Donghu Experimental Station of Lake Ecosystems, State Key Laboratory of Freshwater Ecology and Biotechnology, Institute of Hydrobiology, Chinese Academy of Sciences, Wuhan, 430072, People's Republic of China.
University of Chinese Academy of Sciences, Beijing, 100049, People's Republic of China.
Environ Sci Pollut Res Int. 2018 Jan;25(2):1283-1293. doi: 10.1007/s11356-017-0512-2. Epub 2017 Oct 31.
Increasing algae in Lake Erhai has resulted in frequent blooms that have not only led to water ecosystem degeneration but also seriously influenced the quality of the water supply and caused extensive damage to the local people, as the lake is a water resource for Dali City. Exploring the key factors affecting phytoplankton succession and developing predictive models with easily detectable parameters for phytoplankton have been proven to be practical ways to improve water quality. To this end, a systematic survey focused on phytoplankton succession was conducted over 2 years in Lake Erhai. The data from the first study year were used to develop predictive models, and the data from the second year were used for model verification. The seasonal succession of phytoplankton in Lake Erhai was obvious. The dominant groups were Cyanobacteria in the summer, Chlorophyta in the autumn and Bacillariophyta in the winter. The developments and verification of predictive models indicated that compared to phytoplankton biomass, phytoplankton density is more effective for estimating phytoplankton variation in Lake Erhai. CCA (canonical correlation analysis) indicated that TN (total nitrogen), TP (total phosphorus), DO (dissolved oxygen), SD (Secchi depth), Cond (conductivity), T (water temperature), and ORP (oxidation reduction potential) had significant influences (p < 0.05) on the phytoplankton community. The CCA of the dominant species found that Microcystis was significantly influenced by T. The dominant Chlorophyta, Psephonema aenigmaticum and Mougeotia, were significantly influenced by TN. All results indicated that TN and T were the two key factors driving phytoplankton succession in Lake Erhai.
洱海藻类增加导致频繁水华,不仅导致水生态系统退化,还严重影响供水水质,给当地人民造成广泛危害,因为洱海是大理市的水资源。探索影响浮游植物演替的关键因素,并开发具有易于检测参数的预测模型,已被证明是改善水质的实际方法。为此,对洱海进行了为期 2 年的浮游植物演替系统调查。第一年的数据用于建立预测模型,第二年的数据用于模型验证。洱海浮游植物的季节性演替明显。夏季优势种群为蓝藻,秋季为绿藻,冬季为硅藻。预测模型的开发和验证表明,与浮游植物生物量相比,浮游植物密度更能有效估计洱海浮游植物的变化。CCA(典范对应分析)表明,TN(总氮)、TP(总磷)、DO(溶解氧)、SD(塞氏盘深度)、Cond(电导率)、T(水温)和 ORP(氧化还原电位)对浮游植物群落有显著影响(p<0.05)。优势种的 CCA 表明,微囊藻受 T 的显著影响。优势绿藻 Psephonema aenigmaticum 和 Mougeotia 受 TN 的显著影响。所有结果表明,TN 和 T 是驱动洱海浮游植物演替的两个关键因素。