LGSOFTDATA-ANNov 6, 2024

Constrained composite Bayesian optimization for rational synthesis of polymeric particles

arXiv:2411.10471v24 citationsh-index: 15Digital Discovery
Originality Incremental advance
AI Analysis

This work addresses the problem of costly trial-and-error in polymeric particle synthesis for healthcare and energy applications, offering an incremental improvement over existing Bayesian optimization methods.

The study tackled the challenge of tailoring polymeric particle synthesis to meet specific design targets by integrating constrained and composite Bayesian optimization (CCBO), which efficiently optimized particle production towards predefined size targets, reaching design targets within 4 iterations in laboratory experiments.

Polymeric nano- and micro-scale particles have critical roles in tackling critical healthcare and energy challenges with their miniature characteristics. However, tailoring their synthesis process to meet specific design targets has traditionally depended on domain expertise and costly trial-and-errors. Recently, modeling strategies, particularly Bayesian optimization (BO), have been proposed to aid materials discovery for maximized/minimized properties. Coming from practical demands, this study for the first time integrates constrained and composite Bayesian optimization (CCBO) to perform efficient target value optimization under black-box feasibility constraints and limited data for laboratory experimentation. Using a synthetic problem that simulates electrospraying, a model nanomanufacturing process, CCBO strategically avoided infeasible conditions and efficiently optimized particle production towards predefined size targets, surpassing standard BO pipelines and providing decisions comparable to human experts. Further laboratory experiments validated CCBO capability to guide the rational synthesis of poly(lactic-co-glycolic acid) (PLGA) particles with diameters of 300 nm and 3.0 $μ$m via electrospraying. With minimal initial data and unknown experiment constraints, CCBO reached the design targets within 4 iterations. Overall, the CCBO approach presents a versatile and holistic optimization paradigm for next-generation target-driven particle synthesis empowered by artificial intelligence (AI).

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