Interacting cantilevers in AFM experiments generate non-stationary, multi-frequency signals consisting of numerous excited flexural and torsional modes and their harmonics. The analysis of such signals is challenging, requiring special methodological approaches and a powerful mathematical apparatus. The most common approach to the signal analysis is to apply Fourier transform analysis. However, FT gives accurate spectra for stationary signals, and for signals changing their spectral content over time, FT provides only an averaged spectrum. Hence, for non-stationary and rapidly varying signals, such as those from interacting cantilevers, a method that shows the spectral evolution in time is needed. One of the most powerful techniques, allowing detailed time-frequency representation of signals, is the wavelet transform. It is a method of analysis that allows representation of energy associated to the signal at a particular frequency and time, providing correlation between the spectral and temporal features of the signal, unlike FT. This is particularly important in AFM experiments because signals nonlinearities contains valuable information about tip-sample interactions and consequently surfaces properties. The present work is aimed to show the advantages of wavelet transform in comparison with FT using as an example the force curve analysis in dynamic force spectroscopy.

Pukhova, V., Ferrini, G., Multi-frequency data analysis in AFM by wavelet transform, Contributed paper, in IOP Conference Series: Materials Science and Engineering, (rus, 27-30 August 2017), Institute of Physics Publishing, Bristol 2017:256 012004-012004. 10.1088/1757-899X/256/1/012004 [http://hdl.handle.net/10807/132134]

Multi-frequency data analysis in AFM by wavelet transform

Pukhova, Valentina
Primo
;
Ferrini, Gabriele
Ultimo
2017

Abstract

Interacting cantilevers in AFM experiments generate non-stationary, multi-frequency signals consisting of numerous excited flexural and torsional modes and their harmonics. The analysis of such signals is challenging, requiring special methodological approaches and a powerful mathematical apparatus. The most common approach to the signal analysis is to apply Fourier transform analysis. However, FT gives accurate spectra for stationary signals, and for signals changing their spectral content over time, FT provides only an averaged spectrum. Hence, for non-stationary and rapidly varying signals, such as those from interacting cantilevers, a method that shows the spectral evolution in time is needed. One of the most powerful techniques, allowing detailed time-frequency representation of signals, is the wavelet transform. It is a method of analysis that allows representation of energy associated to the signal at a particular frequency and time, providing correlation between the spectral and temporal features of the signal, unlike FT. This is particularly important in AFM experiments because signals nonlinearities contains valuable information about tip-sample interactions and consequently surfaces properties. The present work is aimed to show the advantages of wavelet transform in comparison with FT using as an example the force curve analysis in dynamic force spectroscopy.
2017
Inglese
IOP Conference Series: Materials Science and Engineering
International Conference on Scanning Probe Microscopy, SPM 2017
rus
Contributed paper
27-ago-2017
30-ago-2017
Institute of Physics Publishing
Pukhova, V., Ferrini, G., Multi-frequency data analysis in AFM by wavelet transform, Contributed paper, in IOP Conference Series: Materials Science and Engineering, (rus, 27-30 August 2017), Institute of Physics Publishing, Bristol 2017:256 012004-012004. 10.1088/1757-899X/256/1/012004 [http://hdl.handle.net/10807/132134]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10807/132134
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