Automation and Autonomous Experimentation for Sol-Gel Nanomaterial Synthesis
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Abstract
The nexus of laboratory automation and machine learning enables a new paradigm of autonomousexperimental materials research. Autonomous experimentation integrates highly automated
materials synthesis and characterization experiments with machine-learning guided experimental
design strategies to adaptively execute experiments that advance specific research goals. These
systems have the potential to accelerate materials development timelines compared to traditional
manual processes by efficiently targeting experimental efforts. Sol-gel processes are used to
synthesize a diverse array of metal oxide nanomaterials for many applications. In particular,
mesoporous colloidal silicas are promising materials for use as catalysis support matrices,
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chromatographic separation media, and drug delivery systems. Achieving retrosynthetic control
over particle morphologies is critical for advancing use in these applications. In this work,
automated and autonomous systems for the synthesis and optimization of colloidal silicas are
developed. An open-source platform for flexible laboratory automation is developed to enable
democratized access to autonomous experimentation. A system for the fully automated synthesis
and characterization of colloidal mesoporous silicas is developed which integrates the open-
hardware automation platform to perform automated sol-gel synthesis with synchrotron and
laboratory X-ray scattering instruments for characterization. Synthesis campaigns executed with
this system have produced colloidal silicas with a range of particle morphologies and mesopore
phase structures. Finally, progress towards integrating a Bayesian optimization based experimental
design strategy to optimize the morphology of silica nanoparticles is discussed. This work
represents an important step towards accelerating the development of sol-gel materials with
autonomous experimentation.
Description
Thesis (Ph.D.)--University of Washington, 2025
