Key Laboratory of Urban Environment and Health, Fujian Key Laboratory of Watershed Ecology, Institute of Urban Environment, Chinese Academy of Sciences, Xiamen 361021, China; University of Chinese Academy of Sciences, Beijing 100049, China.
Department of Fish, Wildlife & Conservation Ecology, New Mexico State University, Las Cruces, NM 88003, USA.
Water Res. 2021 Dec 1;207:117828. doi: 10.1016/j.watres.2021.117828. Epub 2021 Nov 1.
Microplastic contamination in reservoirs is receiving increasing attention worldwide. However, a holistic understanding of the occurrence, drivers, and potential risks of microplastics in reservoirs is lacking. Building on a systematic review and meta-analysis of 30 existing publications, we construct a global microplastic dataset consisting of 440 collected samples from 43 reservoirs worldwide which we analyze through a framework of Data processing and Multivariate statistics (DM). The purpose is to provide comprehensive understanding of the drivers and mechanisms of microplastic pollution in reservoirs considering three different aspects: geographical distribution, driving forces, and ecological risks. We found that microplastic abundance varied greatly in reservoirs ranging over 2-6 orders of magnitude. Small-sized microplastics (< 1 mm) accounted for more than 60% of the total microplastics found in reservoirs worldwide. The most frequently detected colors, shapes, and polymer types were transparent, fibers, and polypropylene (polyester within aquatic organisms), respectively. Geographic location, seasonal variation and land-use type were main factors influencing microplastic abundance. Detection was also dependent on analytical methods, demonstrating the need for reliable and standardized methods. Interaction of these factors enhanced effects on microplastic distribution. Microplastics morphological characteristics and their main drivers differed between environmental media (water and sediment) and were more diverse in waters compared to sediments. Similarity in microplastic morphologies decreased with increasing geographic distance within the same media. In terms of risks, microplastic pollution and potential ecological risk levels are high in reservoirs and current policies to mitigate microplastic pollution are insufficient. Based on the DM framework, we identified temperate/subtropical reservoirs in Asia as potential high-risk areas and offer recommendations for analytical methods to detect microplastics in waters and sediments. This framework can be extended and applied to other multi-scale and multi-attribute contaminants, providing effective theoretical guidance for reservoir ecosystems pollution control and management.
水库中的微塑料污染受到了全球越来越多的关注。然而,人们对水库中微塑料的发生、驱动因素和潜在风险还缺乏全面的认识。在对 30 篇现有文献进行系统回顾和荟萃分析的基础上,我们构建了一个全球微塑料数据集,其中包含来自全球 43 个水库的 440 个采集样本,我们通过数据处理和多元统计分析(DM)框架对其进行分析。目的是从地理分布、驱动力和生态风险三个不同方面综合了解水库中微塑料污染的驱动因素和机制。我们发现,水库中微塑料的丰度差异很大,范围跨越 2-6 个数量级。小尺寸的微塑料(<1mm)占全球水库中发现的总微塑料的 60%以上。最常检测到的颜色、形状和聚合物类型分别是透明、纤维和聚丙烯(水生生物中的聚酯)。地理位置、季节性变化和土地利用类型是影响微塑料丰度的主要因素。检测结果还取决于分析方法,这表明需要可靠和标准化的方法。这些因素的相互作用增强了对微塑料分布的影响。微塑料的形态特征及其主要驱动因素在环境介质(水和沉积物)之间存在差异,并且在水中比在沉积物中更为多样化。在同一介质中,随着地理距离的增加,微塑料形态的相似性降低。就风险而言,水库中的微塑料污染和潜在的生态风险水平很高,而目前减轻微塑料污染的政策还不够充分。基于 DM 框架,我们确定了亚洲的温带/亚热带水库为潜在的高风险区域,并为在水中和沉积物中检测微塑料提供了分析方法的建议。该框架可以扩展并应用于其他多尺度和多属性污染物,为水库生态系统污染控制和管理提供有效的理论指导。