A Workflow for Accelerating Multimodal Data Collection for Electrodeposited Films

Author:

Bassett Kimberly L.,Watkins Tylan,Coleman Jonathan,Bianco Nathan,Bailey Lauren S.,Pillars Jamin,Williams Samuel Garrett,Babuska Tomas F.,Curry John,DelRio Frank W.,Henriksen Amelia A.,Garland Anthony,Hall Justin,Krick Brandon A.,Boyce Brad L.ORCID

Abstract

AbstractFuture machine learning strategies for materials process optimization will likely replace human capital-intensive artisan research with autonomous and/or accelerated approaches. Such automation enables accelerated multimodal characterization that simultaneously minimizes human errors, lowers costs, enhances statistical sampling, and allows scientists to allocate their time to critical thinking instead of repetitive manual tasks. Previous acceleration efforts to synthesize and evaluate materials have often employed elaborate robotic self-driving laboratories or used specialized strategies that are difficult to generalize. Herein we describe an implemented workflow for accelerating the multimodal characterization of a combinatorial set of 915 electroplated Ni and Ni–Fe thin films resulting in a data cube with over 160,000 individual data files. Our acceleration strategies do not require manufacturing-scale resources and are thus amenable to typical materials research facilities in academic, government, or commercial laboratories. The workflow demonstrated the acceleration of six characterization modalities: optical microscopy, laser profilometry, X-ray diffraction, X-ray fluorescence, nanoindentation, and tribological (friction and wear) testing, each with speedup factors ranging from 13–46x. In addition, automated data upload to a repository using FAIR data principles was accelerated by 64x.

Funder

Sandia National Laboratories

Publisher

Springer Science and Business Media LLC

Subject

Industrial and Manufacturing Engineering,General Materials Science

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