruddha Hore, Zoheb Hassan, Carl Dietrich, Eric W. Burger, Jeffrey H. Reed, Vijay K. Shah

It serves two essential purposes (a) evaluating the potential for harmful interference to primary users in satellite bands and (b) facilitating the analysis, design, and implementation of diverse regulatory policies on spectrum usage and sharing.

Line-of-Sight Probability for Outdoor-to-Indoor UAV-Assisted Emergency Networks

no code implementations27 Feb 2023 Gaurav Duggal, R. Michael Buehrer, Nishith Tripathi, Jeffrey H. Reed

The LoS probability and coverage probabilities derived in this paper can be used to analyze the outdoor UAV-to-indoor propagation environment to determine optimal UAV positioning and the number of UAVs needed to achieve the desired performance of the emergency network.

AI Testing Framework for Next-G O-RAN Networks: Requirements, Design, and Research Opportunities

no code implementations8 Nov 2022 Bo Tang, Vijay K. Shah, Vuk Marojevic, Jeffrey H. Reed

This article presents a general automated, distributed and AI-enabled testing framework to test AI models deployed in O-RAN in terms of their decision-making performance, vulnerability and security.

Decision Making

Probability-Reduction of Geolocation using Reconfigurable Intelligent Surface Reflections

no code implementations18 Oct 2022 Anders M. Buvarp, Daniel J. Jakubisin, William C. Headley, Jeffrey H. Reed

In this paper, we explore the possibility of using a reconfigurable intelligent surface in order to disrupt the ability of an unintended receiver to geolocate the source of transmitted signals in a 5G communication system.

A Practical AoI Scheduler in IoT Networks with Relays

no code implementations8 Mar 2022 Biplav Choudhury, Prasenjit Karmakar, Vijay K. Shah, Jeffrey H. Reed

The proposed v-PPO based AoI scheduler adapts well to changing network conditions and accounts for unknown traffic generation patterns, making it practical for real-world IoT deployments.

Scheduling

Predictive Closed-Loop Service Automation in O-RAN based Network Slicing

no code implementations4 Feb 2022 Joseph Thaliath, Solmaz Niknam, Sukhdeep Singh, Rahul Banerji, Navrati Saxena, Harpreet S. Dhillon, Jeffrey H. Reed, Ali Kashif Bashir, Avinash Bhat, Abhishek Roy

To cater to the dynamic service requirements of these verticals and meet the required quality-of-service (QoS) mentioned in the service-level agreement (SLA), network slices need to be isolated through dedicated elements and resources.

Management

AoI-minimizing Scheduling in UAV-relayed IoT Networks

no code implementations12 Jul 2021 Biplav Choudhury, Vijay K. Shah, Aidin Ferdowsi, Jeffrey H. Reed, Y. Thomas Hou

Our simulation results show that DQN-based scheduler outperforms MAF-MAD scheduler and three other baseline schedulers, i. e., Maximal AoI First (MAF), Round Robin (RR) and Random, employed at both hops under general conditions when the network is small (with 10's of IoT devices).

Scheduling

RAN Slicing in Multi-MVNO Environment under Dynamic Channel Conditions

no code implementations11 Apr 2021 Darshan A. Ravi, Vijay K. Shah, Chengzhang Li, Tom Hou, Jeffrey H. Reed

In this work, we study the problem of Modulation and Coding Scheme(MCS) aware RAN slicing(MaRS) in the context of a wireless system having MVNOs which have users with minimum data rate requirement.

Deep Learning for Fast and Reliable Initial Access in AI-Driven 6G mmWave Networks

no code implementations6 Jan 2021 Tarun S. Cousik, Vijay K. Shah, Tugba Erpek, Yalin E. Sagduyu, Jeffrey H. Reed

In LoS conditions, the selection of the beams is consequential and improves the accuracy by up to 70%.

Cross-layer Band Selection and Routing Design for Diverse Band-aware DSA Networks

no code implementations8 Sep 2020 Pratheek S. Upadhyaya, Vijay K. Shah, Jeffrey H. Reed

As several new spectrum bands are opening up for shared use, a new paradigm of \textit{Diverse Band-aware Dynamic Spectrum Access} (d-DSA) has emerged.

Multi-agent Reinforcement Learning

Fast Initial Access with Deep Learning for Beam Prediction in 5G mmWave Networks

no code implementations22 Jun 2020 Tarun S. Cousik, Vijay K. Shah, Jeffrey H. Reed, Tugba Erpek, Yalin E. Sagduyu

This paper presents DeepIA, a deep learning solution for faster and more accurate initial access (IA) in 5G millimeter wave (mmWave) networks when compared to conventional IA.

Artificial Intelligence-Defined 5G Radio Access Networks

no code implementations21 Nov 2018 Miao Yao, Munawwar Sohul, Vuk Marojevic, Jeffrey H. Reed

Massive multiple-input multiple-output antenna systems, millimeter wave communications, and ultra-dense networks have been widely perceived as the three key enablers that facilitate the development and deployment of 5G systems.

Cannot find the paper you are looking for? You can Submit a new open access paper.