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My APS/URSI 2019 Schedule

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MO-SP.1P: Application of Machine/Deep Learning and Uncertainty Quantification Techniques in Computational Electromagnetics

Session Type: Special Session Oral
Time: Monday, July 8, 13:20 - 17:00
Location: Grand Ballroom C
Session Chairs: Luis Gomez, Duke University School of Medicine, Abdulkadir Yucel, Nanyang Technological University, Cynthia Furse, University of Utah and Costas Sarris, University of Toronto
 
13:20 - 13:40
  MO-SP.1P.1: GENERALIZATION CAPABILITIES OF DEEP LEARNING SCHEMES IN SOLVING INVERSE SCATTERING PROBLEMS
         Zhun Wei, Xudong Chen, National University of Singapore, Singapore
 
13:40 - 14:00
  MO-SP.1P.2: GEOMETRICALLY STOCHASTIC FINITE DIFFERENCE TIME DOMAIN METHOD
         Khadijeh Masumnia-Bisheh, Tarbiat Modares University, Iran; Cynthia Furse, University of Utah, United States
 
14:00 - 14:20
  MO-SP.1P.3: FAST SURROGATE MODEL-ASSISTED UNCERTAINTY QUANTIFICATION VIA QUANTIZED TENSOR TRAIN DECOMPOSITIONS
         Luis Gomez, Duke University School of Medicine, United States; Abdulkadir Yucel, Nanyang Technological University, Singapore; Weitian Sheng, Cadence Design Systems, United States; Eric Michielssen, University of Michigan, United States
 
14:20 - 14:40
  MO-SP.1P.4: DEEP CONVOLUTIONAL NEURAL NETWORK APPROACH FOR SOLVING NONLINEAR INVERSE SCATTERING PROBLEMS
         Lianlin Li, Longgang Wang, Peking University, China; Daniel Ospina Acero, Fernando Teixeira, Ohio State University, United States
 
14:40 - 15:00
  MO-SP.1P.5: ERROR ESTIMATION AND UNCERTAINTY QUANTIFICATION BASED ON ADJOINT METHODS IN COMPUTATIONAL ELECTROMAGNETICS
         Branislav Notaros, Jake Harmon, Cam Key, Donald Estep, Colorado State University, United States; Troy Butler, University of Colorado Denver, United States
 
15:00 - 15:20 Break
 
15:20 - 15:40
  MO-SP.1P.6: A MULTI-LEVEL RECONSTRUCTION ALGORITHM FOR ELECTRICAL CAPACITANCE TOMOGRAPHY BASED ON MODULAR DEEP NEURAL NETWORKS
         Elizabeth Chen, Costas Sarris, University of Toronto, Canada
 
15:40 - 16:00
  MO-SP.1P.7: DEEP NEURAL NETWORK REPRESENTATIONS OF TRANSIENT ELECTRODYNAMIC PHENOMENA
         Oameed Noakoasteen, Shu Wang, Zhen Peng, University of New Mexico, United States
 
16:00 - 16:20
  MO-SP.1P.8: FAST AND ACCURATE NEAR-FIELD TO FAR-FIELD TRANSFORMATION USING AN ADAPTIVE SAMPLING ALGORITHM AND MACHINE LEARNING
         Rezvan Rafiee Alavi, Rashid Mirzavand, Pedram Mousavi, University of Alberta, Canada
 
16:20 - 16:40
  MO-SP.1P.9: EXPERIMENTAL MICROWAVE TARGET IDENTIFICATION USING MACHINE LEARNING
         Clayton Kettlewell, Kyle Hetjmanek, George Scott, Waleed Al-Shaikhli, Blake Willig, Ala-Addin Nabulsi, Somen Baidya, Reza Derakhshani, Ahmed M. Hassan, University of Missouri-Kansas City, United States
 
16:40 - 17:00
  MO-SP.1P.10: UNCERTAINTY QUANTIFICATION OF RADIO PROPAGATION MODELS USING ARTIFICIAL NEURAL NETWORKS
         Aristeidis Seretis, Xingqi Zhang, Costas Sarris, University of Toronto, Canada