Ahn Chi-Yong, Oh Hee-Mock, Park Young-Seuk
Environmental Biotechnology Research Center, Korea Research Institute of Bioscience and Biotechnology (KRIBB), 125 Gwahak-ro, Yuseong-gu, Daejeon 305-806, Republic of KoreaDepartment of Biology, Kyung Hee University, Seoul 130-701, Republic of Korea.
J Phycol. 2011 Jun;47(3):495-504. doi: 10.1111/j.1529-8817.2011.00990.x. Epub 2011 May 9.
Cyanobacterial blooms are a common issue in eutrophic freshwaters, and some cyanobacteria produce toxins, threatening the health of humans and livestock. Microcystin, a representative cyanobacterial hepatotoxin, is frequently detected in most Korean lakes and reservoirs. This study developed predictive models for cyanobacterial bloom using artificial neural networks (ANNs; self-organizing map [SOM] and multilayer perceptron [MLP]), including an evaluation of related environmental factors. Fourteen environmental factors, as independent variables for predicting the cyanobacteria density, were measured weekly in the Daechung Reservoir from spring to autumn over 5 years (2001, 2003-2006). Cyanobacterial density was highly associated with environmental factors measured 3 weeks earlier. The SOM model was efficient in visualizing the relationships between cyanobacteria and environmental factors, and also for tracing temporal change patterns in the environmental condition of the reservoir. And the MLP model exhibited a good predictive power for the cyanobacterial density, based on the environmental factors of 3 weeks earlier. The water temperature and total dissolved nitrogen were the major determinants for cyanobacteria. The water temperature had a stronger influence on cyanobacterial growth than the nutrient concentrations in eutrophic waters. Contrary to general expectations, the nitrogen compounds played a more important role in bloom formation than the phosphorus compounds.
蓝藻水华是富营养化淡水水体中常见的问题,一些蓝藻会产生毒素,威胁人类和牲畜的健康。微囊藻毒素是一种典型的蓝藻肝毒素,在韩国的大多数湖泊和水库中都经常被检测到。本研究利用人工神经网络(ANNs;自组织映射[SOM]和多层感知器[MLP])建立了蓝藻水华预测模型,包括对相关环境因素的评估。在5年(2001年、2003 - 2006年)的时间里,从春季到秋季每周在大清水库测量14种环境因素,作为预测蓝藻密度的自变量。蓝藻密度与3周前测量的环境因素高度相关。SOM模型在可视化蓝藻与环境因素之间的关系以及追踪水库环境条件的时间变化模式方面很有效。基于3周前的环境因素,MLP模型对蓝藻密度具有良好的预测能力。水温与总溶解氮是蓝藻的主要决定因素。在富营养化水体中,水温对蓝藻生长的影响比营养盐浓度更大。与一般预期相反,氮化合物在水华形成中比磷化合物发挥了更重要的作用。