Last updated: 2019-08-07
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Knit directory: polymeRID/
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Here I present the results of my work for a master’s seminar at the University of Marburg concerned with microplastic in the environment.
The seminar was placed in the context of a broader research project between the working group of Soil and Water Ecosystems at the Institute of Geography and the working group of Semiconductor Photonics at the Institute of Physics. It was conducted jointly by Prof. Dr. Peter Chifflard and MSc Julia Prume and was focused on the analysis of envrionmental samples to answer different geographical questions about the how and then of microplastic particles moving in water ecosystems.
While the most projects during the seminar were focusing on these important geographical questions I set out my project to actually ease the cumbersome process of categorizing FTIR spectra of particles wihtin the samples to polymer classes. The idea was that up-to-date machine learning models applied to the high-dimensional spectral data of particles found in samples could minimize the need for human intervention in the classifcation process and thus significantly speed up the process of categorizing particles to reference polymers.
To achieve this aim this project consisted of basically four distinguishable work steps. These are: