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Multi-Source Information Fusion Based on Neural Networks in Air Quality Forecasting

机译:基于神经网络在空气质量预测中的多源信息融合

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To forecast the air quality accurately, the model of air quality using multi-source information fusion technology based on neural network is proposed. The back propagation (BP) neural network models with time-series and no time-series training samples, the nonlinear auto-regressive (NARX) neural network with time-series training sample are respectively established on the MATLAB platform. The daily data of NO_2, O_3, PM_(10) and AQI are predicted using the models respectively. The conclusions are as follows: the three models with reliability, high prediction accuracy for air quality forecasting are successfully established. The accuracy of NARX with dynamic feedback capability is higher than BP neural network, while the BP neural network of larger non time-series training sample is of higher prediction accuracy.
机译:为了准确预测空气质量,提出了使用基于神经网络的多源信息融合技术的空气质量模型。具有时间序列和没有时间级训练样本的后传播(BP)神经网络模型,非线性自动回归(NARX)神经网络,在MATLAB平台上分别建立了具有时间级训练样本的非线性自动回归(NARX)神经网络。使用该模型预测NO_2,O_3,PM_(10)和AQI的日常数据。结论如下:具有可靠性,空气质量预测的高预测精度的三种模型。 NARX具有动态反馈能力的NARX的准确性高于BP神经网络,而较大的非时间级训练样本的BP神经网络具有更高的预测精度。

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