A machine learning algorithm for high throughput identification of FTIR spectra: Application on microplastics collected in the Mediterranean Sea.

Journal: Chemosphere
Published Date:

Abstract

The development of methods to automatically determine the chemical nature of microplastics by FTIR-ATR spectra is an important challenge. A machine learning method, named k-nearest neighbors classification, has been applied on spectra of microplastics collected during Tara Expedition in the Mediterranean Sea (2014). To realize these tests, a learning database composed of 969 microplastic spectra has been created. Results show that the machine learning process is very efficient to identify spectra of classical polymers such as poly(ethylene), but also that the learning database must be enhanced with less common microplastic spectra. Finally, this method has been applied on more than 4000 spectra of unidentified microplastics. The verification protocol showed less than 10% difference in the results between the proposed automated method and a human expertise, 75% of which can be very easily corrected.

Authors

  • Mikaël Kedzierski
    Université Bretagne Sud, UMR CNRS 6027, IRDL, F-56100, Lorient, France. Electronic address: mikael.kedzierski@univ-ubs.fr.
  • Mathilde Falcou-Préfol
    Université Bretagne Sud, UMR CNRS 6027, IRDL, F-56100, Lorient, France.
  • Marie Emmanuelle Kerros
    Sorbonne Universités, UMR CNRS 7093, LOV, F-06230, Villefranche sur mer, France.
  • Maryvonne Henry
    IFREMER, LER/PAC, F-83500, La Seine-sur-Mer, France.
  • Maria Luiza Pedrotti
    Sorbonne Universités, UMR CNRS 7093, LOV, F-06230, Villefranche sur mer, France.
  • Stéphane Bruzaud
    Université Bretagne Sud, UMR CNRS 6027, IRDL, F-56100, Lorient, France.