Latest Past Events

IEEE ComSoc Distinguished Lecturer Talk

Virtual: https://events.vtools.ieee.org/m/299792

UAV-based Wireless Communications, Computing and Charging With the advancement of UAV (Unmanned Aerial Vehicles) edge computing and communications from the sky become possible and indeed provide an effective way to complement the current ground-based horizontal edge computing and communications. This talk starts with a brief introduction of UAV and UAV-assisted wireless communications, and then moves on to discuss the necessity of a close collaboration of the two important resources in any ICT system, namely, communication and computation, again in the context of UAVs. Then the talk focuses on wireless energy charging, which is carried out together with communications, i.e., the so-called data and energy integrated networks (DEIN). Key research issues and our solutions are presented, including not only theoretical aspects such as problem formulation and algorithms but also experimental implementations. The talk concludes with discussions on future opportunities in this exciting research area. The talk is easy to follow and is suitable to young researchers who just start their research study and to anybody who is interested in wireless charging and mobile edge computing and communications. Speaker(s): Dr. Kun Yang, Virtual: https://events.vtools.ieee.org/m/299792

VDL Dr. Turgut Communication, computation, and privacy trade-off in machine learning for smart environments

Virtual: https://events.vtools.ieee.org/m/286611

Smart assistive environments adapt to the needs and preferences of disabled or elderly users who need help with the activities of daily living. However, the needs and requests of users vary greatly, both due to personal preferences and type of disability. As handcrafting an environment is prohibitively expensive, in recent years significant research was done in systems that use machine learning to create a predictive model of the user. Machine learning, however, typically requires large amounts of data. A stand-alone smart environment, however, only has access to the data collected from its user since it was deployed. A possible solution is to perform centralized, cloud-based learning by pooling the training data collected from multiple users. However, uploading data collected from the personal habits of elderly and disabled users create significant security and privacy concerns. In this talk, we investigate the type of data sharing necessary for learning user models in smart environments and propose several novel considerations. We point out that data sharing is only ethical if the user derives a benefit from it. This implies that the decision to share data must be periodically revisited, it is not a commitment extending indefinitely in the future. We study the data sharing decisions made by users under several machine learning frameworks: local, cloud, and federated learning. We show that most users only benefit from data sharing for a limited interval after the deployment of the system. We also investigate machine learning techniques that predict whether the user will benefit from sharing the data before the data is shared. Co-sponsored by: Tamseel Mahmood - [email protected] Speaker(s): Dr. Damla Turgut, Agenda: Bio: Dr. Turgut is Charles Millican Professor of Computer Science at the University of Central Florida (UCF). She is the co-director of the AI Things Laboratory. She held visiting researcher positions at the University of Rome ``La Sapienza'', Imperial College of London, and KTH Royal Institute of Technology, Sweden. Her research interests include wireless ad hoc, sensor, underwater, vehicular, and social networks, edge/cloud computing, smart cities, smart grids, IoT-enabled healthcare and augmented reality, as well as considerations of privacy in the Internet of Things. Dr. Turgut serves on several editorial boards and program committees of prestigious ACM and IEEE journals and conferences. Her most recent honors include the NCWIT 2021 Mentoring Award for Undergraduate Research (MAUR), the UCF Research Incentive Award, and the UCF Women of Distinction Award. Since 2019, she serves as the N2Women Board Co-Chair where she co-leads the activities of the N2Women Board in supporting female researchers in the fields of networking and communications. She is an IEEE ComSoc Distinguished Lecturer, IEEE Senior Member, and the Chair-Elect of the IEEE Technical Committee on Computer Communications (TCCC). Virtual: https://events.vtools.ieee.org/m/286611

Recent advances in Smart Grid Communications

Virtual: https://events.vtools.ieee.org/m/281103

Abstract: In the past decade, Information and Communication Technologies (ICT) have enabled the modernization of the power grid and have led to many advances in smart grid technologies. Smart grid communications facilitate a large number of grid operations, including advanced metering, fault monitoring, microgrid control, transactive energy systems and so on. In parallel to advances in smart grids, communication technologies have been continuously evolving to provide better service to mobile users and vertical industries. Recently, machine learning has showed promising performance improvements in communication networks as well as smart grid operations. In this talk, we introduce novel AI-based tools that will allow a P2P energy trading platform, consisting of microgrids, to become a part of the future transactive energy systems. The energy trading platform relies on robust smart grid communications. We will show our recent results on low-latency communications that use reinforcement learning to support communication needs of such energy trading platforms. Speaker(s): Melike Erol-Kantarci, Virtual: https://events.vtools.ieee.org/m/281103