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Aaron Charous Graduates with a PhD

Congratulations to Dr. Aaron Charous on his graduation! Aaron successfully defended and received his PhD from Mechanical Engineering for his research on “Dynamical Reduced-Order Models for High-Dimensional Systems” with our MSEAS group at MIT. We wish all the best to Aaron for his next steps!

Below are some pictures from graduation:

MSEAS was also introduced to Jeppson’s Malört.

Wael Awarded Wunsch Foundation Silent Hoist and Crane Award

Graduate student Wael Hajj Ali has been awarded a 2023 Wunsch Foundation Silent Hoist and Crane Award for Outstanding Graduate Research and Education by the Department of Mechanical Engineering. Congratulations Wael!

Evaluation of Deep Neural Operator Models toward Ocean Forecasting

Rajagopal, E., A.N.S. Babu, T. Ryu, P.J. Haley, Jr., C. Mirabito, and P.F.J. Lermusiaux, 2023. Evaluation of Deep Neural Operator Models toward Ocean Forecasting. In: OCEANS '23 IEEE/MTS Gulf Coast, 25–28 September 2023. doi:10.23919/OCEANS52994.2023.10337380

Data-driven, deep-learning modeling frameworks have been recently developed for forecasting time series data. Such machine learning models may be useful in multiple domains including the atmospheric and oceanic ones, and in general, the larger fluids community. The present work investigates the possible effectiveness of such deep neural operator models for reproducing and predicting classic fluid flows and simulations of realistic ocean dynamics. We first briefly evaluate the capabilities of such deep neural operator models when trained on a simulated two-dimensional fluid flow past a cylinder. We then investigate their application to forecasting ocean surface circulation in the Middle Atlantic Bight and Massachusetts Bay, learning from high-resolution data-assimilative simulations employed for real sea experiments. We confirm that trained deep neural operator models are capable of predicting idealized periodic eddy shedding. For realistic ocean surface flows and our preliminary study, they can predict several of the features and show some skill, providing potential for future research and applications.

Gaussian Beam Migration for Wide-Area Deep Ocean Floor Mapping

Charous, A., W.H. Ali, P. Ryu, D. Brown, K. Arsenault, B. Cho, K. Rimpau, A. March, and P.F.J. Lermusiaux, 2023. Gaussian Beam Migration for Wide-Area Deep Ocean Floor Mapping. In: OCEANS '23 IEEE/MTS Gulf Coast, 25–28 September 2023. doi:10.23919/OCEANS52994.2023.10337362

Cost-effective seafloor mapping at high resolution is yet to be attained. A possible solution consists of using a mobile, wide-aperture, sparse array with subarrays distributed across multiple autonomous surface vessels. Such wide-area mapping with multiple dynamic sources and receivers require accurate modeling and processing systems for imaging the seabed. In this paper, we focus on computational schemes and challenges for such high-resolution acoustic imaging or migration. Starting from the imaging condition from the adjoint-state method, we derive a closed-form expression for Gaussian beam migration in stratified media. We employ this technique on simulated data and on real data collected with our novel acoustic array over shipwrecks in the Boston Harbor. We compare Gaussian beam migration with diffraction stack and Kirchhoff migration, and we find that Gaussian beam migration produces the clearest images with the fewest artifacts.

MSEAS-ParEq for Ocean-Acoustic Modeling around the Globe

Ali, W.H., A. Charous, C. Mirabito, P.J. Haley, Jr., and P.F.J. Lermusiaux, 2023. MSEAS-ParEq for Ocean-Acoustic Modeling around the Globe. In: OCEANS '23 IEEE/MTS Gulf Coast, 25–28 September 2023. doi:10.23919/OCEANS52994.2023.10337377

The multi-scale dynamics of oceanic processes and the complex propagation of acoustic waves are fundamental challenges in marine sciences and operations. Recent computing advances enable such multiresolution ocean and acoustic modeling, but a fully integrated system for sustained coupled predictions and Bayesian data assimilation remains needed. In this study, we integrate the MSEAS Primitive Equation (PE) ocean modeling system and the MSEAS acoustic Parabolic Equation (ParEq) solver, enabling real-time coupled ocean and acoustic predictions. Realistic applications in Massachusetts Bay, the Norwegian Sea, the western Mediterranean Sea, and the New York Bight are used to demonstrate capabilities and validate predictions in diverse shallow and deep-water environments. Results provide the foundation for an end-to-end system for coupled ocean-acoustic probabilistic modeling, Bayesian inversion, and learning.