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Multi-scenario simulation of future marine microplastic distribution under data scarcity: A deep learning approach

  • Bowen Cui (Co-first Author)
  • , Huaiyuan Qi (Co-first Author)
  • , Mengyang Liu
  • , Minyi Liu
  • , Wei Huang
  • , Peng Huang
  • , Chunhui Wang
  • , Xuehong Zheng
  • , Hongwei Ke
  • , Minggang Cai*
  • *Corresponding author for this work

Research output: Journal Publications and ReviewsRGC 21 - Publication in refereed journalpeer-review

Abstract

Assessing future trends in marine microplastic (MP) abundance is a crucial step toward mitigating MP pollution. However, this task is challenged by the scarcity of observational data and the pronounced spatiotemporal heterogeneity of MPs driven by multiple interacting factors. In this study, we introduce CGMAT, a novel deep learning (DL) framework that integrates Few-Shot Learning (FSL) with a Transformer-based architecture. CGMAT enhances heterogeneous datasets from the Taiwan Strait and the Norwegian coastal waters to identify key drivers of MP pollution and to predict the future spatiotemporal distribution of MPs. Multi-scenario simulations demonstrate that Cross-domain Multi-Graph Attention Network (CGMAT) framework achieves excellent performance on the source domain validation data (explained variance score (EVS) = 0.91, mean absolute percentage error (MAPE) = 0.18 %). Nevertheless, forecast results reveal significant regional variations in MP pollution trends. Specifically, MP concentrations in the Taiwan Strait are projected to increase sharply, reaching 312–376 particles/m³ around 2030, whereas concentrations along the Norwegian coast waters are expected to rise more gradually, peaking at 15–53 particles/m³ around 2031. Following the peak, pollution levels are anticipated to stabilize under the combined influence of environmental dynamics and mitigation measures. The multi-scale feature fusion architecture of CGMAT further reveals that the spatiotemporal dynamics of MP distribution are governed by the interplay of three principal mechanisms: the intensity of economic interventions, delayed environmental responses, and geographical barriers. These findings highlight the significant potential of combining FSL with Transformer-based DL models to address data scarcity challenges and provide a broadly applicable framework for different marine ecosystems. © 2025 Elsevier Ltd
Original languageEnglish
Article number124233
Number of pages10
JournalWater Research
Volume286
Online published16 Jul 2025
DOIs
Publication statusPublished - 1 Nov 2025

Funding

This study was supported by the Science and Technology Special Fund of Hainan Province ( ZDYF2022SHFZ317 ), the Natural Science Foundation of Fujian Province ( 2020J02002 and 2014J06014 ), and National Natural Science Foundation of China ( U2005207 ) Data and samples were collected on the China Ocean Surveillance 203 ( NORC 2021\u2013 04 ), which is funded by the National Natural Science Foundation of China Ship Time Sharing Program (No. 42049904 ).

UN SDGs

This output contributes to the following UN Sustainable Development Goals (SDGs)

  1. SDG 14 - Life Below Water
    SDG 14 Life Below Water

Research Keywords

  • Data scarcity
  • Deep learning
  • Few-shot learning strategy (FSL)
  • Microplastics
  • Multi-scenario simulation
  • Transformer

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