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Article ? AI-assigned paper type based on the abstract. Classification may not be perfect — flag errors using the feedback button. Tier 2 ? Original research — experimental, observational, or case-control study. Direct primary evidence. Detection Methods Environmental Sources Marine & Wildlife Sign in to save

Toward in Situ Identification of Microplastics in Water Using Raman Spectroscopy and Machine Learning

2024 3 citations ? Citation count from OpenAlex, updated daily. May differ slightly from the publisher's own count. Score: 40 ? 0–100 AI score estimating relevance to the microplastics field. Papers below 30 are filtered from public browse.
Christophe Bescond, Jean-Hughes Fournier-Lupien, Christophe Bescond, Christophe Bescond Jean-Hughes Fournier-Lupien, Christophe Bescond Christophe Bescond, Jean-Hughes Fournier-Lupien, Christophe Bescond Christophe Bescond, Christophe Bescond Jean-Hughes Fournier-Lupien, Charles Brosseau, Charles Brosseau, Charles Brosseau, Charles Brosseau, Tristan Dauphin, Tristan Dauphin, Christophe Bescond, Christophe Bescond

Summary

This study developed an early-stage system combining Raman spectroscopy and machine learning to identify microplastics directly in ocean water in real time, without needing to collect and process samples in a lab. A support vector machine classifier trained on spectral libraries correctly identified all pristine microplastic samples and most environmental ones, demonstrating that field-deployable automated detection is feasible. Accurate real-time monitoring tools are urgently needed to understand where microplastics concentrate in the ocean and to track pollution trends.

Plastic pollution is a significant environmental issue, with microplastics (particles <5 mm) being particularly challenging to detect and quantify due to their small size. This study shows preliminary results on developing an in situ system for the real-time detection, characterization, and identification of microplas-tics in oceans. The proposed system will integrate multiple techniques, including Raman spectroscopy, laser-induced fluorescence, photo-acoustic imaging, acoustic imaging, and optical imaging, to achieve rapid and accurate measurements. This paper focuses on the potential of Raman spectroscopy for in situ microplastic characterization and on leveraging machine learning models for plastics classification. We collected Raman spectra from various plastic samples, including pristine and weathered microplastics. We trained a Support Vector Machine (SVM) classifier on open-access Ra-man libraries, comparing models trained on the full Raman spectrum versus the fingerprint region. The full-spectrum model achieved higher accuracy, correctly identifying all pristine samples and 13 out of 18 environmental samples. Our findings demonstrate the feasibility of using Raman spectroscopy combined with machine learning for a potential real-time microplastic detection system.

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