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Chemical Kinetics and Thermal Properties of Ablator Pyrolysis Products During Atmospheric Entry

Journal of Thermophysics and Heat Transfer

Gosma, Mitchell R.; Harper, Caleb N.; Collins, Lincoln; Stephani, Kelly A.; Engerer, Jeffrey D.

Legacy and modern-day ablation codes typically assume equilibrium pyrolysis gas chemistry. Yet, experimental data suggest that speciation from resin decomposition is far from equilibrium. A thermal and chemical kinetic study was performed on pyrolysis gas advection through a porous char, using the Theoretical Ablative Composite for Open Testing (TACOT) as a demonstrator material. The finite-element tool SIERRA/ Aria simulated the ablation of TACOT under various conditions. Temperature and phenolic decomposition rates generated from Aria were applied as inputs to a simulated network of perfectly stirred reactors (PSRs) in the chemical solver Cantera. A high-fidelity combustion mechanism computed the gas composition and thermal properties of the advecting pyrolyzate. The results indicate that pyrolysis gases do not rapidly achieve chemical equilibrium while traveling through the simulated material. Instead, a highly chemically reactive zone exists in the ablator between 1400 and 2500 K, wherein the modeled pyrolysis gases transition from a chemically frozen state to chemical equilibrium. These finite-rate results demonstrate a significant departure in computed pyrolysis gas properties from those derived from equilibrium solvers. Under the same conditions, finite-rate-derived gas is estimated to provide up to 50% less heat absorption than equilibrium-derived gas. This discrepancy suggests that nonequilibrium pyrolysis gas chemistry could substantially impact ablator material response models.

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Chemical Kinetics and Thermal Properties of Ablator Pyrolysis Products During Atmospheric Entry

Journal of Thermophysics and Heat Transfer

Gosma, Mitchell R.; Harper, Caleb N.; Collins, Lincoln; Stephani, Kelly A.; Engerer, Jeffrey D.

Legacy and modern-day ablation codes typically assume equilibrium pyrolysis gas chemistry. Yet, experimental data suggest that speciation from resin decomposition is far from equilibrium. A thermal and chemical kinetic study was performed on pyrolysis gas advection through a porous char, using the Theoretical Ablative Composite for Open Testing (TACOT) as a demonstrator material. The finite-element tool SIERRA/ Aria simulated the ablation of TACOT under various conditions. Temperature and phenolic decomposition rates generated from Aria were applied as inputs to a simulated network of perfectly stirred reactors (PSRs) in the chemical solver Cantera. A high-fidelity combustion mechanism computed the gas composition and thermal properties of the advecting pyrolyzate. The results indicate that pyrolysis gases do not rapidly achieve chemical equilibrium while traveling through the simulated material. Instead, a highly chemically reactive zone exists in the ablator between 1400 and 2500 K, wherein the modeled pyrolysis gases transition from a chemically frozen state to chemical equilibrium. These finite-rate results demonstrate a significant departure in computed pyrolysis gas properties from those derived from equilibrium solvers. Under the same conditions, finite-rate-derived gas is estimated to provide up to 50% less heat absorption than equilibrium-derived gas. This discrepancy suggests that nonequilibrium pyrolysis gas chemistry could substantially impact ablator material response models.

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SIERRA Code Coupling Module: Arpeggio User Manual - Version 5.18

Clausen, Jonathan C.; Brunini, Victor B.; Collins, Lincoln; Knaus, Robert C.; Kucala, Alec K.; Lin, Stephen; Matula, Neil M.; Moser, Daniel M.; Phillips, Malachi P.; Ransegnola, Thomas M.; Subia, Samuel R.; Vasyliv, Yaroslav V.; Voskuilen, Tyler V.; Smith, Timothy A.; Lamb, Justin M.

The SNL Sierra Mechanics code suite is designed to enable simulation of complex multiphysicsscenarios. The code suite is composed of several specialized applications which can operate either instandalone mode or coupled with each other. Arpeggio is a supported utility that enables loose couplingof the various Sierra Mechanics applications by providing access to Framework services that facilitatethe coupling.

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SIERRA Multimechanics Module: Aria Verification Manual - Version 5.18

Clausen, Jonathan C.; Brunini, Victor B.; Collins, Lincoln; Knaus, Robert C.; Kucala, Alec K.; Lin, Stephen; Matula, Neil M.; Moser, Daniel M.; Phillips, Malachi P.; Ransegnola, Thomas M.; Subia, Samuel R.; Vasyliv, Yaroslav V.; Voskuilen, Tyler V.; Smith, Timothy A.; Carnes, Brian C.; Lamb, Justin M.

Presented in this document is a portion of the tests that exist in the Sierra Thermal/Fluids verificationtest suite. Each of these tests is run nightly with the Sierra/TF code suite and the results of the testchecked under mesh refinement against the correct analytic result. For each of the tests presented in thisdocument the test setup, derivation of the analytic solution, and comparison of the code results to theanalytic solution is provided.

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SIERRA Low Mach Module: Fuego Verification Manual - Version 5.18

Clausen, Jonathan C.; Brunini, Victor B.; Collins, Lincoln; Knaus, Robert C.; Kucala, Alec K.; Lin, Stephen; Matula, Neil M.; Moser, Daniel M.; Phillips, Malachi P.; Ransegnola, Thomas M.; Subia, Samuel R.; Vasyliv, Yaroslav V.; Voskuilen, Tyler V.; Smith, Timothy A.; Lamb, Justin M.

The SIERRA Low Mach Module: Fuego, henceforth referred to as Fuego, is the key element of theASC fire environment simulation project. The fire environment simulation project is directed atcharacterizing both open large-scale pool fires and building enclosure fires. Fuego represents theturbulent, buoyantly-driven incompressible flow, heat transfer, mass transfer, combustion, soot, andabsorption coefficient model portion of the simulation software.

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Overview of Ablation Research at Sandia National Laboratories

Roberts, Scott A.; Anderson, Nicholas; Arienti, Marco A.; Armijo, Kenneth M.; Blonigan, Patrick J.; Casper, Katya M.; Collins, Lincoln; Creveling, Peter; Delgado, Paul M.; Di Stefano, Martin; Engerer, Jeffrey D.; Fisher, Travis C.; Foster, Collin W.; Gosma, Mitchell; Hansen, Michael A.; Hernandez-Sanchez, Bernadette A.; Hess, Ryan F.; Kieweg, Sarah K.; Lynch, Kyle P.; Mussoni, Erin E.; Potter, Kevin M.; Tencer, John T.; van de Werken, Nekoda v.; Wilson, Zachary; Wagner, Justin W.; Wagnild, Ross M.

Abstract not provided.

Quantifying the unknown impact of segmentation uncertainty on image-based simulations

Nature Communications

Krygier, Michael K.; Labonte, Tyler; Martinez, Carianne M.; Norris, Chance A.; Sharma, Krish; Collins, Lincoln; Mukherjee, Partha P.; Roberts, Scott A.

Image-based simulation, the use of 3D images to calculate physical quantities, relies on image segmentation for geometry creation. However, this process introduces image segmentation uncertainty because different segmentation tools (both manual and machine-learning-based) will each produce a unique and valid segmentation. First, we demonstrate that these variations propagate into the physics simulations, compromising the resulting physics quantities. Second, we propose a general framework for rapidly quantifying segmentation uncertainty. Through the creation and sampling of segmentation uncertainty probability maps, we systematically and objectively create uncertainty distributions of the physics quantities. We show that physics quantity uncertainty distributions can follow a Normal distribution, but, in more complicated physics simulations, the resulting uncertainty distribution can be surprisingly nontrivial. We establish that bounding segmentation uncertainty can fail in these nontrivial situations. While our work does not eliminate segmentation uncertainty, it improves simulation credibility by making visible the previously unrecognized segmentation uncertainty plaguing image-based simulation.

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Credible, Automated Meshing of Images (CAMI)

Roberts, Scott A.; Donohoe, Brendan D.; Martinez, Carianne M.; Krygier, Michael K.; Hernandez-Sanchez, Bernadette A.; Foster, Collin W.; Collins, Lincoln; Greene, Benjamin G.; Noble, David R.; Norris, Chance A.; Potter, Kevin M.; Roberts, Christine C.; Neal, Kyle D.; Bernard, Sylvain R.; Schroeder, Benjamin B.; Trembacki, Bradley; Labonte, Tyler; Sharma, Krish; Ganter, Tyler G.; Jones, Jessica E.; Smith, Matthew D.

Abstract not provided.

Segmentation certainty through uncertainty: Uncertainty-refined binary volumetric segmentation under multifactor domain shift

IEEE Computer Society Conference on Computer Vision and Pattern Recognition Workshops

Martinez, Carianne M.; Potter, Kevin M.; Smith, Matthew D.; Donahue, Emily D.; Collins, Lincoln; Korbin, John P.; Roberts, Scott A.

Deep learning segmentation models are known to be sensitive to the scale, contrast, and distribution of pixel values when applied to Computed Tomography (CT) images. For material samples, scans are often obtained from a variety of scanning equipment and resolutions resulting in domain shift. The ability of segmentation models to generalize to examples from these shifted domains relies on how well the distribution of the training data represents the overall distribution of the target data. We present a method to overcome the challenges presented by domain shifts. Our results indicate that we can leverage a deep learning model trained on one domain to accurately segment similar materials at different resolutions by refining binary predictions using uncertainty quantification (UQ). We apply this technique to a set of unlabeled CT scans of woven composite materials with clear qualitative improvement of binary segmentations over the original deep learning predictions. In contrast to prior work, our technique enables refined segmentations without the expense of the additional training time and parameters associated with deep learning models used to address domain shift.

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Optimal design of a model energy conversion device

Structural and Multidisciplinary Optimization

Collins, Lincoln; Bhattacharya, Kaushik

Fuel cells, batteries, and thermochemical and other energy conversion devices involve the transport of a number of (electro-) chemical species through distinct materials so that they can meet and react at specified multi-material interfaces. Therefore, morphology or arrangement of these different materials can be critical in the performance of an energy conversion device. In this paper, we study a model problem motivated by a solar-driven thermochemical conversion device that splits water into hydrogen and oxygen. We formulate the problem as a system of coupled multi-material reaction-diffusion equations where each species diffuses selectively through a given material and where the reaction occurs at multi-material interfaces. We introduce a phase-field formulation of the optimal design problem and numerically study selected examples.

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Results 1–25 of 27
Results 1–25 of 27