Department of Biological Sciences, Pusan National University, Geumjeong-gu, Busan, Republic of Korea.
K-water Research Institute, Yuseong-gu, Daejeon, Republic of Korea.
Sci Total Environ. 2020 Sep 10;734:138940. doi: 10.1016/j.scitotenv.2020.138940. Epub 2020 Apr 28.
Describing temporal changes in phytoplankton communities is complicated owing to (i) multivariate environmental drivers, (ii) inter-specific relationships, and (iii) various species. With long-term research data from the lower Nakdong River from 1993 to 2016, we examined the temporal changes at two scales-episodic (from weekly to monthly) and long-term (yearly)-and screened the potential environmental drivers. Phytoplankton community component patterns were modeled with the drivers as covariates, using multivariate autoregressive state-space (MARSS) models, to assess their response to environmental drivers and biotic interactions. We assumed that compared to taxonomic classification, functional classification would obtain a better identification of community response to temporal variability. Over 24 years, the succession patterns of the dominant taxonomic and functional groups decreased in diversity, with the greatest decreases in biomass of Bacillariophyceae and group D (mainly the diatom Stephanodiscus hantzschii), and coincided with the introduction of group H1 (dinitrogen-fixing nostocaleans). The potential drivers for these changes were precipitation, water level, and total nitrogen (TN) for taxonomic groups and TN, total phosphorus, and euphotic zone depth for functional groups. The results of the MARSS model and temporal trends for each driver indicated that the increases in the water level and light availability were mostly related with the taxonomic and functional groups, respectively. The model for functional groups proposed a total of 24 significant inter-group relationships, where five relationships supported the succession patterns of dominant groups in the Nakdong River. Combined with the effects of increased light availability, a positive relationship between groups H1 and M (mainly Cyanobacteria and Microcystis aeruginosa) appears to induce cyanobacterial bloom development over a long period. These results can be fundamental information for river system management concerning the resulting cascading effects of changes in environmental drivers and inter-group relationships on the phytoplankton community composition.
描述浮游植物群落的时间变化很复杂,原因有三:(i)多变量环境驱动因素,(ii)种间关系,以及(iii)各种物种。利用 1993 年至 2016 年在南道下游的长期研究数据,我们在两个尺度上(即阶段性[从每周到每月]和长期[每年])检查了时间变化,并筛选了潜在的环境驱动因素。使用多元自回归状态空间(MARSS)模型,将浮游植物群落成分模式与驱动因素作为协变量进行建模,以评估它们对环境驱动因素和生物相互作用的响应。我们假设,与分类学分类相比,功能分类将更好地识别群落对时间变化的响应。在 24 年的时间里,优势分类和功能群的演替模式多样性降低,其中 Bacillariophyceae 和 D 组(主要是硅藻 Stephanodiscus hantzschii)的生物量减少最多,与 H1 组(固氮念珠藻)的引入同时发生。这些变化的潜在驱动因素是降水、水位和总氮(TN)对分类群,以及 TN、总磷和透光带深度对功能群。MARSS 模型的结果和每个驱动因素的时间趋势表明,水位和光照可用性的增加主要与分类群和功能群分别相关。功能群模型总共提出了 24 个显著的组间关系,其中 5 个关系支持南道主要群体的演替模式。结合光照可用性增加的影响,H1 组和 M 组(主要是蓝藻和铜绿微囊藻)之间的正相关关系似乎会在很长一段时间内引发蓝藻水华的发展。这些结果可以为河流系统管理提供基本信息,了解环境驱动因素和组间关系变化对浮游植物群落组成的级联效应。