Prediction and elucidation of the population dynamics of Microcystis spp. in Lake Dianchi (China) by means of artificial neural networks
نویسندگان
چکیده
Lake Dianchi is a shallow and turbid lake, located in Southwest China. Since 1985, Lake Dianchi has experienced severe cyanabacterial blooms (dominated by Microcystis spp.). In extreme cases, the algal cell densities have exceeded three billion cells per liter. To predict and elucidate the population dynamics of Microcystis spp. in Lake Dianchi, a neural network based model was developed. The correlation coefficient (R 2) between the predicted algal concentrations by the model and the observed values was 0.911. Sensitivity analysis was performed to clarify the algal dynamics to the changes of environmental factors. The results of a sensitivity analysis of the neural network model suggested that small increases in pH could cause significantly reduced algal abundance. Further investigations on raw data showed that the response of Microcystis spp. concentration to pH increase was dependent on algal biomass and pH level. When Microcystis spp. population and pH were moderate or low, the response of Microcystis spp. population would be more likely to be positive in Lake Dianchi; contrarily, Microcystis spp. population in Lake Dianchi would be more likely to show negative response to pH increase when Microcystis spp. population and pH were high. The paper concluded that the extremely high concentration of algal population and high pH could explain the distinctive response of Microcystis spp. population to +1 SD (standard deviation) pH increase in Lake Dianchi. And the paper also elucidated the algal dynamics to changes of other environmental factors. One SD increase of water temperature (WT) had strongest positive relationship with Microcystis spp. biomass. Chemical oxygen demand (COD) and total phosphorus (TP) had strong positive effect on Microcystis spp. abundance while total nitrogen (TN), biological oxygen demand in five days (BOD 5), and dissolved oxygen had only weak relationship with Microcystis spp. concentration. And transparency (Tr) had moderate positive relationship with Microcystis spp. concentration. Algal bloom Neural network pH Sensitivity analysis 1. Introduction Algal bloom, an explosive growth of phytoplankton, has become a chronic problem in many eutrophic freshwater lakes and reservoirs in China. With the procedure of urbanization and industrialization of China, explosion-like formations of algal blooms increasingly pollute fresh water ecosystems. They lead to enormous costs by affecting drinking water supply, aquaculture systems and tourism.3". Lake Dianchi is a representative, highly eutrophicated lake in Southwest China, which experienced severe cyanobacteria blooms (dominated by Microcystis spp.) and the algal biomass has exceeded three billion cells per liter
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ورودعنوان ژورنال:
- Ecological Informatics
دوره 2 شماره
صفحات -
تاریخ انتشار 2007