Extraction of hidden information of ToF‐SIMS data using different multivariate analyses |
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Authors: | Yuta Yokoyama Tomoko Kawashima Mayumi Ohkawa Hideo Iwai Satoka Aoyagi |
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Affiliation: | 1. Department of Materials and Life Science, Seikei University, Musashino, Tokyo, Japan;2. Device Solutions Center, Life Materials Group, Panasonic Corporation, Soraku‐Gun, Kyoto, Japan;3. Device Solutions Center, Green Chemistry Group, Panasonic Corporation, Moriguchi City, Osaka, Japan;4. Materials Analysis Station, National Institute for Materials Science, Tsukuba, Ibaraki, Japan |
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Abstract: | ![]() Time‐of‐flight secondary ion mass spectrometry (ToF‐SIMS) is a powerful tool for determining surface information of complex systems such as polymers and biological materials. However, the interpretation of ToF‐SIMS raw data is often difficult. Multivariate analysis has become effective methods for the interpretation of ToF‐SIMS data. Some of multivariate analysis methods such as principal component analysis and multivariate curve resolution are useful for simplifying ToF‐SIMS data consisting of many components to that explained by a smaller number of components. In this study, the ToF‐SIMS data of four layers of three polymers was analyzed using these analysis methods. The information acquired by using each method was compared in terms of the spatial distribution of the polymers and identification. Moreover, in order to investigate the influence of surface contamination, the ToF‐SIMS data before and after Ar cluster ion beam sputtering was compared. As a result, materials in the sample of multiple components, including unknown contaminants, were distinguished. Copyright © 2014 John Wiley & Sons, Ltd. |
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Keywords: | time‐of‐flight secondary ion mass spectrometry (ToF‐SIMS) principal component analysis (PCA) multivariate curve resolution (MCR) polymers contamination Ar cluster beam sputtering |
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