Department of Mechanical, Industrial and Systems Engineering, University of Rhode Island, Kingston, RI, USA.
Department of Civil and Environmental Engineering, University of Rhode Island, Kingston, RI, USA.
Sci Rep. 2023 Jul 7;13(1):11011. doi: 10.1038/s41598-023-37900-9.
Marine microplastics are emerging as a growing environmental concern due to their potential harm to marine biota. The substantial variations in their physical and chemical properties pose a significant challenge when it comes to sampling and characterizing small-sized microplastics. In this study, we introduce a novel microfluidic approach that simplifies the trapping and identification process of microplastics in surface seawater, eliminating the need for labeling. We examine various models, including support vector machine, random forest, convolutional neural network (CNN), and residual neural network (ResNet34), to assess their performance in identifying 11 common plastics. Our findings reveal that the CNN method outperforms the other models, achieving an impressive accuracy of 93% and a mean area under the curve of 98 ± 0.02%. Furthermore, we demonstrate that miniaturized devices can effectively trap and identify microplastics smaller than 50 µm. Overall, this proposed approach facilitates efficient sampling and identification of small-sized microplastics, potentially contributing to crucial long-term monitoring and treatment efforts.
海洋微塑料因其对海洋生物群的潜在危害而成为日益受到关注的环境问题。由于其物理和化学性质的巨大差异,在对小尺寸微塑料进行采样和特征描述时,这带来了重大挑战。在这项研究中,我们引入了一种新颖的微流控方法,该方法简化了对表层海水中微塑料的捕获和识别过程,无需进行标记。我们检验了各种模型,包括支持向量机、随机森林、卷积神经网络(CNN)和残差神经网络(ResNet34),以评估它们识别 11 种常见塑料的性能。研究结果表明,CNN 方法优于其他模型,其识别准确率高达 93%,曲线下面积的平均值为 98±0.02%。此外,我们还证明了小型化设备可以有效地捕获和识别小于 50µm 的微塑料。总的来说,该方法有助于高效地采样和识别小尺寸微塑料,为长期监测和处理工作提供了重要支持。