Litcius/Paper detail

Low-cost portable microplastic detection system integrating nile red fluorescence staining with YOLOv8-based deep learning

Kittanon Rermborirak, Phutawan Nanuan, Pattarapon Komonpan, Somboon Sukpancharoen

2025Journal of Hazardous Materials Advances14 citationsDOIOpen Access PDF

Abstract

Microplastic (MP) pollution presents considerable challenges to aquatic ecosystems and human health, yet cost-effective detection methods remain limited. This study presents a portable, low-cost MP detection device combining Nile Red (NR) staining with YOLOv8-based deep learning (DL). The compact system (22 × 23 × 20 cm) uses a digital microscope, optical filter, 395 nm UV source, and Raspberry Pi 4 (RPi4) as the central processing unit. This design provide a portable and affordable alternative to expensive laboratory-based detection methods. In testing six common polymers (ABS, Nylon, PE, PET, PS, PVC), the system achieves 94.8 % mean average precision at IoU threshold of 0.5 (mAP@50), with excellent performance for PE and Nylon (96.5 %). Each polymer exhibits distinct fluorescence patterns enabling robust automated classification. Economic analysis demonstrates 77.3 % cost reduction compared to conventional FTIR methods, from $0.44 to $0.10 per sample, with fixed costs of only $139. The 19-second processing time enables high-throughput analysis suitable for field applications, citizen science, and resource-limited settings. Detection is limited to particles >100 μm by microscope resolution. This technology enhances MP analysis accessibility, bridging the gap between expensive laboratory methods and practical environmental monitoring for widespread community use.

Topics & Concepts

Nile redStainingFluorescenceComputer sciencePathologyOpticsMedicinePhysicsMicroplastics and Plastic PollutionRecycling and Waste Management TechniquesAdditive Manufacturing and 3D Printing Technologies