Month: August 2022

3D Printing Focused Industry-University Collaborative Research Center Reunites at Tech Park

from IPB Tech Park

Anson Ma welcomes SHAP3D Board
Anson Ma welcomes SHAP3D Industrial Advisory Board Meeting attendees.

SHAP3D held their eighth bi-annual Industrial Advisory Board Meeting on May 25 – May 26, 2022, at the Innovation Partnership Building (IPB) | UConn Tech Park.

“It is wonderful to reunite with the SHAP3D family and interact with new center members for the first time in person since they have joined after the pandemic began,” says Prof. Anson Ma, UConn Site Director of the SHAP3D center.

SHAP3D is a collaboration between the University of Massachusetts Lowell, University of Connecticut and Georgia Institute of Technology to create a National Science Foundation I/UCRC focused on 3D printing. The mission of the SHAP3D Center is to perform pre-competitive research providing the fundamental knowledge for 3D printing heterogeneous products that integrate multiple engineering materials with complex 3D structures and diverse functionality. The Center’s diverse membership comprises material developers, 3D printer manufacturers, 3D printing end users, and federal agencies with a stake in the growth of this emerging manufacturing platform.

SHAP3D Industrial Advisory Board Meeting
Faculty members, students, and representatives from private companies, and government agencies attended the event.

The meeting was attended by more than 55 faculty members, students, and representatives from private companies, and government agencies. At this meeting, project teams currently funded by the SHAP3D center shared their progress and latest findings. Other highlights of the meeting included rapid fire presentations from members and two invited talks by Professor Timothy Long from the Arizona State University and Professor Matthew Becker from Duke University. UConn SHAP3D site, Proof of Concept Center (POCC), and Pratt & Whitney Additive Manufacturing Center (PW AMC) were all featured in the IPB lab tour. During the reception sponsored by UConn School of Engineering, students who are involved in SHAP3D projects also had the valuable opportunity to present their posters and network with the advisory board members.

Using Machine Learning to Identify Promising Polymer Membranes

Ying Li
Dr. Ying Li

Polymer membranes are commonly used in industry for the separation of gases like CO2 from flue gas and methane from natural gas. Over several decades, researchers have been studying various polymers to improve their permeability and usefulness but have hit a roadblock when it comes to testing them all in a quick and efficient manner. In a recent publication in Science Advances, UConn Assistant Professor of Mechanical Engineering Ying Li,  University of Connecticut (UConn) Centennial Professor of Chemical and Biomolecular Engineering Jeff McCutcheon; UConn researchers Lei Tao, Jinlong He; and researcher Jason Yang from California Institute of Technology have found an innovative new way to use machine learning (ML) to test and discover new polymer membranes.

Through investigation, the authors remark on the currently Edisonian approach to membrane design: “In the decades of technological development in the membrane science field, design of new membrane materials has been, and remains, a largely trial-and-error process, guided by experience and intuition. Current approaches generally involve tuning chemical groups to increase affinity and solubility towards the desired gas or incorporating greater free volume to increase overall diffusivity.”

As an alternative method to tedious experiments, computational models can be used to predict membrane performance. However, they are either too expensive, or low accuracy caused by the simplified approximations. To address this shortcoming, the team developed an accurate way to identify new, high-performing polymers using ML methods.

Using multiple fingerprint features and fixed chemical descriptors, the team used deep learning on a small dataset to link membrane chemistry to membrane performance. Traditionally, RF (Random Forest) models are known to work best on small data sets, but the team found that deep neural networks worked well because of the use of ensembling, which combines prediction from multiple models.

Jeffrey McCutcheon
Dr. Jeffrey McCutcheon

Further, the team found that the ML model was capable of discovering thousands of polymers with performance predicted to exceed the Robeson upper bound, which is a standard used to define the permeability and selectivity trade-off for polymer gas-separation membranes. In addition, discovered polymers with ultrahigh permeability would allow for industry to perform gas separations with higher throughput, while maintaining a high level of selectivity.

The researchers summarize, “Ultimately, we provide the membrane design community with many novel high-performance polymer candidates and key chemical features to consider when designing their molecular structures. Lessons from the workflow demonstrated in this study can likely serve as a guide for other materials discovery and design tasks, such as polymer membranes for desalination and water treatment, high-temperature fuel cells, and catalysis. With the continual improvement of ML techniques and an increase in computing power, we expect that ML-assisted design frameworks will only gain popularity and deliver increasingly substantial results in materials discovery for a wide range of applications.”

This project is funded in whole or in part with funds from the the Air Force Office of Scientific Research through the Air Force’s Young Investigator Research Program (FA9550-20-1-0183; program manager: M.-J. Pan); National Science Foundation (CMMI-1934829 and CAREER Award CMMI-2046751); 3M’s Non-Tenured Faculty Award; National Alliance for Water Innovation (NAWI), under Funding Opportunity Announcement Number DE-FOA-0001905 of U.S. Department of Energy.