These awards bring Sandia’s total to 150 since 1976.
“These excellent achievements further Sandia’s mission and demonstrate the impact that innovative research and development like your endeavors have produced,” said Chief Research Officer Doug Kothe, associate laboratories director for Advanced Science and Technology.
The R&D 100 Awards, in its 61st year, is a globally prestigious recognition of invention and innovation. It claims entries this year from 15 countries and regions and is sponsored by R&D World Magazine. Honors go to researchers deemed to have developed the year’s 100 most outstanding advances in applied technologies, in the judgment of the magazine’s editors and expert panels.
The awards focus on practical impact rather than pure research and reward entrants on their products’ design, development, testing and production.
The winning applications were announced in late August.
Sandia’s R&D 100 selected projects for 2023:
Analytical/Test – Winner
PRE-SYMPTOMATIC CHEMICAL DETECTION OF SEIZURE EVENTS — The Pre-Symptomatic VOC Detector of Seizure Events is a portable instrument that can alert the wearer to an imminent seizure more than 20 minutes before it occurs. Watch video.
This invention improves the lives of people with epilepsy. The wearable detector identifies skin-emitted gasses that indicate an episode is imminent. A feat never before accomplished by technology — some dogs do it naturally, with the drawback they have to be present at the right time — the detector’s pre-symptomatic warning enables the wearer to seek shelter and to communicate with family and health care providers before the seizure occurs. This dramatically lessens the stress of those formerly at the mercy of these unpredictable events.
The device when commercialized will function by constantly sampling gasses emitted from the wearer’s skin and analyzing them automatically without the wearer’s input or engagement. Upon detection of volatile organic compounds specific to seizures, the device will alert both the wearer and their care circle.
The instrument comprises several system devices made in Sandia’s silicon microfabrication facility. A chemical pre-concentrator collects and stores the volatile organic compounds. Chemical separation takes place in a two-dimensional micro gas chromatography device. Detection is performed with a miniature ion mobility spectrometer. When these components are combined at a system level, their total volume — about that of a midsize novel — and weight — 1.5 pounds with battery — are amenable to being worn on the body.
This project has roots in MicroChemLab, Sandia’s first Laboratory Directed Research and Development Grand Challenge.
Philip Rocco Miller, principal investigator; Gary Arnold (external collaborator)
Software/Services – Winner
META OPTICS STUDIO — This software package enables the rapid design and optimization of large-scale meta-optics for integration into optical imaging systems. Watch video.
META Optics is a software package built for the design, simulation and optimization of flat meta-surfaces, which are artificial structures used to engineer the light wavefront for enhanced focusing, phase correction and removal of aberrations. If designed correctly, a metalens can perform the function of a highly focusing, high-speed traditional lens while being a fraction of its weight and absolutely flat. This has revolutionized the field of optical imaging and extended its possibilities by severely reducing size, weight and power requirements while extending the imaging resolution to well below the subwavelength limit. META Optics Studio is the only known software capable of simulating a centimeter-sized meta-surface at nanometer resolution within a few hours.
The project developed out of the Metamaterial Science and Technology Laboratory Directed Research and Development Grand Challenge from 2009-2011, and funding from Defense Advanced Research Projects Agency.
Ihab El-Kady, principal investigator; Denis Ridzal; Timothy Wilde; Edgar Bustamante; David Fitzpatrick (external collaborator); Ryan Chilton (external collaborator); Mehmet F. Su (external collaborator)
Software/Services – Winner
MATERIALS LEARNING ALGORITHMS — This software framework uses machine learning to predict the electronic structure of materials faster and at greater scales than what was previously feasible. Watch video.
The Materials Learning Algorithms is a software framework that uses machine learning to predict the electronic structure of materials. Electronic structure is fundamental for understanding virtually all molecular and material properties. The software enables these calculations at length and time scales that were previously unfeasible.
Density functional theory, for which the Nobel Prize was awarded in 1998 is the most heavily used approach for electronic structure calculations. However, the method is complex, expensive and limited to small scales because the computation cost increases cubically with the system size. Machine Learning Algorithms is focused on solving the limitations of density functional theory using machine learning.
The key questions that the software addresses are, “Can machine learning help accelerate these first-principle electronic structure calculations?” and “Can this approach be more scalable with respect to system size?” The methods developed in the framework answer both these questions in the affirmative, demonstrating a 5,000-time speedup on systems feasible with DFT.
Materials Learning Algorithms was primarily funded out of a Computing and Information Sciences LDRD project, “Accelerating Multiscale Materials Modeling with Machine Learning,” which ended in 2022.
Sivasankaran Rajamanickam, principal investigator; Attila Cangi, principal investigator (external collaborator); Normand Modine; Aidan Thompson; Jon Vogel; Adam Stephens; Lenz Fiedler (external collaborator)
Software/Services – Winner
MATERIALS DATA-DRIVEN DESIGN — This project enables manufacturers to account for the internal structure of materials when shaping and forming a part for the first time by leveraging a proprietary deep learning model. Watch video.
MAD3 is an innovative software that leverages the power of machine learning to modernize the forming and stamping processes of sheet metals. It predicts the parameters that characterize the directional mechanical behavior of a metal alloy 1,000 times faster than existing solutions. As a result, the software significantly reduces expensive and time-consuming forming and stamping trials.
More explicitly, metal alloys such as aluminum or steel used in various manufacturing processes like stamping and forming exhibit directional strength and formability that cause the metal to distort. The reaction, called plastic anisotropy, determines whether the material is capable of being shaped to the desired component fit and finish, and whether it will withstand the applied performance load. As a result, accurate predictions of the metal’s plastic anisotropy are crucial in major manufacturing and supported by automotive and aerospace metal manufacturers as well as suppliers.
However, the cost of characterizing plastic anisotropy has skyrocketed because characterization requires specialized equipment and significant technical expertise. The software uses state-of-the-art data-driven and machine-learning techniques to first extract a unique fingerprint descriptor of the metal alloy’s internal structure, then subsequently uses these descriptors to predict the plastic anisotropy parameters in an accurate and efficient manner.
These anisotropy parameters can be used to perform forming and stamping simulations with unprecedented accuracy since they incorporate the effect of the polycrystalline grain structure.
David Montes de Oca Zapiain, principal investigator; Hojun Lim, principal investigator; Benjamin Greene; Taejo on Park (external collaborator)
Market Disruptor / Services – Silver medal
PowerModelsONM: OPTIMIZING OPERATIONS OF NETWORKED MICROGRIDS FOR RESILIENCE — Utilities can use PowerModelsONM to plan for networked microgrids to support rapid recovery during extreme-event-induced grid outages model. Watch video.
PowerModelsONM software optimizes networked microgrids for power restoration during blackouts and other extreme events. It is the only physics-based optimization software package featuring networked microgrids for modeling restoration of electric power distribution feeders.
Utilities can use PowerModelsONM to plan for networked microgrids to support rapid recovery during extreme-event-induced grid outages. Superior validation is achieved using utility data sets for software simulation and hardware-in-the-loop experiments. Sandia is a partner on PowerModelsONM with Los Alamos National Laboratory, National Renewable Energy Laboratory and National Rural Electric Cooperative Association.
Matthew Reno, principal investigator. Trupal Patel; Adam Summers; Ronald Matthews; Dan Kelly
Process/Prototype – Winner
ELECTRO3D — Electro3D allows for new and exciting possibilities in the world of electrochemical metal 3D printing. Not only does it allow users to print materials into less extreme environments, but it eliminates cost and transport limitations that no other technology can offer. With Electro3D, 3D metal printing can enable endless new possibilities for users. Watch video.
Electro3D is an additive process that leverages fluidics with electrochemistry to produce high-quality materials and parts rapidly. The technology could serve many sectors, especially printed electronics, because materials such as copper can be printed at the room temperatures and pressures at which Electro3D performs.
The process also can be used to analyze and even build materials through an electrodeposition printhead that reduces mass transport losses. The printhead attached to commercial robots or 3D printing stages has the potential to be a more energy-efficient and economical pathway to generate materials and parts than currently available methods. The technology is scalable, deployable and has the potential to print multimaterials (metals, semiconductor, polymers) with rapid transition.
The custom printhead dramatically increases the replenishment rate of the electrolyte in the deposition area, which improves the uniformity and rate of the material deposited. The deposition is controlled by tuning the fluidics, current and voltage that drive the electrodeposition reaction. This information is fed into a feedback loop that moves the printhead based on real-time feedback of deposition conditions, which is critical to achieve the desired material properties and geometry of the part.
This work is rooted in “Advanced Manufacturing Techniques of Thermoelectric Modules,” a recent Laboratory Directed Research and Development project.
Karl Walczak, principal investigator; Brian Perdue; Adam Cook; Jonathan Height; Jon Coleman; Jesse Duran (former Sandia intern); Jakob Graham Bates (former Sandia intern); Garrett Williams (former Sandia intern)