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人工神经网络方法在资源与环境预测方面的应用
引用本文:邬红娟,林子扬,郭生练.人工神经网络方法在资源与环境预测方面的应用[J].长江流域资源与环境,2000,9(2):237-241.
作者姓名:邬红娟  林子扬  郭生练
作者单位:水利部中国科学院水库渔业研究所!武汉430079(邬红娟,林子扬),武汉水利电力大学!武汉430072(郭生练)
摘    要:用人工神经网络方法对不同水域、不同环境因子之间非线性和不确定性的复杂关系进行学习训练并预测检验。结果表明:人工神经网络方法在模拟和预测方面 优于传统的统计回归模型,在资源与环境方面的应用是可行的。具有较强的模拟预测能力。与传统的回归模型相比,人工神经网络方法不要求监测数据具有很强的规律性,就可用后的网络模型对其进行预报,燕且预测相对误差均比回归模型预测相对误差要小,具有一定的实用性。两个实例的应用

关 键 词:人工神经网络方法  资源  环境  预测

THE APPLICATION OF ARTIFICIAL NEURAL NETWORKS IN THE RESOURCES AND ENVIRONMENT
WU Hong juan\,Lin ZI yang\,GAO Sheng lian\.THE APPLICATION OF ARTIFICIAL NEURAL NETWORKS IN THE RESOURCES AND ENVIRONMENT[J].Resources and Environment in the Yangtza Basin,2000,9(2):237-241.
Authors:WU Hong juan\  Lin ZI yang\  GAO Sheng lian\
Institution:WU Hong juan\+1,Lin ZI yang\+1,GAO Sheng lian\+2
Abstract:An artificial neural network(ANN) model was developed and used in different water bodies to predict timing for environmental changes as well as for the dynamics of resources.The results show that the ANN model is superior to classical statistical models (CSM) and can be used as predictive tool for highly non linear phenomena. ANN has the properties of parallel distribution processing and is adaptive in nature. Compared with CSM, two examples proved that ANN could be trained successfully, even if the available data were insufficient and irregular, while CSM showed the limit in selecting model type and non-linear optimization. There is no doubt that ANN has broad prospective in the development of resources and management of water quality.
Keywords:artificial neural networks  resources  environment  prediction  application
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