Affiliation:
1. Nanyang Technological University
2. Natonal University of Singapore
3. Indian Institute Of Technology Goa
4. National University of Singapore
5. NTU
6. Institute of Materials Research and Engineering
Abstract
Abstract
The development of automated high-throughput experimental platforms has enabled fast sampling of high-dimensional decision spaces. To reach target properties efficiently, these platforms are increasingly paired with intelligent experimental design. However, current optimizers show limitations in maintaining sufficient exploration/exploitation balance for problems dealing with multiple conflicting objectives and complex constraints. Here, we devised an Evolution-Guided Bayesian Optimization (EGBO) algorithm that integrates selection pressure in parallel with a q-Noisy Expected Hypervolume Improvement (qNEHVI) optimizer; this not only solves for the Pareto Front (PF) efficiently but also achieves better coverage of the PF while limiting sampling in the infeasible space. The algorithm was developed together with a custom self-driving lab for seed-mediated silver nanoparticle synthesis, targeting 3 objectives (1) optical properties, (2) fast reaction, and (3) minimal seed usage alongside complex constraints. We demonstrated that, with appropriate constraint handling, EGBO performance improves upon state-of-the-art qNEHVI. Furthermore, across various synthetic multi-objective problems, EGBO showed significative hypervolume improvement, revealing the synergy between selection pressure and the qNEHVI optimizer. We also demonstrated EGBO’s good coverage of the PF as well as comparatively better ability to propose feasible solutions. We thus propose EGBO as a general framework for efficiently solving constrained multi-objective problems in high-throughput experimentation platforms.
Publisher
Research Square Platform LLC
Reference42 articles.
1. Aspuru-Guzik, Materials Acceleration Platforms: On the way to autonomous experimentation;Flores-Leonar MM;Curr Opin Green Sustain Chem.,2020
2. An object-oriented framework to enable workflow evolution across materials acceleration platforms;Leong CJ;Matter.,2022
3. M. Seifrid, J. Hattrick-Simpers, A. Aspuru-Guzik, T. Kalil, S. Cranford, Reaching critical MASS: Crowdsourcing designs for the next generation of materials acceleration platforms, Matter. (2022). https://doi.org/10.1016/j.matt.2022.05.035.
4. A mobile robotic chemist;Burger B;Nature.,2020
5. Nanocrystal synthesis in microfluidic reactors: where next?;Phillips TW;Lab Chip,2014