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首页> 外文期刊>Journal of ambient intelligence and humanized computing >The pollutant concentration prediction model of NNP-BPNN based on the INI algorithm, AW method and neighbor-PCA
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The pollutant concentration prediction model of NNP-BPNN based on the INI algorithm, AW method and neighbor-PCA

机译:基于INI算法,AW方法和邻域PCA的NNP-BPNN污染物浓度预测模型。

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At present, the numerical prediction models fail to predict effectively due to the lack of basic data of pollutant concentration in a short term in China. Therefore, it is necessary to study the statistical prediction methods based on historical data. The traditional Back Propagation Neural Network (BPNN) has been used to predict the pollutant concentration. The missing data also has an impact on modeling, and how to use historical data effectively of multiple monitoring stations in a city should be concerned. In this study, the Improved Newton Interpolation (INI) algorithm has been adopted to solve the problem of missing data, and assigning weight (AW) method has been proposed to enrich data of per station. The Neighbor-Principal Component Analysis (Neighbor-PCA) algorithm has been employed to reduce the dimension of data in order to avoid overfitting caused by high dimension and linear correlation of multiple factors. The strategy of early stopping and gradient descent algorithm have been utilized to avoid the slow convergence speed and overfitting by the traditional BPNN. The methods (INI, AW, Neighbor-PCA) have been integrated as a prediction model named NNP-BPNN. Forecasting experiments of PM2.5 have shown that the NNP-BPNN model can improve the accuracy and generalization ability of the traditional BPNN model. Specifically, the average root mean square error (RMSE) has been reduced by 24% and the average correlation relevancy has been increased by 9.4%. It took 20 s to implement BPNN model, it took 170 s to implement NN-BPNN model and it took 47 s to implement NNP-BPNN model. The time used by NNP-BPNN model is reduced by 72% than that of NN-BPNN model.
机译:目前,由于缺乏短期的污染物浓度基础数据,数值预测模型未能有效预测。因此,有必要研究基于历史数据的统计预测方法。传统的反向传播神经网络(BPNN)已用于预测污染物浓度。丢失的数据也会影响建模,应该关注如何有效使用城市中多个监控站的历史数据。本研究采用改进牛顿插值(INI)算法解决数据丢失的问题,并提出了赋权(AW)的方法来丰富每个站点的数据。邻居主成分分析(Neighbor-PCA)算法已被用来减小数据的维数,以避免由于高维和多因素的线性相关性而导致的过拟合。传统的BPNN已经采用了提前停止策略和梯度下降算法来避免收敛速度慢和过度拟合。方法(INI,AW,Neighbor-PCA)已集成为名为NNP-BPNN的预测模型。 PM2.5的预测实验表明,NNP-BPNN模型可以提高传统BPNN模型的准确性和泛化能力。具体来说,平均均方根误差(RMSE)已降低了24%,平均相关性已提高了9.4%。实施BPNN模型需要20 s,实施NN-BPNN模型需要170 s,而NNP-BPNN模型则需要47 s。与NN-BPNN模型相比,NNP-BPNN模型使用的时间减少了72%。

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