Closed-loop discovery of out-of-distribution processing protocols by evolutionary search and uncertainty-aware learning

AI in healthcare
Published: arXiv: 2606.13859v1
Authors

Yu Liu Stanislav Udovenko Ching-Che Lin Jaegyu Kim Lane W. Martin Susan Trolier-McKinstry Sergei V. Kalinin

Abstract

Many materials and chemical systems exhibit history-dependent responses, where functional outcomes are governed not only by final-state variables but by the time-dependent sequence of fields, temperatures, or chemical potentials applied during operation. Discovering new processing protocols is therefore a high-dimensional search problem in which the control variable is an entire waveform or sample history, and conventional strategies either remain confined to conservative interpolative families or become prohibitively measurement intensive. Here, a closed-loop workflow is introduced that couples evolutionary search over a compact waveform representation with uncertainty-aware deep kernel learning to generate, rank, and experimentally validate candidate protocols. Applied to ferroelectric thin films, with the scanning-probe tip-bias waveform as the protocol and the nonlinear electromechanical response as the reward, the workflow discovers waveform families that enhance nonlinearity by de-aging the film. Spatially resolved before/after measurements show that the best-performing waveforms selectively activate pre-existing, weakly pinned domain-wall segments, whereas the worst drive long-range irreversible switching. This framework reframes protocol tuning as out-of-distribution discovery, generalizable to synthesis and annealing trajectories, battery formation protocols, and other high-dimensional control problems.

Paper Summary

Problem
The main problem this research paper addresses is the challenge of discovering effective new protocols for materials optimization, particularly in high-dimensional discovery problems where the control variable is an entire waveform or sample history. This is a common issue in various fields, including materials science, chemistry, and functional materials, where the functionality of materials is governed not only by composition and equilibrium structure but also by history.
Key Innovation
The key innovation of this work is a closed-loop workflow that couples an evolutionary search with uncertainty-aware deep kernel learning to generate, rank, and experimentally validate candidate protocols efficiently. This framework enables the discovery of genuinely new protocols, beyond refining existing ones, and addresses the challenges of high-dimensional discovery problems, experimentally noisy measurements, and strong state-dependence.
Practical Impact
The practical impact of this research is significant, as it provides a general route for autonomous design of driving protocols in scanning-probe microscopy and machine-guided discovery of dynamic control strategies in functional materials. The framework can be applied to various fields, including materials science, chemistry, and functional materials, to optimize their performance and discover new protocols. Specifically, the research demonstrates the effectiveness of this framework in optimizing the nonlinear response of ferroelectric films, which can lead to in-situ recovery of the extrinsic piezoelectric response and lower-voltage device operation.
Analogy / Intuitive Explanation
The core idea of this research can be explained using an analogy. Imagine a musician trying to create a new song by experimenting with different melodies and harmonies. Conventional approaches to optimization would focus on refining existing melodies or harmonies, but the musician wants to discover new and innovative ones. The closed-loop workflow in this research is like a musical composition algorithm that generates, ranks, and validates new melodies and harmonies, enabling the musician to create a unique and innovative song. Similarly, this framework enables the discovery of new protocols in materials optimization, leading to improved performance and innovative applications.
Paper Information
Categories:
cond-mat.mtrl-sci cs.LG
Published Date:

arXiv ID:

2606.13859v1

Quick Actions