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A BP Neural Network Prediction Model of the Urban Air Quality Based on Rough Set

机译:基于粗糙集的城市空气质量的BP神经网络预测模型

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The paper gives a BP neural network (BPNN) prediction model of the ambient air quality based on rough set theory. We make first the reduction of monitoring data of the pollution sources using the theory of rough set, extract the tidy rules. Then the topological structure of the multilayer BPNN and the nerve cells of the connotative layer are defined with these rules. After that the connected weight values of corresponding nodes of the BPNN are ascertained. Using BP arithmetic, the prediction model is trained with the monitoring data of the pollution sources and air monitor stations for gaining the various parameters of it. Finally, the model after training is used to predict the urban air quality with certain meteorological parameters. The result of the prediction model was proved that it is more accurate than the common BPNN.
机译:本文给出了基于粗糙集理论的环境空气质量的BP神经网络(BPNN)预测模型。我们首先利用粗糙集理论减少污染源的监测数据,提取整洁规则。然后用这些规则定义多层BPNN的拓扑结构和内涵层的神经细胞。之后,确定BPNN的相应节点的连接权重值。使用BP算法,预测模型接受了监视污染源和空气监测站的监测数据,以获得其各种参数。最后,培训后的模型用于预测城市空气质量,具有某些气象参数。证明了预测模型的结果比公共BPNN更准确。

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