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Autonomous materials synthesis via hierarchical active learning of non-equilibrium phase diagrams

ORAL

Abstract

Autonomous experimentation enabled by artificial intelligence (AI) offers a new paradigm for accelerating scientific discovery. Non-equilibrium materials synthesis is emblematic of complex, resource-intensive experimentation whose acceleration would be a watershed for materials discovery and development. The mapping of non-equilibrium synthesis phase diagrams has recently been accelerated via high throughput experimentation but still limits materials research because the parameter space is too vast to be exhaustively explored. We demonstrate accelerated synthesis and exploration of metastable materials through hierarchical autonomous experimentation governed by the Scientific Autonomous Reasoning Agent (SARA). SARA integrates robotic materials synthesis and characterization along with a hierarchy of AI methods that efficiently reveal the structure of processing phase diagrams. SARA designs lateral gradient laser spike annealing (lg-LSA) experiments for parallel materials synthesis and employs optical spectroscopy to rapidly identify phase transitions. Efficient exploration of the multi-dimensional parameter space is achieved with nested active learning (AL) cycles built upon advanced machine learning models that incorporate the underlying physics of the experiments as well as end-to-end uncertainty quantification. With this, and the coordination of AL at multiple scales, SARA embodies AI harnessing of complex scientific tasks. We demonstrate its performance by autonomously mapping synthesis phase boundaries for the Bi2O3 system, leading to orders-of-magnitude acceleration in establishment of a synthesis phase diagram that includes conditions for kinetically stabilizing δ-Bi2O3 at room temperature, a critical development for electrochemical technologies such as solid oxide fuel cells.

Publication: https://arxiv.org/abs/2101.07385

Presenters

  • Maximilian Amsler

    Cornell University, University of Basel

Authors

  • Maximilian Amsler

    Cornell University, University of Basel

  • Sebastian Ament

    Cornell University

  • Duncan Sutherland

    Cornell University

  • Ming-Chiang Chang

    Cornell University

  • Dan Guevarra

    Caltech, Division of Engineering and Applied Science, California Institute of Technology, Pasadena, CA, USA

  • Aine Connolly

    Cornell University

  • John M Gregoire

    Caltech, Division of Engineering and Applied Science, California Institute of Technology, Pasadena, CA, USA

  • Michael O Thompson

    Cornell University

  • Bruce van Dover

    Cornell University

  • Carla P Gomes

    Cornell, Cornell University, Department of Computer Science, Cornell University, Ithaca, NY, USA