WE2.R7.2: PHYSICALLY INFORMED NEURAL NETWORKS FOR THE SIMULATION AND DATA-ASSIMILATION OF GEOPHYSICAL DYNAMICS
Said Ouala, Ronan Fablet, Lucas Drumetz, IMT-Atlantique, France; Bertrand Chapron, Ifremer, France; Ananda Pascual, IMEDEA, Spain; Fabrice Collard, Lucile Gaultier, ODL, France
WE2.R7.3: PROCESS GUIDED DEEP LEARNING FOR MODELING PHYSICAL SYSTEMS: AN APPLICATION IN LAKE TEMPERATURE MODELING
Xiaowei Jia, Jared Willard, University of Minnesota, United States; Anuj Karpatne, Virginia Tech, United States; Jordan Read, Jacob Zwart, USGS, United States; Michael Steinbach, Vipin Kumar, University of Minnesota, United States
WE2.R7.5: EXPLORING THE RELATIONSHIPS BETWEEN SCATTERING PHYSICS AND AUTO-ENCODER LATENT-SPACE EMBEDDING
Shaunak De, Christian Clanton, Steven Bickerton, Oliwia Baney, Kaushik Patnaik, Orbital Insight Inc., United States
WE2.R7.6: ON THE OPTIMAL DESIGN OF CONVOLUTIONAL NEURAL NETWORKS FOR EARTH OBSERVATION DATA ANALYSIS BY MAXIMIZATION OF INFORMATION EXTRACTION
Andrea Marinoni, UiT The Arctic University of Norway, Norway; Gianni Christian Iannelli, Ticinum Aerospace, Italy; Salman Khaleghian, UiT The Arctic University of Norway, Norway; Paolo Gamba, University of Pavia, Italy
WE2.R7.8: MULTI-SPECTRAL IMAGE CLASSIFICATION WITH QUANTUM NEURAL NETWORK
Piotr Gawron, Nicolaus Copernicus Astronomical Center, Polish Academy of Sciences, Poland; Stanisław Lewiński, Space Research Centre, Polish Academy of Sciences, Poland
WE2.R7.9: AN ENSEMBLE APPROACH FOR COMPRESSIVE SENSING WITH QUANTUM ANNEALERS
Ramin Ayanzadeh, Milton Halem, Tim Finin, University of Maryland, Baltimore County, United States