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Magnetized High-Energy-Density Plasma Experiments at MIT

Hare, Jack; Datta, Rishabh; Varnish, Thomas; Lebedev, Sergey; Jerry, Chittenden; Crilly, Aidan; Halliday, Jack; Russell, Danny; Chandler, Katherine M.; Fox, Will; Hantao, Ji; Myers, Clayton; Aragon, Carlos; Jennings, Christopher A.; Ampleford, David J.; Hansen, Stephanie B.; Yager-Elorriaga, David A.; Harding, Eric H.; Shipley, Gabriel A.; Harmon, Roger; Gonzalez, Josue; Molina, Leo

Abstract not provided.

Perspectives on the integration between first-principles and data-driven modeling

Computers and Chemical Engineering

Bradley, William; Kim, Jinhyeun; Kilwein, Zachary A.; Blakely, Logan; Eydenberg, Michael S.; Jalvin, Jordan; Laird, Carl; Boukouvala, Fani

Efficiently embedding and/or integrating mechanistic information with data-driven models is essential if it is desired to simultaneously take advantage of both engineering principles and data-science. The opportunity for hybridization occurs in many scenarios, such as the development of a faster model of an accurate high-fidelity computer model; the correction of a mechanistic model that does not fully-capture the physical phenomena of the system; or the integration of a data-driven component approximating an unknown correlation within a mechanistic model. At the same time, different techniques have been proposed and applied in different literatures to achieve this hybridization, such as hybrid modeling, physics-informed Machine Learning (ML) and model calibration. In this paper we review the methods, challenges, applications and algorithms of these three research areas and discuss them in the context of the different hybridization scenarios. Moreover, we provide a comprehensive comparison of the hybridization techniques with respect to their differences and similarities, as well as advantages and limitations and future perspectives. Finally, we apply and illustrate hybrid modeling, physics-informed ML and model calibration via a chemical reactor case study.

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ADROC: An Emulation Experimentation Platform for Advancing Resilience of Control Systems

Thorpe, Jamie E.; Fasano, Raymond; Livesay, Michael; Sahakian, Meghan A.; Foulk, James W.; Vugrin, Eric

Cyberattacks against industrial control systems have increased over the last decade, making it more critical than ever for system owners to have the tools necessary to understand the cyber resilience of their systems. However, existing tools are often qualitative, subject matter expertise-driven, or highly generic, making thorough, data-driven cyber resilience analysis challenging. The ADROC project proposed to develop a platform to enable efficient, repeatable, data-driven cyber resilience analysis for cyber-physical systems. The approach consists of two phases of modeling: computationally efficient math modeling and high-fidelity emulations. The first phase allows for scenarios of low concern to be quickly filtered out, conserving resources available for analysis. The second phase supports more detailed scenario analysis, which is more predictive of real-world systems. Data extracted from experiments is used to calculate cyber resilience metrics. ADROC then ranks scenarios based on these metrics, enabling prioritization of system resources to improve cyber resilience.

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MalGen: Malware Generation with Specific Behaviors to Improve Machine Learning-based Detectors

Smith, Michael R.; Carbajal, Armida J.; Domschot, Eva; Johnson, Nicholas T.; Goyal, Akul; Lamb, Christopher; Lubars, Joseph P.; Kegelmeyer, William P.; Krishnakumar, Raga; Quynn, Sophie; Ramyaa, Ramyaa; Verzi, Stephen J.; Zhou, Xin

In recent years, infections and damage caused by malware have increased at exponential rates. At the same time, machine learning (ML) techniques have shown tremendous promise in many domains, often out performing human efforts by learning from large amounts of data. Results in the open literature suggest that ML is able to provide similar results for malware detection, achieving greater than 99% classifcation accuracy [49]. However, the same detection rates when applied in deployed settings have not been achieved. Malware is distinct from many other domains in which ML has shown success in that (1) it purposefully tries to hide, leading to noisy labels and (2) often its behavior is similar to benign software only differing in intent, among other complicating factors. This report details the reasons for the diffcultly of detecting novel malware by ML methods and offers solutions to improve the detection of novel malware.

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A pseudo-two-dimensional (P2D) model for FeS2 conversion cathode batteries

Journal of Power Sources

Horner, Jeffrey S.; Whang, Grace; Kolesnichenko, Igor V.; Lambert, Timothy N.; Dunn, Bruce S.; Roberts, Scott A.

Conversion cathode materials are gaining interest for secondary batteries due to their high theoretical energy and power density. However, practical application as a secondary battery material is currently limited by practical issues such as poor cyclability. To better understand these materials, we have developed a pseudo-two-dimensional model for conversion cathodes. We apply this model to FeS2 – a material that undergoes intercalation followed by conversion during discharge. The model is derived from the half-cell Doyle–Fuller–Newman model with additional loss terms added to reflect the converted shell resistance as the reaction progresses. We also account for polydisperse active material particles by incorporating a variable active surface area and effective particle radius. Using the model, we show that the leading loss mechanisms for FeS2 are associated with solid-state diffusion and electrical transport limitations through the converted shell material. The polydisperse simulations are also compared to a monodisperse system, and we show that polydispersity has very little effect on the intercalation behavior yet leads to capacity loss during the conversion reaction. We provide the code as an open-source Python Battery Mathematical Modeling (PyBaMM) model that can be used to identify performance limitations for other conversion cathode materials.

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Super-Resolution Approaches in Three-Dimensions for Classification and Screening of Commercial-Off-The-Shelf Components

Polonsky, Andrew T.; Martinez, Carianne; Appleby, Catherine; Bernard, Sylvain R.; Griego, James G.; Noell, Philip; Pathare, Priya R.

X-ray computed tomography is generally a primary step in characterization of defective electronic components, but is generally too slow to screen large lots of components. Super-resolution imaging approaches, in which higher-resolution data is inferred from lower-resolution images, have the potential to substantially reduce collection times for data volumes accessible via x-ray computed tomography. Here we seek to advance existing two-dimensional super-resolution approaches directly to three-dimensional computed tomography data. Multiple scan resolutions over a half order of magnitude of resolution were collected for four classes of commercial electronic components to serve as training data for a deep-learning, super-resolution network. A modular python framework for three-dimensional super-resolution of computed tomography data has been developed and trained over multiple classes of electronic components. Initial training and testing demonstrate the vast promise for these approaches, which have the potential for more than an order of magnitude reduction in collection time for electronic component screening.

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FY2022 Q4: Demonstrate multi-turbine simulation with hybrid-structured/unstructured-moving-grid software stack running primarily on GPUs and propose improvements for successful KPP-2 [Poster]

Sprague, Michael A.

Milestone accomplishments staged the ExaWind team for successful completion of KPP-2 challenge problem in FY23, which requires the simulation on Frontier of at least four MW-scale turbines in an atmospheric boundary layer with at least 20B gridpoints. The ExaWind project and software stack is many faceted, with team members working on multiple areas, including linear-system solvers (Trilinos, hypre, AMReX), overset meshes, turbulence modeling, and in situ visualization, all with an aim for high fidelity predictions and performance portability. This milestone marks significant improvements on many fronts and provides the team with a pathway to exascale wind farm simulations in FY23.

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Results 5101–5150 of 99,299
Results 5101–5150 of 99,299