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Exploration of Self-Propelling Droplets Using a Curiosity Driven Robotic Assistant

2019-04-22
Jonathan Grizou, Laurie J. Points, Abhishek Sharma, Leroy Cronin

Abstract

We describe a chemical robotic assistant equipped with a curiosity algorithm (CA) that can efficiently explore the state a complex chemical system can exhibit. The CA-robot is designed to explore formulations in an open-ended way with no explicit optimization target. By applying the CA-robot to the study of self-propelling multicomponent oil-in-water droplets, we are able to observe an order of magnitude more variety of droplet behaviours than possible with a random parameter search and given the same budget. We demonstrate that the CA-robot enabled the discovery of a sudden and highly specific response of droplets to slight temperature changes. Six modes of self-propelled droplets motion were identified and classified using a time-temperature phase diagram and probed using a variety of techniques including NMR. This work illustrates how target free search can significantly increase the rate of unpredictable observations leading to new discoveries with potential applications in formulation chemistry.

Abstract (translated by Google)
URL

http://arxiv.org/abs/1904.12635

PDF

http://arxiv.org/pdf/1904.12635


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