Abstract

Surface topography influences several surface properties, including friction and adhesion. While a statistical description of surface topography can be obtained from a power spectral density (PSD) analysis of atomic force microscopy (AFM) height maps and fitting the self-affine region of the PSD to determine the Hurst exponent (H), the accuracy of this approach has not been rigorously evaluated yet. Here, we use a Fourier filtering algorithm combined with a novel approach to simulate typical AFM scan-line anisotropy to generate synthetic AFM topography images with known input Hurst exponent. These synthetic AFM images are used as a Monte Carlo experiment to evaluate the variance and bias in H estimation from PSDs across different hypothetical experimental approaches, including the case of a cluster of images collected at one scan size (scale) and the case of a cluster of images collected at different scales. Our analysis reveals that estimates of the Hurst exponent from images collected at a single scale are persistently biased in a scale-dependent fashion despite misleading convergence in variance. This bias can be reduced by combining images collected at least at three different scales across the range of scales accessible to AFM.

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