Published April 18, 2023 | Version v2
Software Open

Automation of an Atomic Force Microscope via Arduino

  • 1. Department of Applied Physics, Faculty of Sciences, University of Granada, Campus de Fuentenueva s/n, 18071 Granada, Spain, Faculty of Biology, Autonomous University of Sinaloa, 80010 Culiacan, Sinaloa, Mexico
  • 2. Department of Applied Physics, Faculty of Sciences, University of Granada, Campus de Fuentenueva s/n, 18071 Granada, Spain
  • 3. Department of Electronics and Computer Technology, Faculty of Sciences, University of Granada, 18071 Granada, Spain, Faculty of Biology, Autonomous University of Sinaloa, 80010 Culiacan, Sinaloa, Mexico

Description

The Atomic Force Microscopy is a very versatile technique that allows to characterize surfaces by acquiring topographies with sub-nanometer resolution. This technique often overcomes the problems and capabilities of electron microscopy when characterizing few nanometers thin coatings over solid substrates. They are expensive, in the half million dollar range for standard units, and therefore it is often difficult to upgrade to new units with improved characteristics. One of these improvements, motorization and automation of the measurements is very interesting to sample different parts of a substrate in an unattended way. Here we report a low cost upgrade under 60 $ to a Dimension 3000 AFM based on a control unit using an Arduino Leonardo. It enables to acquire dozens or hundreds of images automatically by mimicking keyboard shortcuts and interfacing the AFM PCI card.

Notes

The Dimension 3000 AFM used in this work was kindly donated by Prof. Nicholas D. Spencer from ETH-Zurich. MAFR acknowledges support by the project PID2020-116615RA-I00, and grant IJC2018-035946-I, funded by MCIN/ AEI /10.13039/501100011033. JGGF and CLMM acknowledge support from grant A1S35536 by Conacyt Mexico.

Files

Demonstration_AFM.mp4

Files (181.8 MB)

Name Size Download all
md5:cfe7eed334083611b0e4576267946346
14.9 kB Download
md5:7c3dcf2cd52cdcf1462940d21c83a0d6
177.9 MB Preview Download
md5:9ba39922e7a1f4afbf7fe58ed337db63
19.2 kB Download
md5:0e8a535f77b50ebef92073a7f0d2a8c1
3.9 MB Download
md5:574b1e19f339391296334474c60348c7
18.4 kB Download
md5:eed4957e8a6a1e123e46b4f516626056
2.5 kB Download