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Harnessing Artificial Intelligence for Microplastic Pollution Control in Lakes: Detection, Prediction and Removal

SPIRE - Sciences Po Institutional REpository 2025 Score: 38 ? 0–100 AI score estimating relevance to the microplastics field. Papers below 30 are filtered from public browse.
Hu, Weili, Yang, Wanggan, Liu, Shouqiang, Xin, Yongrong, Liu, Xiaoning, Hu, Weimin, Yang, Wangxin, Collins, Eleanor

Summary

This review examines how artificial intelligence techniques are being applied to detect, predict, and assist in the removal of microplastic pollution in lake environments, surveying current AI-driven approaches to environmental monitoring and remediation.

International audience

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