Application of RBF Neural Network in Atmospheric Environmental Quality Assessment under Industrial Property Right Structure

Ziwei Wang, Guangtao Zhang, Huihuang Liu

Ekoloji, 2019, Issue 107, Pages: 1115-1121, Article No: e107131

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Abstract

Firstly, this paper analyses the structure system of industrial property right under the background of the environment. In the evaluation of atmospheric environmental quality, RBF neural network model is used in the article. Different from BP network, function-connected network realizes the classification of complex patterns by enhancing input patterns. The model is used to study the atmospheric environmental quality of an example. The results show that the application of function-connected network in environmental quality assessment is objective and practical.

Keywords

RBF neural network, environmental quality, assessment

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