Chongqing Key Laboratory of Big Data and Intelligent Computing, Chongqing Institute of Green and Intelligent Technology, Chinese Academy of Sciences, Chongqing 400714, China; CAS Key Lab on Reservoir Environment, Chongqing Institute of Green and Intelligent Technology, Chinese Academy of Sciences, Chongqing 400714, China.
CAS Key Lab on Reservoir Environment, Chongqing Institute of Green and Intelligent Technology, Chinese Academy of Sciences, Chongqing 400714, China; University of Chinese Academy of Sciences, Beijing 100049, China.
Harmful Algae. 2020 Apr;94:101807. doi: 10.1016/j.hal.2020.101807. Epub 2020 Apr 23.
The frequency of toxin-producing cyanobacterial blooms has increased in recent decades due to nutrient enrichment and climate change. Because Microcystis blooms are related to different environmental conditions, identifying potential nutrient control targets can facilitate water quality managers to reduce the likelihood of microcystins (MCs) risk. However, complex biotic interactions and field data limitations have constrained our understanding of the nutrient-microcystin relationship. This study develops a Bayesian modelling framework with intracellular and extracellular MCs that characterize the relationships between different environmental and biological factors. This model was fit to the across-lake dataset including three bloom-plagued lakes in China and estimated the putative thresholds of total nitrogen (TN) and total phosphorus (TP). The lake-specific nutrient thresholds were estimated using Bayesian updating process. Our results suggested dual N and P reduction in controlling cyanotoxin risks. The total Microcystis biomass can be substantially suppressed by achieving the putative thresholds of TP (0.10 mg/L) in Lakes Taihu and Chaohu, but a stricter TP target (0.05 mg/L) in Dianchi Lake. To maintain MCs concentrations below 1.0 μg/L, the estimated TN threshold in three lakes was 1.8 mg/L, but the effect can be counteracted by the increase of temperature. Overall, the present approach provides an efficient way to integrate empirical knowledge into the data-driven model and is helpful for the management of water resources.
由于营养物质富化和气候变化,近些年产毒蓝藻水华的频率增加了。由于微囊藻水华与不同的环境条件有关,因此确定潜在的营养物质控制目标可以帮助水质管理者降低微囊藻毒素(MCs)风险的可能性。然而,复杂的生物相互作用和现场数据的局限性限制了我们对营养物-微囊藻毒素关系的理解。本研究开发了一个具有细胞内和细胞外 MCs 的贝叶斯建模框架,用于描述不同环境和生物因素之间的关系。该模型适用于跨湖数据集,包括中国的三个受水华困扰的湖泊,并估计了总氮(TN)和总磷(TP)的潜在阈值。使用贝叶斯更新过程估计了特定于湖泊的营养物阈值。我们的结果表明,双氮和磷的减少可以控制蓝藻毒素的风险。通过在太湖和巢湖达到 TP(0.10mg/L)的假定阈值,可以大大抑制总微囊藻生物量,但在滇池,需要更严格的 TP 目标(0.05mg/L)。为了将 MCs 浓度维持在 1.0μg/L 以下,三个湖泊中估计的 TN 阈值为 1.8mg/L,但温度的升高会抵消这种效果。总体而言,本方法为将经验知识整合到数据驱动模型中提供了一种有效的方法,有助于水资源管理。