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基于地理分区及神经网络的湖泊水库富营养化研究
引用本文:李伟峰,毛劲乔.基于地理分区及神经网络的湖泊水库富营养化研究[J].环境科学,2011,32(11):3200-3206.
作者姓名:李伟峰  毛劲乔
作者单位:1. 中国科学院生态环境研究中心,北京,100085
2. 河海大学水利水电学院,南京,210098
基金项目:国家重点基础研究发展规划(973)项目(2008CB418106);中国科学院知识创新工程重大项目(KZCX1-YW-14-5);国家杰出青年科学基金项目(50925932);国家自然科学基金项目(41001348)
摘    要:构建了一个基于地理分区及神经网络的湖泊水库富营养化综合评价体系.以美国环境保护署Nutrient Criteria Database数据库为参照对象,有针对性地研究我国湖泊水库的情况,首次提出了基于地理分区的简易评价标准,对不同地理特征的水体富营养化临界值进行了定量研究.同时本研究还建立了基于神经网络的富营养化评价模型...

关 键 词:湖泊水库  富营养化  地理分区  神经网络  综合评价体系
收稿时间:2010/10/28 0:00:00
修稿时间:2011/4/28 0:00:00

An Integrated Eutrophication Assessment for Lakes and Reservoirs
LI Wei-feng and MAO Jing-qiao.An Integrated Eutrophication Assessment for Lakes and Reservoirs[J].Chinese Journal of Environmental Science,2011,32(11):3200-3206.
Authors:LI Wei-feng and MAO Jing-qiao
Institution:LI Wei-feng1,MAO Jing-qiao2(1.Research Center for Eco-Environmental Sciences,Chinese Academy of Sciences,Beijing 100085,China,2.College of Water Conservancy and Hydropower Engineering,Hohai University,Nanjing 210098,China)
Abstract:An integrated eutrophication assessment framework is developed for lakes and reservoirs based on an ecogeographical classification method and an artificial neural network model. Using the USEPA Nutrient Criteria Database as the basic reference and considering the ecogeographical characteristics of Chinese lakes and reservoirs, a simple eutrophication assessment criterion considering the ecogeographical characteristics is proposed for the first time. This criterion places the emphasis on the determination of critical values of key parameters for various regions. Moreover, an artificial neural network (ANN) assessment model is developed, considering the complexity and nonlinearity of eutrophication process. It is found that this ANN assessment model offers the advantage to assess with more accuracy the trophic status in nitrogen-limited water bodies. Integrating such two assessment methods can establish a simple but general eutrophication assessment framework; verification with 30 lakes and reservoirs shows that it can be served as a reliable and cost-effective tool for aquatic environmental management.
Keywords:lake and reservoir  eutrophication  ecogeographical classification  artificial neural network  integrated eutrophication assessment
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