Abstract

Principal component analysis (PCA) and other multivariate analysis methods have been used increasingly to analyse and understand depth profiles in X-ray photoelectron spectroscopy (XPS), Auger electron spectroscopy (AES) and secondary ion mass spectrometry (SIMS). These methods have proved equally useful in fundamental studies as in applied work where speed of interpretation is very valuable. Until now these methods have been difficult to apply to very large datasets such as spectra associated with 2D images or 3D depth-profiles. Existing algorithms for computing PCA matrices have been either too slow or demanded more memory than is available on desktop PCs. This often forces analysts to ‘bin’ spectra on much more coarse a grid than they would like, perhaps even to unity mass bins even though much higher resolution is available, or select only part of an image for PCA analysis, even though PCA of the full data would be preferred.We apply the new ‘random vectors’ method of singular value decomposition proposed by Halko and co-authors to time-of-flight (ToF)SIMS data for the first time. This increases the speed of calculation by a factor of several hundred, making PCA of these datasets practical on desktop PCs for the first time. For large images or 3D depth profiles we have implemented a version of this algorithm which minimises memory needs, so that even datasets too large to store in memory can be processed into PCA results on an ordinary PC with a few gigabytes of memory in a few hours. We present results from ToFSIMS imaging of a citrate crystal and a basalt rock sample, the largest of which is 134GB in file size corresponding to 67 111 mass values at each of 512 × 512 pixels. This was processed into 100 PCA components in six hours on a conventional Windows desktop PC. © 2015 The Authors. Surface and Interface Analysis published by John Wiley & Sons Ltd.

Highlights

  • Principal component analysis (PCA)[1] is a powerful tool for surface analysis data and has many applications

  • This new PCA option leads to a great reduction in calculation time in practical problems; it is limited to cases in which the data is small enough to be held in memory, as required by RV1

  • The J105 is not especially sensitive to such changes compared to other ToFSIMS instruments, but the laboratory was in the process of rearranging the air-conditioning system at the time of these measurements

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Summary

Introduction

Principal component analysis (PCA)[1] is a powerful tool for surface analysis data and has many applications. We have labelled these pixels a, b, c and d. In Auger electron spectroscopy (AES), X-ray photoelectron spectroscopy (XPS) or ToFSIMS we may have a complete spectrum at each pixel, with perhaps somewhere between n = 100 and n = 100 000 numbers rather than just three RGB values. Each pixel contains a complete spectrum for a range of electron energy (AES and XPS) or mass-to-charge ratio (ToFSIMS)

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