Zou Hui-Huang, He Pin-Jing, Peng Wei, Lan Dong-Ying, Xian Hao-Yang, Lü Fan, Zhang Hua
Institute of Waste Treatment & Reclamation, College of Environmental Science and Engineering, Tongji University, Shanghai 200092, China.
Institute of Waste Treatment & Reclamation, College of Environmental Science and Engineering, Tongji University, Shanghai 200092, China; Shanghai Institute of Pollution Control and Ecological Security, Shanghai 200092, China.
J Environ Sci (China). 2025 Jan;147:512-522. doi: 10.1016/j.jes.2023.12.004. Epub 2023 Dec 8.
To better understand the migration behavior of plastic fragments in the environment, development of rapid non-destructive methods for in-situ identification and characterization of plastic fragments is necessary. However, most of the studies had focused only on colored plastic fragments, ignoring colorless plastic fragments and the effects of different environmental media (backgrounds), thus underestimating their abundance. To address this issue, the present study used near-infrared spectroscopy to compare the identification of colored and colorless plastic fragments based on partial least squares-discriminant analysis (PLS-DA), extreme gradient boost, support vector machine and random forest classifier. The effects of polymer color, type, thickness, and background on the plastic fragments classification were evaluated. PLS-DA presented the best and most stable outcome, with higher robustness and lower misclassification rate. All models frequently misinterpreted colorless plastic fragments and its background when the fragment thickness was less than 0.1mm. A two-stage modeling method, which first distinguishes the plastic types and then identifies colorless plastic fragments that had been misclassified as background, was proposed. The method presented an accuracy higher than 99% in different backgrounds. In summary, this study developed a novel method for rapid and synchronous identification of colored and colorless plastic fragments under complex environmental backgrounds.
为了更好地了解塑料碎片在环境中的迁移行为,开发用于原位识别和表征塑料碎片的快速无损方法是必要的。然而,大多数研究仅关注有色塑料碎片,忽略了无色塑料碎片以及不同环境介质(背景)的影响,从而低估了它们的数量。为了解决这个问题,本研究使用近红外光谱法,基于偏最小二乘判别分析(PLS-DA)、极端梯度提升、支持向量机和随机森林分类器,比较有色和无色塑料碎片的识别情况。评估了聚合物颜色、类型、厚度和背景对塑料碎片分类的影响。PLS-DA呈现出最佳且最稳定的结果,具有更高的稳健性和更低的误分类率。当碎片厚度小于0.1毫米时,所有模型经常将无色塑料碎片及其背景误判。提出了一种两阶段建模方法,该方法首先区分塑料类型,然后识别被误判为背景的无色塑料碎片。该方法在不同背景下的准确率高于99%。总之,本研究开发了一种在复杂环境背景下快速同步识别有色和无色塑料碎片的新方法。