Electrostatic Discovery Atomic Force Microscopy

ACS Nano. 2022 Jan 25;16(1):89-97. doi: 10.1021/acsnano.1c06840. Epub 2021 Nov 22.

Abstract

While offering high resolution atomic and electronic structure, scanning probe microscopy techniques have found greater challenges in providing reliable electrostatic characterization on the same scale. In this work, we offer electrostatic discovery atomic force microscopy, a machine learning based method which provides immediate maps of the electrostatic potential directly from atomic force microscopy images with functionalized tips. We apply this to characterize the electrostatic properties of a variety of molecular systems and compare directly to reference simulations, demonstrating good agreement. This approach offers reliable atomic scale electrostatic maps on any system with minimal computational overhead.

Keywords: atomic force microscopy; chemical identification; electrostatics; machine learning; tip functionalization.