open_JPK

This code is specifically designed to open JPK AFM files (images and force curves) and import a number of parameters used for the scanning.
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Aggiornato 17 giu 2020

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This code is specifically designed to open JPK AFM files (images and force curves) and import a number of parameters used for the scanning.

In the case of images:
Two structs are created, one containing all the channels of the image (they are calibrated in the case of vertical deflection) and a second struct with a number of key parameters of the scanning. These include: Origin, scan angle, length and pixels of the scan, I & P Gain, baseline, set points vertical sensitivity and vertical stiffness of the cantilever used.
If metadata is corrupt, or tip is not calibrated will return values in RAW form.

Please read function Help for further details.

Tested images were multiple all with calibrated tips, working in contact mode and AC mode. QI-mode images still not implemented.

Cita come

Ortuso, Roberto D., and Kaori Sugihara. “Detailed Study on the Failure of the Wedge Calibration Method at Nanonewton Setpoints for Friction Force Microscopy.” The Journal of Physical Chemistry C, vol. 122, no. 21, American Chemical Society (ACS), May 2018, pp. 11464–74, doi:10.1021/acs.jpcc.8b03583.

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Versione Pubblicato Note della release
4.0.1

Typo corrections in help of function.

4.0

The code also allows for opening of un-calibrated images, as errors in the saving of the files have been reported, in which metadata is incomplete.

3.0

Now able to import calibrated force curves

2.1

Bug Fix

2.0

The new version also imports AC images

1.2.0

The code has been rendered more robust. The values of interest are researched with the relative ID and not with position.

1.0.0