Using Data Science Tools to Discover New Nanostructured Materials
Oct. 28, 2013 — Researchers
at Columbia Engineering, led by Chemical Engineering Professors Venkat
Venkatasubramanian and Sanat Kumar, have developed a new approach to
designing novel nanostructured materials through an inverse design
framework using genetic algorithms. The study, published in the October
28 Early Online edition of Proceedings of the National Academy of Sciences (PNAS),
is the first to demonstrate the application of this methodology to the
design of self-assembled nanostructures, and shows the potential of
machine learning and "big data" approaches embodied in the new Institute
for Data Sciences and Engineering at Columbia.
Phase diagram showing the cluster formations predicted by GA and their validation (squares). (Credit: Columbia Engineering)
"Our framework can help speed up the materials discovery process,"
says Venkatasubramanian, Samuel Ruben-Peter G. Viele Professor of
Engineering, and co-author of the paper. "In a sense, we are leveraging
how nature discovers new materials -- the Darwinian model of evolution
-- by suitably marrying it with computational methods. It's Darwin on
steroids!"
Using a genetic algorithm they developed, the researchers designed
DNA-grafted particles that self-assembled into the crystalline
structures they wanted. Theirs was an "inverse" way of doing research.
In conventional research, colloidal particles grafted with
single-stranded DNA are allowed to self-assemble, and then the resulting
crystal structures are examined. "Although this Edisonian approach is
useful for a posteriori understanding of the factors that govern
assembly," notes Kumar, Chemical Engineering Department Chair and the
study's co-author, "it doesn't allow us to a priori design these
materials into desired structures. Our study addresses this design issue
and presents an evolutionary optimization approach that was not only
able to reproduce the original phase diagram detailing regions of known
crystals, but also to elucidate previously unobserved structures."
The researchers are using "big data" concepts and techniques to
discover and design new nanomaterials -- a priority area under the White
House's Materials Genome Initiative -- using a methodology that will
revolutionize materials design, impacting a broad range of products that
affect our daily lives, from drugs and agricultural chemicals such as
pesticides or herbicides to fuel additives, paints and varnishes, and
even personal care products such as shampoo.
"This inverse design approach demonstrates the potential of machine
learning and algorithm engineering approaches to challenging problems in
materials science," says Kathleen McKeown, director of the Institute
for Data Sciences and Engineering and Henry and Gertrude Rothschild
Professor of Computer Science. "At the Institute, we are focused on
pioneering such advances in a number problems of great practical
importance in engineering."
Venkatasubramanian adds, "Discovering and designing new advanced
materials and formulations with desired properties is an important and
challenging problem, encompassing a wide variety of products in
industries addressing clean energy, national security, and human
welfare." He points out that the traditional Edisonian trial-and-error
discovery approach is time-consuming and costly -- it can cause major
delays in time-to-market as well as miss potential solutions. And the
ever-increasing amount of high-throughput experimentation data, while a
major modeling and informatics challenge, has also created opportunities
for material design and discovery.
The researchers built upon their earlier work to develop what they
call an evolutionary framework for the automated discovery of new
materials. Venkatasubramanian proposed the design framework and analyzed
the results, and Kumar developed the framework in the context of
self-assembled nanomaterials. Babji Srinivasan, a postdoc with
Venkatasubramanian and Kumar and now an assistant professor at IIT
Gandhinagar, and Thi Vo, a PhD candidate at Columbia Engineering,
carried out the computational research. The team collaborated with Oleg
Gang and Yugang Zhang of Brookhaven National Laboratory, who carried out
the supporting experiments.
The team plans to continue exploring the design space of potential
ssDNA-grafted colloidal nanostructures, improving its forward models,
and bring in more advanced machine learning techniques. "We need a new
paradigm that increases the idea flow, broadens the search horizon, and
archives the knowledge from today's successes to accelerate those of
tomorrow," says Venkatasubramanian.
This research has been funded by a $1.4 million three-year grant from the U.S. Department of Energy.
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