Computational Discovery of Fast Interstitial Oxygen Conductors
- Categories: 2024 Publications, Publications
- Tags: Machine Learning, Machine Learning Interatomic Potential, Simulations
Meng, J., Sheikh, M.S., Jacobs, R., Liu, J., Nachlas, W.O., Li, X., and Morgan, D., 2024, Computational Discovery of Fast Interstitial Oxygen Conductors. Nature Materials. https://doi.org/10.1038/s41563-024-01919-8
Aging heat treatment design for Haynes 282 made by wire-feed additive manufacturing using high-throughput experiments and interpretable machine learning
- Categories: 2024 Publications, Publications
- Tags: Interpretable Machine Learning Modeling, Machine Learning
Want, X., Pizano, L.F.P., Sridar, S., Sudbrack, C., and Xiong, W., 2024, Aging heat treatment design for Haynes 282 made by wire-feed additive manufacturing using high-throughput experiments and interpretable machine learning. Science and Technology of Advanced Materials, 25(1). https://doi.org/10.1080/14686996.2024.2346067
Advanced Offshore Hazard Forecasting to Enable Resilient Offshore Operations
- Categories: 2024 Publications, Publications
- Tags: Gradient-Boosted Decision Tree, Machine Learning
Mark-Moser, M., Romeo, L., Duran, R., Bauer, J. R., and K. Rose. April 29, 2024. “Advanced Offshore Hazard Forecasting to Enable Resilient Offshore Operations” [Conference Paper]. Offshore Technology Conference 2024, Houston, Texas. https://doi.org/10.4043/35221-MS
Machine Learning Discrimination and Ultrasensitive Detection of Fentanyl Using Gold Nanoparticle-Decorated Carbon Nanotube-Based Field-Effect Transistor Sensors
- Categories: 2024 Publications, Publications
- Tags: Sensors, Supervised Machine Learning
Shao, W., Sorescu, D.C., Liu, Z., Star, A., 2024, Machine Learning Discrimination and Ultrasensitive Detection of Fentanyl Using Gold Nanoparticle-Decorated Carbon Nanotube-Based Field-Effect Transistor Sensors. Small, 2311835. https://doi.org/10.1002/smll.202311835
Lab Scale Demonstration of Pipeline Third-Party Damage Classification Using Convolutional Neural Networks
- Categories: 2024 Publications, Publications
- Tags: Convolutional Neural Networks, Deep Learning
Bukka, S. R.; Lalam, N.; Bhatta, H.; Wright, R. “Lab Scale Demonstration of Pipeline Third-Party Damage Classification Using Convolutional Neural Networks” [Conference Paper], SPIE Defense + Commercial Sensing, National Harbor, MD, April 24, 2024.
Unconventional Wells Interference: Supervised Machine Learning for Detecting Fracture Hits
Liu, G., Wu, X., and Romanov, V., 2024, Unconventional Wells Interference: Supervised Machine Learning for Detecting Fracture Hits. Applied Sciences 14(7), 2927. https://doi.org/10.3390/app14072927
UNet Performance with Wafer Scale Engine (Optimization Case Study)
- Categories: 2023 Publications, Publications
- Tags: Artificial Intelligence, UNet, Wafer-Scale Engine
Romanov, V. (2023). UNet Performance with Wafer Scale Engine (Optimization Case Study). 2023 IEEE High Performance Extreme Computing Conference (HPEC), 1–6. https://doi.org/10.1109/HPEC58863.2023.10363451
Enhancing knowledge discovery from unstructured data using a deep learning approach to support subsurface modeling predictions
- Categories: 2023 Publications, Publications
- Tags: Artificial Intelligence, Deep Learning, Geospatial, Machine Learning, Subsurface Trend Analysis
Hoover, B., Zaengle, D., Mark-Moser, M., Wingo, P., Suhag, A., and Rose, K., (2023). Enhancing knowledge discovery from unstructured data using a deep learning approach to support subsurface modeling predictions. Frontiers. Big Data 6:1227189. https://doi.org/10.3389/fdata.2023.1227189
Assessing Pore Network Heterogeneity Across Multiple Scales to Inform CO2 Injection Models
- Categories: 2023 Publications, Publications
- Tags: Convolutional Neural Network, Machine Learning, Random Forest, SMART, U-Net Segmentation
Butler, S.K., Barajas-Olalde, C., Yu, X., Mibeck, B.A.F., Burton-Kelly, M.E., Kong, L., Kurz, B., Crandall, D. (2023) Assessing Pore Network Heterogeneity Across Multiple Scales to Inform CO2 Injection Models, International Journal of Greenhouse Gas Control, 130, 104017 https://doi.org/10.1016/j.ijggc.2023.104017
Exploring the formation of gold/silver nanoalloys with gas-phase synthesis and machine-learning assisted simulations
- Categories: 2023 Publications, Publications
- Tags: Deep Learning, Machine Learning, Neural Networks, Simulation
Gromoff, Q., Benzo, P., Saidi, W.A., Andolina, C.M., Casanove, M.J., Hungria, T., Barre, S., Benoit, M., and Lam, J., (2023). Exploring the formation of gold/silver nanoalloys with gas-phase synthesis and machine-learning assisted simulations. Nanoscale, 16(1), 384-393. https://doi.org/10.1039/D3NR04471H
Enhanced CO2 Reactive Capture and Conversion Using Aminothiolate Ligand–Metal Interface
- Categories: 2023 Publications, Publications
- Tags: Machine Learning
Wan, M., Yang, Z., Morgan, H., Shi, J., Shi, F., Liu, M., Wong, H.W., Gu, Z., and Che, F., (2023). Enhanced CO2 Reactive Capture and Conversion Using Aminothiolate Ligand–Metal Interface. Journal of the American Chemical Society, 145(48), 26038-26051. https://doi.org/10.1021/jacs.3c06888
Machine-Learning-Based Rotating Detonation Engine Diagnostics: Evaluation for Application in Experimental Facilities
- Categories: 2023 Publications, Publications
- Tags: Computer Vision, Convolutional Neural Network, Data Acquisition, Machine Learning
Johnson, K. B., Ferguson, D., and Nix, A., (2023). Machine-Learning-Based Rotating Detonation Engine Diagnostics: Evaluation for Application in Experimental Facilities. Journal of Propulsion and Power, 1-14. https://doi.org/10.2514/1.B39287
Adversarial Ensemble Modeling of Multi-modal Mechanical Properties for Iron-Based Alloys
- Categories: 2022 Publications, Publications
- Tags: Adversarial Ensemble Modeling, Alloys, Artificial Intelligence
Romanov, V., (2022). Adversarial Ensemble Modeling of Multi-modal Mechanical Properties for Iron-Based Alloys. JOM, 74(4). https://doi.org/10.1007/s11837-022-05163-w
Reinforcement learning for online adaptation of model predictive controllers: Application to a selective catalytic reduction unit
- Categories: 2022 Publications, Publications
- Tags: Modeling, Process Systems Engineering, Reinforcement Learning
Hedrick, E., Hedrick, K., Bhattacharyya, D., Zitney, S.E., & Omell, B., (2022). Reinforcement learning for online adaptation of model predictive controllers: Application to a selective catalytic reduction unit, Computers & Chemical Engineering, 160, ISSN 0098-1354, https://doi.org/10.1016/j.compchemeng.2022.107727
Applied machine learning model comparison: Predicting offshore platform integrity with gradient boosting algorithms and neural networks
- Categories: 2022 Publications, Publications
- Tags: Machine Learning, Neural Network, Offshore
Dyer, A.S., Zaengle, D., Nelson, J.R., Duran, R., Wenzlick, M., Wingo, P.C., Bauer, J.R., Rose, K., & Romeo, L. (2022). Applied machine learning model comparison: Predicting offshore platform integrity with gradient boosting algorithms and neural networks. Marine Structures, 83. https://doi.org/10.1016/j.marstruc.2021.103152
Simulation microstructure evolution in Ni-YSZ electrodes of solid oxide cells under operating conditions
- Categories: 2022 Publications, Publications
- Tags: Modeling, Phase Field Simulation, Solid Oxide Fuel Cells
Lei, Y., Epting, W., Mason, J., Cheng, T., Abernathy, H., Hackett, G., & Wen, Y., (2022). Simulation microstructure evolution in Ni-YSZ electrodes of solid oxide cells under operating conditions. TMS 2022 151st Annual Meeting & Exhibition Supplemental Proceedings, The Minerals, Metals, & Materials Series. Springer Cham, 457-469, https://doi.org/10.1007/978-3-030-92381-5_42
Simulating microstructure evolution in Ni-YSZ electrodes of solid oxide cells under operating conditions
- Categories: 2022 Publications, Publications
- Tags: Modeling, Phase Field Simulation, Solid Oxide Fuel Cells
Lei, Y., Epting, W., Mason, J., Cheng, T., Abernathy, H., Hackett, G., & Wen, Y., (2022). Simulating microstructure evolution in Ni-YSZ electrodes of solid oxide cells under operating conditions. TMS 2022 151st Annual Meeting & Exhibition Supplemental Proceedings, The Minerals, Metals, & Materials Series. Springer Cham, 457-469, https://doi.org/10.1007/978-3-030-92381-5_42
Benefit Analysis of CO2 Delivery Options for Offshore Storage or Enhanced Oil Recovery
- Categories: 2022 Publications, Publications
- Tags: Reduced order Modeling, Regression Analysis, Storage Infrastructure
Shih, C., Lin, S., Milligan, M., Wendt, A., Marquis, M., Eppink, J., & Grant, T., (2022), Benefit Analysis of CO2 Delivery Options for Offshore Storage or Enhanced Oil Recovery, National Energy Technology Laboratory, DOE/NETL-2022/3792, Pittsburgh, PA.
Latent Learning with pyroMind.2020
- Categories: 2021 Publications, Publications
- Tags: Artificial Intelligence, Big Data, Latent Learning
Romanov, V., (2021). Latent Learning with pyroMind.2020. 2021 IEE International Conference on Big Data, pp. 4624-4627, https://doi.org/10.1109/BigData52589.2021.9671643
Machine learning accelerated discrete element modeling of granular flows
- Categories: 2021 Publications, Publications
- Tags: Discrete Element Modeling, Machine Learning, Neural Network
Lu, L., Gao, X., Dietiker, J.F., Shahnam, M., & Rogers, W.A. (2021). Machine learning accelerated discrete element modeling of granular flows. Chemical Engineering Science, 245. https://doi.org/10.1016/j.ces.2021.116832
Machine learning approach to transform scattering parameters to complex permittivities
- Categories: 2021 Publications, Publications
- Tags: Machine Learning, Neural Network, Supervised Learning
Tempke, R., Thomas, L., Wildefire, C., Shekhawat, D., & Musho, T., (2021). Machine learning approach to transform scattering parameters to complex permittivities. Journal of Microwave Power and Electromagnetic Energy, 55(4), 287-302, https://doi.org/10.1080/08327823.2021.1993046
Machine-Learning Microstructure for Inverse Material Design
- Categories: 2021 Publications, Publications
- Tags: Alloy Design, Inverse Problem, Machine Learning
Pei, Z., Rozman, K.A., Dogan, O.N., Wen, Y., Gao, N., Holm, E.A., Hawk, J.A., Alman, D.E., & Gao, M.C., (2021). Machine-Learning Microstructure for Inverse Material Design. Advanced Science, 8(23). https://doi.org/10.1002/advs.202101207
Neural network-based order parameter for phase transitions and its applications in high-entropy alloys
- Categories: 2021 Publications, Publications
- Tags: Alloys, Computational Methods, Neural Network
Yin, J., Pei, Z., & Gao, M.C., (2021). Neural network-based order parameter for phase transitions and its applications in high-entropy alloys. Nature Computational Science, 1, 686-693. https//doi.org/10.1038/s43588-021-00139-3
Predicting temperature-dependent ultimate strengths of body-centered-cubic (BCC) high-entropy alloys
- Categories: 2021 Publications, Publications
- Tags: Alloys, Computational Methods, Machine Learning
Steingrimsson, B., Fan, X., Yang, X., Gao, M.C., Zhang, Y., & Liaw, P.K., (2021). Predicting temperature-dependent ultimate strengths of body-centered-cubic (BCC) high-entropy alloys. npj Computational Materials, 7, 152. https://doi.org/10.1038/s41524-021-00623-4
Machine learning-informed ensemble framework for evaluating shale gas production potential: Case study in the Marcellus Shale
Vikara, D., Remson, D., & Khanna, V., (2020). Machine learning-informed ensemble framework for evaluating shale gas production potential: Case study in the Marcellus Shale. Journal of Natural Gas Science and Engineering, 84(12). https://doi.org/10.1016/j.jngse.2020.103679
Predicting Geologic Behavior in Carbon Storage Projects Using Graph Neural Network
- Categories: 2024 Presentations, Presentations
Shih, C. Y., Holcomb, P., Liu, G., Siriwardane, H., Sethi, H., Nabian, M. (2024, March 20). Predicting Geologic Behavior in Carbon Storage Projects Using Graph Neural Network [Conference presentation]. 2024 GTC AI Conference. San Jose, CA.
Modeling the Cost of Onshore CO2 Pipeline Transport and Onshore CO2 Saline Storage
- Categories: 2024 Presentations, Presentations
Morgan, D., Sheriff, A., Mark-Moser, M. K., Liu, G., Grant, T., Creason, C., Vikara, D., Cunha, L. (2024, March 13). Modeling the Cost of Onshore CO2 Pipeline Transport and Onshore CO2 Saline Storage [Conference presentation]. CCUS 2024. Houston, TX. https://www.osti.gov/biblio/2328141
An Insight-Centric Paradigm for Data Reduction and Inference Speed Improvement at the Scurry Area Canyon Reef Operator’s Committee (SACROC) Unit
- Categories: 2024 Presentations, Presentations
Shih, C. Y., Wu, X., Liu, G., Siriwardane, H. (2024, March 11). An Insight-Centric Paradigm for Data Reduction and Inference Speed Improvement at the Scurry Area Canyon Reef Operator’s Committee (SACROC) Unit [Conference presentation]. CCUS 2024. Houston, TX. https://www.osti.gov/biblio/2324889
Physics-informed creep rupture life modeling of high temperature alloys for energy applications
- Categories: 2024 Presentations, Presentations
Wenzlick, M., Trehern, W., Soares Chinen, A., Gao, M., Saidi, W. (2024, March 4). Physics-informed creep rupture life modeling of high temperature alloys for energy applications [Conference presentation]. Minerals, Metals, and Materials Society (TMS) Conference 2024. Orlando, FL.
Complementing the CCS Class VI Well Permit Process with DOE-NETL’s SMART Initiative Tools & Workflows
- Categories: 2024 Presentations, Presentations
Siriwardane, H., Viswanathan, H., Hosseini, S. (2024, February 27). Complementing the CCS Class VI Well Permit Process with DOE-NETL’s SMART Initiative Tools & Workflows [Conference presentation]. Ground Water Protection Council (GWPC) 2024 Underground Injection Control (UIC) Conference. Oklahoma City, OK.
Quantifying Fracture Networks in CO2 Injection Zones: An Unsupervised Machine Learning Approach
- Categories: 2024 Presentations, Presentations
Harbert, W., Myshakin, E., Liu, G., Siriwardane, H. (2024, January 11). Quantifying Fracture Networks in CO2 Injection Zones: An Unsupervised Machine Learning Approach [Conference presentation]. Machine Learning in Solid Earth Geoscience Conference. Santa Fe, NM.
A Machine Learning Approach For Well Integrity Prediction Using Cement Bond Logs
- Categories: 2023 Presentations, Presentations
Grabowski, O., Houghton, B., Pfander, I., Dilmore, R., Lackey, G. (2023, October 17). A Machine Learning Approach for Well Integrity Prediction Using Cement Bond Logs [Conference presentation]. Geological Society of America Annual Meeting. Pittsburgh, PA. https://www.netl.doe.gov/energy-analysis/details?id=a8f6f8e3-954d-415c-b8af-06eda014050c
Carbon Storage Technical Viability Approach (CS TVA): Multi-Factor Data Assessment Workflow to Determine Geologic Sequestration Feasibility
- Categories: 2023 Presentations, Presentations
Mulhern, J., Mark-Moser, M. K., Creason, C., Shay, J., Rose, K. (2023, October 15). Carbon Storage Technical Viability Approach (CS TVA): Multi-Factor Data Assessment Workflow to Determine Geologic Sequestration Feasibility [Conference presentation]. Geological Society of America Annual Meeting. Pittsburgh, PA.
Process Cycle Modeling with AI
- Categories: 2023 Presentations, Presentations
Romanov, V. (2023, October 1). Process Cycle Modeling with AI [Conference Presentation]. Materials Science & Technology (MS&T) 2023 Annual Meeting. Columbus, OH. https://www.osti.gov/servlets/purl/2337518.
An Introduction to NETL’s Science-based AI/ML Institute
- Categories: 2021 Presentations, Presentations
An Introduction to NETL’s Science-based AI/ML Institute [Presentation], (2021, May 13). https://netl.doe.gov/sites/default/files/netl-file/21AIML_Rose_0.pdf