Hu Binbin, Dai Yaodan, Zhou Hai, Sun Ying, Yu Hongfang, Dai Yueyue, Wang Ming, Ergu Daji, Zhou Pan
College of Electronic and Information, Southwest Minzu University, Chengdu 610225, China; Key Laboratory of Electronic Information Engineering, Southwest Minzu University, Chengdu 610225, China.
School of Resources and Environmental Engineering, Hefei University of Technology, Hefei 230009, China.
J Hazard Mater. 2024 Aug 5;474:134865. doi: 10.1016/j.jhazmat.2024.134865. Epub 2024 Jun 8.
With the massive release of microplastics (MPs) into the environment, research related to MPs is advancing rapidly. Effective research methods are necessary to identify the chemical composition, shape, distribution, and environmental impacts of MPs. In recent years, artificial intelligence (AI)-driven machine learning methods have demonstrated excellent performance in analyzing MPs in soil and water. This review provides a comprehensive overview of machine learning methods for the prediction of MPs for various tasks, and discusses in detail the data source, data preprocessing, algorithm principle, and algorithm limitation of applied machine learning. In addition, this review discusses the limitation of current machine learning methods for various task analysis in MPs along with future prospect. Finally, this review finds research potential in future work in building large generalized MPs datasets, designing high-performance but low-computational-complexity algorithms, and evaluating model interpretability.
随着微塑料大量释放到环境中,与微塑料相关的研究正在迅速发展。需要有效的研究方法来识别微塑料的化学成分、形状、分布及其对环境的影响。近年来,人工智能驱动的机器学习方法在分析土壤和水中的微塑料方面表现出卓越性能。本综述全面概述了用于各种任务的微塑料预测机器学习方法,并详细讨论了应用机器学习的数据源、数据预处理、算法原理和算法局限性。此外,本综述还讨论了当前机器学习方法在微塑料各种任务分析中的局限性以及未来前景。最后,本综述发现未来工作在构建大型通用微塑料数据集、设计高性能但低计算复杂度的算法以及评估模型可解释性方面具有研究潜力。