“…An advantage of their work is the ability to provide a particle analysis describing the number of particles and some other characteristics (such as diameter) for each polymer type. 154 Regarding AI in m-Raman, Lei et al 155 presented a proof-ofconcept ML tool KNN with the aim of reducing the inconsistencies in the detection and identication of MPs by m-Raman. The authors tested a training model for ML with 4520 spectra, using 40 reference spectra and 108 samples of 14 types of commercial MPs (PE, PP, PTFE, PS, PU, PMMA, PET, PVC, PC, ABS, PES, polyoxymethylene (POM), PS and PA), and found a spectral agreement of more than 95% at a rate of 10 samples per s.…”