2023 AIChE Annual Meeting
PAL 2.0: A Physics-Driven Machine Learning Algorithm for Material Discovery
This poster introduces PAL 2.0, a machine learning method that combines a physics-based surrogate model with Bayesian optimization. The key contributing factor of our proposed framework is the ability to create a physics-based hypothesis using XGBoost and Neural Networks. This hypothesis provides a physics-based âpriorâ (or initial beliefs) to a Gaussian process model, which is then used to perform a search of the material design space. We demonstrate the usefulness of our approach on three test cases: (1) discovery of metal halide perovskites with desired photovoltaic properties, (2) design of metal halide perovskite-solvent pairs that produce the best solution-processed films and (3) design of organic thermoelectric semiconductors.
The two most compelling results of PAL 2.0 are that we:
1. Demonstrate superior optimization performance, finding the optimal target within the lowest number of iterations as compared to state-of-the-art models such as Genetic Algorithms, an off-the-shelf Bayesian optimization package, SMAC, as well as one-hot-encoded Gaussian Process models for material discovery; and
2. Provide a predictive physics-informed model for the material space, offering valuable chemical insight.
To the best of our knowledge, PAL 2.0 is the first computational materials discovery framework that utilizes predictive, physics-based surrogate models within a Bayesian optimization framework by combining feature engineering and material space modeling.