Advancing environmental sustainability through emerging AI-based monitoring and mitigation strategies for microplastic pollution in aquatic ecosystems
Ifeanyi Kingsley Egbuna, Mustapha Saidu, Paullett Ugochi Ogeah, Taiwo Bakare-Abidola, Aanuoluwa Temitayo Iyiola, Abiola Bidemi Obafemi
- 发表年份
- 2025
- 引用次数
- 3
摘要
Microplastics have become a significant pollutant in aquatic ecosystems, with serious implications for biodiversity, food safety, and environmental sustainability. This paper reviews the nature and sources of microplastic pollution, alongside its ecological and human health impacts. Recognizing the limitations of traditional monitoring and removal methods, the study explores emerging artificial intelligence (AI)-based strategies as innovative tools for improving environmental monitoring and pollution mitigation. The manuscript discusses how AI techniques such as machine learning, computer vision, and remote sensing can enhance the detection, classification, and prediction of microplastic distribution in water bodies. It also highlights the potential of AI-driven robotic systems in supporting targeted mitigation efforts. While these technologies show promise, further interdisciplinary research and development are necessary to fully realize their application in real-world environmental management. The integration of AI offers a proactive path toward achieving cleaner aquatic ecosystems and supporting global sustainability goals.
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