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Stochastic room temperature creep of 316 L stainless steel

International Journal of Plasticity

Inman, Samuel B.; Garber, Kevin W.; Robertson, Andreas E.; Brown, Nathan K.; Dingreville, Remi P.M.; Boyce, Brad L.

The creep behavior of 316 L stainless steel at room temperature was evaluated as a function of time and applied stress using a new high-Throughput approach. Several common creep models were evaluated against the observations, leading to deeper analysis of a stress-dependent modified logarithmic creep model. Within this model, multiple sources of uncertainty were compared. Aleatoric stochastic variation between samples under nominally identical conditions was identified as the primary contributor to uncertainty in creep response. Under any particular set of conditions, the sample-To-sample variability in creep strain was as high as a factor of two, highlighting the engineering importance of characterizing large statistical datasets. The model's extrapolation capabilities were assessed by comparing predictions derived from calibration on partial, shorter-duration subsets of the data. These findings underscore the importance of accounting for stochastic effects in predictive modeling of aging phenomena.

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High-throughput multimodal exploration of a nanocrystalline Cu-Ag library

Thin Solid Films

Dorman, Kyle R.; Bianco, Nathan R.; Kothari, Rishabh S.; Sobczak, Catherine E.; Desai, Saaketh; Custer, Joyce O.; Addamane, Sadhvikas J.; Jain, Manish; Harris, Christian A.; Kotula, Paul G.; Hinojos, Alejandro E.; Rodriguez, Mark A.; Boyce, Brad L.; Dingreville, Remi P.M.; Adams, David P.

Sputter-deposited, nanocrystalline Cu-Ag thin films produced across a broad compositional and deposition-parameter space were evaluated to unravel the process-structure-property relationships important for creating hard, conductive electrical contacts and coatings. Combinatorial deposition involving pulsed direct current magnetron sputtering of elemental targets enabled swift examination of nearly the full range of alloy compositions and a relevant portion of deposition atomistics. Several high-throughput characterization modalities were employed to evaluate the chemistry, structure, and properties of the films. The resultant hardness, modulus, film density, crystal texture, and resistivity were analyzed in terms of key deposition characteristics (incident atom kinetic energy and incidence angle) predicted by binary-collision, kinematic Monte Carlo simulations. The study revealed improved hardness, parabolic resistivity dependence on composition, and compositional and process dependencies of film tarnishing. The results are discussed in the context of variations in microstructure and film density. Transmission electron microscopy and X-ray diffraction demonstrate several forms of compositional variation including solute segregation to grain boundaries as well as periodic, intragranular compositional modulations. Annealing of a Cu-rich alloy film exhibiting grain boundary segregation showed that this as-deposited, compositional variation is not stable above 100 °C. Finally, the Cu-Ag system is shown to have potential for hard, conductive, tarnish-resistant and room temperature-stable nanocrystalline thin films across the composition space.

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Unsupervised physics-informed disentanglement of multimodal data

Foundations of Data Science

Walker, Elise; Trask, Nathaniel; Martinez, Carianne; Lee, Kookjin; Actor, Jonas A.; Saha, Sourav; Shilt, Troy; Vizoso, Daniel; Dingreville, Remi P.M.; Boyce, Brad L.

We introduce physics-informed multimodal autoencoders (PIMA)-a variational inference framework for discovering shared information in multimodal datasets. Individual modalities are embedded into a shared latent space and fused through a product-of-experts formulation, enabling a Gaussian mixture prior to identify shared features. Sampling from clusters allows cross-modal generative modeling, with a mixture-of-experts decoder that imposes inductive biases from prior scientific knowledge and thereby imparts structured disentanglement of the latent space. This approach enables cross-modal inference and the discovery of features in high-dimensional heterogeneous datasets. Consequently, this approach provides a means to discover fingerprints in multimodal scientific datasets and to avoid traditional bottlenecks related to high-fidelity measurement and characterization of scientific datasets.

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BeyondFingerprinting: AI-guided discovery of robust materials & processes

Boyce, Brad L.; Dingreville, Remi P.M.; Adams, David P.; Martinez, Carianne; Fowler, James E.; Pillars, Jamin R.; Wixom, Ryan R.; Moffat, Harry K.; Davis, Warren L.; Ackerman, Sarah; Speed, Ann E.; Garland, Anthony; Roberts, Scott A.; Coleman, Jonathan J.; Delrio, Frank W.; Cillessen, Dale E.; Carroll, J.D.; Najm, Habib N.; Curry, John F.; Johnson, Kyle L.; Dudley, Sarah K.; Addamane, Sadhvikas J.; Henriksen, Amelia; Custer, Joyce O.; Bays, Nathan R.; Desai, Saaketh; Bassett, Kimberly L.; Shilt, Troy; Walker, Elise; Kalaswad, Matias; Shrivastava, Ankit; Babuska, Tomas F.; Kottwitz, Matthew; Fitzgerald, Kaitlynn; Actor, Jonas A.; Das, Niladri; Bianco, Nathan R.; Watkins, Tylan; Dorman, Kyle R.; Jones, Reese E.; Khalil, Mohammad

BeyondFingerprinting was a 2021-2024 Sandia Grand Challenge LDRD exploring the potential to develop new resilient materials and manufacturing processes by taking an artificial-intelligence (AI)-guided approach that integrates human-subject-matter expertise with algorithms enriched with physics-based constraints to unearth process-structure-property correlations. Such algorithms, trained on high-throughput experiments and simulations, are shown to serve as surrogate models that efficiently detect key “fingerprints” in materials data, prognose material performance, and guide effective process improvements. To accelerate broader adoption across mission areas, this AI-guided approach was demonstrated with three complex process-centric exemplars: electroplating, physical vapor deposition, and laser powder bed fusion. Together, these exemplars impact nearly every hardware component relevant to DOE and NNSA national security missions.

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Guided combinatorial synthesis and automated characterization expedites the discovery of hard, electrically conductive PtxAu1-x films

Journal of Vacuum Science and Technology A

Adams, David P.; Kothari, Rishabh; Addamane, Sadhvikas J.; Jain, Manish; Dorman, Kyle R.; Desai, Saaketh; Sobczak, Catherine E.; Kalaswad, Matias; Bianco, Nathan R.; Delrio, Frank W.; Custer, Joyce O.; Rodriguez, Mark A.; Boro, Joseph R.; Dingreville, Remi P.M.; Boyce, Brad L.

Sputter-deposited Pt-Au thin films have been reported to develop a hard, stable, nanocrystalline structure, yet little is known about how these characteristics vary with PtxAu1-x composition and process conditions. Toward this end, this document describes an extensive, combinatorial Pt-Au thin film library including characterized film compositions, structure, and properties. Complemented by kinematic Monte Carlo simulations of codeposition, a broad range of PtxAu1-x compositions (from x ~ 0.02 to 0.93) was first established by sputtering with varied magnetron powers and gun tilt angles. Further, the produced films were subsequently interrogated using automated nanoindentation, x-ray reflectivity, x-ray diffraction, atomic force microscopy, surface profilometry, four-point probe sheet resistance techniques, and wavelength dispersive spectroscopy in order to determine how hardness, modulus, density, surface roughness, structure, and resistivity vary with film stoichiometry and process parameters. Combinatorial films displayed an assortment of properties with the hardness of some films exceeding values reported previously for this material system. High hardness, high modulus, and low resistivity were generally attained when using increased deposition energy and reduced angle-of-incidence processes. Overall, the research identified promising, new PtxAu1-x compositions for future study and pinpointed strategies for improved deposition.

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Triple Junction Segregation Dominates the Stability of Nanocrystalline Alloys

Nano Letters

Barnett, Annie K.; Hussein, Omar; Alghalayini, Maher; Hinojos, Alejandro E.; Nathaniel, James E.; Medlin, Douglas L.; Hattar, Khalid; Boyce, Brad L.; Abdeljawad, Fadi

We present large-scale atomistic simulations that reveal triple junction (TJ) segregation in Pt-Au nanocrystalline alloys in agreement with experimental observations. While existing studies suggest grain boundary solute segregation as a route to thermally stabilize nanocrystalline materials with respect to grain coarsening, here we quantitatively show that it is specifically the segregation to TJs that dominates the observed stability of these alloys. Our results reveal that doping the TJs renders them immobile, thereby locking the grain boundary network and hindering its evolution. In dilute alloys, it is shown that grain boundary and TJ segregation are not as effective in mitigating grain coarsening, as the solute content is not sufficient to dope and pin all grain boundaries and TJs. Our work highlights the need to account for TJ segregation effects in order to understand and predict the evolution of nanocrystalline alloys under extreme environments.

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Structural metamaterials with innate capacitive and resistive sensing

Journal of Materials Science

White, Benjamin C.; Fitzgerald, Kaitlynn M.; Smith, Ryan G.; Niederhaus, John H.J.; Johnson, Kyle L.; Boyce, Brad L.; Dye, Joshua A.

Interpenetrating lattices consist of two or more interwoven but physically separate sub-lattices with unique behaviors derived from their multi-body construction. If the sublattices are constructed or coated with an electrically conducting material, the close proximity and high surface area of the electrically isolated conductors allow the two lattices to interact electromagnetically either across the initial dielectric filled gap or through physical contact. Changes in the size of the dielectric gap between the sub-lattices induced by deformation can be measured via capacitance or resistance, allowing a structurally competent lattice to operate as a force or deformation sensor. In addition to resistive and capacitive deformation sensing, this work explores capacitance as a fundamental metamaterial property and the environmental sensing behaviors of interpenetrating lattices.

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A Workflow for Accelerating Multimodal Data Collection for Electrodeposited Films

Integrating Materials and Manufacturing Innovation

Bassett, Kimberly L.; Watkins, Tylan; Coleman, Jonathan J.; Bianco, Nathan R.; Bailey, Lauren S.; Pillars, Jamin R.; Williams, Samuel G.; Babuska, Tomas F.; Curry, John F.; Delrio, Frank W.; Henriksen, Amelia; Garland, Anthony; Hall, Justin; Boyce, Brad L.; Krick, Brandon A.

Future machine learning strategies for materials process optimization will likely replace human capital-intensive artisan research with autonomous and/or accelerated approaches. Such automation enables accelerated multimodal characterization that simultaneously minimizes human errors, lowers costs, enhances statistical sampling, and allows scientists to allocate their time to critical thinking instead of repetitive manual tasks. Previous acceleration efforts to synthesize and evaluate materials have often employed elaborate robotic self-driving laboratories or used specialized strategies that are difficult to generalize. Herein we describe an implemented workflow for accelerating the multimodal characterization of a combinatorial set of 915 electroplated Ni and Ni–Fe thin films resulting in a data cube with over 160,000 individual data files. Our acceleration strategies do not require manufacturing-scale resources and are thus amenable to typical materials research facilities in academic, government, or commercial laboratories. The workflow demonstrated the acceleration of six characterization modalities: optical microscopy, laser profilometry, X-ray diffraction, X-ray fluorescence, nanoindentation, and tribological (friction and wear) testing, each with speedup factors ranging from 13–46x. In addition, automated data upload to a repository using FAIR data principles was accelerated by 64x.

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Computational modeling of grain boundary segregation: A review

Computational Materials Science

Dingreville, Remi P.M.; Boyce, Brad L.; Hu, Chongze

Nearly all metals, alloys, ceramics, and their associated composites are polycrystalline in nature, with grain boundaries that separate well-defined crystalline regions that influence materials properties. In all but the most pure elemental systems, intentional solutes or impurities are present and can segregate to, or less commonly away from, the grain boundaries, in turn influencing boundary behavior, their stability, and associated materials properties. In some cases, grain-boundary segregation can also trigger “phase-like” structural transitions that dramatically alter the essential nature of the boundary. With the development of advanced electron microscopy techniques, researchers can directly observe grain-boundary structures and segregation with atomic precision. Despite such spatial resolution, the underlying mechanisms governing grain-boundary segregation remain difficult to characterize. As a result, computational modeling techniques such as density functional theory, molecular dynamics, mesoscale phase-field, continuum defect theory, and others are important complementary tools to experimental observations for studying grain-boundary segregation behavior. In conclusion, these computational methods offer the ability to explore the underlying formation mechanisms of grain-boundary segregation, elucidate complex segregation behavior, and provide insights into solutions to effectively controlling microstructure.

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Machine learning for materials science: Barriers to broader adoption

Matter

Boyce, Brad L.; Dingreville, Remi P.M.; Desai, Saaketh; Walker, Elise; Shilt, Troy; Bassett, Kimberly L.; Wixom, Ryan R.; Stebner, Aaron P.; Arroyave, Raymundo; Hattrick-Simpers, Jason; Warren, James A.

Machine learning is on a bit of a tear right now, with advances that are infiltrating nearly every aspect of our lives. In the domain of materials science, this wave seems to be growing into a tsunami. Yet, there are still real hurdles that we face to maximize its benefit. This Matter of Opinion, crafted as a result of a workshop hosted by researchers at Sandia National Laboratories and attended by a cadre of luminaries, briefly summarizes our perspective on these barriers. By recognizing these problems in a community forum, we can share the burden of their resolution together with a common purpose and coordinated effort.

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Results 1–25 of 479
Results 1–25 of 479
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