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A Flexible fNIRS System Employing Super-resolution Technique for Nature-Scenario High-Resolution Brain Functional Imaging

Research Authors
Y. Lin, Z. Ma, C. Chen, and N. Sabor
Research Date
Research Department
Research Journal
IEEE International Flexible Electronics Technology Conference
Research Member
Research Publisher
IEEE
Research Year
2022

Robust Arrhythmia Classification Based on QRS Detection and a Compact 1D-CNN for Wearable ECG Devices

Research Authors
N. Sabor, G. Gendy, H. Mohammed, G. Wang, and Y. Lian
Research Date
Research Department
Research Journal
IEEE journal of biomedical and health informatics
Research Member
Research Pages
1-12
Research Publisher
IEEE
Research Vol
26
Research Year
2022

Balanced Spatial Feature Distillation and Pyramid Attention Network for Lightweight Image Super-resolution

Research Authors
G. Gendy, N. Sabor, J. Hou, and G. He
Research Date
Research Department
Research Journal
Neurocomputing
Research Member
Research Pages
157-166
Research Publisher
Elsevier
Research Vol
509
Research Year
2022

Gram Matrix-based Convolutional Neural Network for Biometric Identification using PPG Signal

Research Authors
W. Cai-yu, N. Sabor, M. Wang, Y. Liang, C. Xia-jing and G. Wang
Research Date
Research Journal
Journal of Shanghai Jiaotong University (Science)
Research Member
Research Pages
463-472
Research Publisher
Springer
Research Vol
Vol. 27
Research Year
2022

Automatic Removal of Multiple Artifacts for Single-Channel EEG

Research Authors
5. Z. Chen-bei, N. Sabor, J. Luo, Y. Pu, G. Wang, and Y. Lian
Research Date
Research Department
Research Journal
Journal of Shanghai Jiaotong University (Science)
Research Member
Research Pages
437-451
Research Publisher
27
Research Rank
Springer
Research Vol
27
Research Year
2022

BHI-Net: Brain-Heart Interaction-based Deep Architectures for Epileptic Seizures and Firing Location Detection

Research Authors
N. Sabor, H. Mohammed, G. Wang, and Y. Lian
Research Date
Research Department
Research Journal
IEEE Transactions on Neural Systems and Rehabilitation Engineering
Research Member
Research Pages
1576-1588
Research Publisher
IEEE
Research Vol
30
Research Year
2022

Efficiency focused energy management strategy based on optimal droop gain design for more electric aircraft

Research Abstract

Due to the substantial increase in the number of electrically driven systems onboard more electric aircraft (MEA), the onboard electric power systems (EPSs) are becoming more and more complex. Therefore, there is a need to develop a control strategy to manage the overall EPS energy flow and ensure the operation of safety-critical systems (which are electrical loads) under different operating scenarios and to consider EPS losses minimization, exploiting the thermal capability of generators, different load priorities, and available batteries with their charging and discharging schedules. This article presents an energy management (EM) strategy that considers the aforementioned objectives. The optimal droop gain approach is employed as a power-sharing method to minimize the total EPS losses in MEA. A finite state machine (FSM) has been used to implement the control strategy to realize the EPS reconfiguration

Research Authors
Mohamed AA Mohamed, Seang Shen Yeoh, Jason A Atkin, Habibu Hussaini, Serhiy Bozhko
Research Date
Research Department
Research Journal
IEEE Transactions on Transportation Electrification
Research Pages
4205-4218
Research Publisher
IEEE
Research Vol
8
Research Year
2022

A New Battery Selection System and Charging Control of a Movable Solar Powered Charging Station for Endless Flying Killing Drones

Research Abstract

This paper provides a design, a charging control, and energy management of a movable Photo Voltaic (PV) charging station with an Automatic Battery Replacement (ABR) system to enable drones for ongoing missions. The paper represents the first stage of a three-staged project titled Fall Armyworm (FAW) insect killer. The other two stages involve the flight control of drones and detecting and killing FAW insects. Without chemical methods, the project aims to eliminate harmful FAW insects that are rapidly spreading in Africa and Asia. The power source is a hybrid PV system with energy storage devices (batteries and supercapacitors). The maximum power from PV panels is tracked using three different online methods (PSO, IC, and P&O), and the best method with the highest accuracy is selected. The experimental and simulation results approved that PSO is the recommended method used in this project among the studied methods because of its high target reach (about 97%) and low steady-state oscillation (maximum 2.15%). An intelligent energy management system is investigated and designed to efficiently utilize solar power with a constant-current constantvoltage charger for LiPo batteries. A new Battery Selection System (BSS) is designed and verified to efficiently utilize the harvested energy and increase the mission time. The BSS targets to manage the selection of the appropriate battery to charge and control its charging rate. The system performance is tested using MATLAB software. Then, an experimental setup for the system is built to validate simulation results. The results of simulations and experiments proved the reliability of BSS

Research Authors
E Ali, M Fanni, AM Mohamed
Research Date
Research Department
Research Journal
Sustainability
Research Pages
2071
Research Publisher
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Research Vol
14
Research Year
2022
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