AutoMat: Accelerated Computational Electrochemical systems Discovery
- URL: http://arxiv.org/abs/2011.04426v4
- Date: Fri, 13 May 2022 17:28:21 GMT
- Title: AutoMat: Accelerated Computational Electrochemical systems Discovery
- Authors: Emil Annevelink, Rachel Kurchin, Eric Muckley, Lance Kavalsky, Vinay
I. Hegde, Valentin Sulzer, Shang Zhu, Jiankun Pu, David Farina, Matthew
Johnson, Dhairya Gandhi, Adarsh Dave, Hongyi Lin, Alan Edelman, Bharath
Ramsundar, James Saal, Christopher Rackauckas, Viral Shah, Bryce Meredig,
Venkatasubramanian Viswanathan
- Abstract summary: Large-scale electrification is vital to addressing the climate crisis, but several scientific and technological challenges remain to fully electrify both the chemical industry and transportation.
New electrochemical materials will be critical, but their development currently relies heavily on human-time-intensive experimental trial and error and computationally expensive first-principles, meso-scale and continuum simulations.
We present an automated workflow, AutoMat, that accelerates these computational steps by introducing both automated input generation and management of simulations across scales from first principles to continuum device modeling.
- Score: 0.7865939710072847
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Large-scale electrification is vital to addressing the climate crisis, but
several scientific and technological challenges remain to fully electrify both
the chemical industry and transportation. In both of these areas, new
electrochemical materials will be critical, but their development currently
relies heavily on human-time-intensive experimental trial and error and
computationally expensive first-principles, meso-scale and continuum
simulations. We present an automated workflow, AutoMat, that accelerates these
computational steps by introducing both automated input generation and
management of simulations across scales from first principles to continuum
device modeling. Furthermore, we show how to seamlessly integrate
multi-fidelity predictions such as machine learning surrogates or automated
robotic experiments "in-the-loop". The automated framework is implemented with
design space search techniques to dramatically accelerate the overall materials
discovery pipeline by implicitly learning design features that optimize device
performance across several metrics. We discuss the benefits of AutoMat using
examples in electrocatalysis and energy storage and highlight lessons learned.
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