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Meeting 2020 TMS Annual Meeting & Exhibition
Symposium Expanding the Boundaries of Materials Science: Unconventional Collaborations
Presentation Title Additive Manufacturing for Novel Thermal Devices
Author(s) Scott N. Roberts, Ben Furst, Stefano Cappucci, Takuro Daimaru, Eric Sunada
On-Site Speaker (Planned) Scott N. Roberts
Abstract Scope Through a partnership of thermal, mechanical, nuclear, and materials engineers we have developed a novel technique for integrating two-phase thermal management systems into spacecraft structures. We increased performance and decreased mass, both by an order of magnitude. The fundamental breakthrough has been the development of an additive manufacturing method to create controlled stochastic porosity alongside non-porous regions within a single build. While the technique was initially developed by the Materials & Manufacturing team for the Thermal Technology group, it has continued to grow in use by exposure to other diverse sets of engineers who have come up with applications such as filters, ice grippers, vibration isolators, compliant mechanisms, remote sensing devices, capillary flow devices, and more.
Proceedings Inclusion? Planned: Supplemental Proceedings volume

OTHER PAPERS PLANNED FOR THIS SYMPOSIUM

Accelerating Materials Design Through Community, Open Data and Collaboration
Additive Manufacturing for Novel Thermal Devices
Convergence: Supporting Multidisciplinary Research at the National Science Foundation
Creating the Next-Generation Materials Genome Initiative Workforce
Innovation in Materials Research Collaborations: DOE Basic Energy Sciences
Integrating Experiment, Data, and Computations to Accelerate the Design of Materials
Machine Learning for Materials Design and Discovery
Mechanical Properties of Molecular Crystals--Connecting with Chemistry
Regularization of Materials Failure Data for Damage Mechanism Categorization by Machine Learning

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