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- 305Electrical and Computer Engineering, Department of/Journal Articles (Electrical and Computer Engineering)
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- 3Oncology, Department of/Medical Physics
- 22Mahdi Tavakoli
- 10Musilek, Petr
- 9Ali Jazayeri
- 9Shengjun Huang, Venkata Dinavahi
- 8Shankar, Karthik
- 7Hadis Karimipour, Venkata Dinavahi
- 6Passivity
- 6electrochemical anodization
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Detailed Multi-Domain Modeling and Faster-Than-Real-Time Hardware Emulation of Small Modular Reactor for EMT Studies
Download2024-03-01
Weiran Chen, Venkata Dinavahi, Ning Lin
Small modular reactors (SMRs) are gaining significant attention as a promising solution to address the global energy demand and simulation is pivotal in expediting the construction of SMRs. However, the point-reactor neutron-kinetics equations of SMRs are strongly stiff nonlinear ordinary...
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Distinguishing between deep trapping transients of electrons and holes in TiO2 nanotube arrays using planar microwave resonator sensor
Download2018-05-11
Mohammad H Zarifi, Benjamin Daniel Wiltshire, Najia Mahdi, Karthik Shankar, Mojgan Daneshmand
A large signal direct current (DC) bias and a small signal microwave bias were simultaneously applied to TiO2 nanotube membranes mounted on a planar microwave resonator. The DC bias modulated the electron concentration in the TiO2 nanotubes, and was varied between 0 and 120 V in this study. ...
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Distributed Optimization for Distribution Grids with Stochastic DER using Multi-Agent Deep Reinforcement Learning
Download2021-04-01
Mohammed Al Saffar, Petr Musilek
This article develops a special decomposition methodology for the traditional optimal power flow which facilitates optimal integration of stochastic distributed energy resources in power distribution systems. The resulting distributed optimal power flow algorithm reduces the computational...