September 19, 2024
Journal Article
Towards informatics-driven design of nuclear waste forms
Abstract
Informatics-driven approaches, such as machine learning and sequential experimental design, have shown the potential to drastically impact next-generation materials discovery and design. In this perspective, we present a few guiding principles for applying informatics-based methods towards the design of novel nuclear waste forms. We advocate for adopting a system design approach, and describe the effective usage of data-driven methods in every stage of such a design process. We demonstrate how this approach can optimally leverage physics-based simulations, machine learning surrogates, and experimental synthesis and characterization, within a feedback-driven closed-loop sequential learning framework. We discuss the importance of incorporating domain knowledge into the representation of materials, the construction and curation of datasets, the development of predictive property models, and the design and execution of experiments. We illustrate a successful application of this approach in designing and validating Na-containing phosphate-based ceramic waste forms. Finally, we present an outlook for the widespread application of such informatics approaches for the cleanup of nuclear wastes.Published: September 19, 2024