Issue 2, 2022

Accelerated automated screening of viscous graphene suspensions with various surfactants for optimal electrical conductivity

Abstract

Functional composite thin films have a wide variety of applications in flexible and/or electronic devices, telecommunications and multifunctional emerging coatings. The rapid screening of their properties is a challenging task, especially with multiple components defining the targeted properties. In this work we present a platform for accelerated automated screening of viscous graphene suspensions for optimal electrical conductivity. Using an Opentrons OT2 robotic auto-pipettor, we tested 3 most industrially significant surfactants – PVP, SDS and T80 – by fabricating 288 samples of graphene suspensions in aqueous hydroxypropylmethylcellulose. Enabled by our custom motorized 4-point probe measurement setup and computer vision algorithms, we then measured the electrical conductivity of every sample and identified that the highest performance is achieved for PVP-based samples, peaking at 10.8 mS cm−1 without annealing. The automation of the experimental procedure allowed us to perform the majority of the experiments using robots, while the involvement of human researchers was kept to minimum. Overall the experiment was completed in less than 18 hours, only 3 of which involved humans.

Graphical abstract: Accelerated automated screening of viscous graphene suspensions with various surfactants for optimal electrical conductivity

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Article information

Article type
Paper
Submitted
02 Sep 2021
Accepted
24 Jan 2022
First published
27 Jan 2022
This article is Open Access
Creative Commons BY license

Digital Discovery, 2022,1, 139-146

Accelerated automated screening of viscous graphene suspensions with various surfactants for optimal electrical conductivity

D. Bash, F. H. Chenardy, Z. Ren, J. J. Cheng, T. Buonassisi, R. Oliveira, J. N. Kumar and K. Hippalgaonkar, Digital Discovery, 2022, 1, 139 DOI: 10.1039/D1DD00008J

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