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首页> 外文期刊>The Science of the Total Environment >Forecasting CO_2 emissions in Chinas commercial department, through BP neural network based on random forest and PSO
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Forecasting CO_2 emissions in Chinas commercial department, through BP neural network based on random forest and PSO

机译:通过基于随机森林和PSO的BP神经网络预测中国商务部门的CO_2排放

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摘要

In recent years, with the worsening of the global climate problem, the issue of CO_2 emissions has gradually attracted people's attention. Accurately predicting CO_2 emissions and analyzing its change trends are important elements in addressing climate issues at this stage. Although the predecessors have done a lot of research on CO_2 emissions and also established some prediction models, few people have adopted quantifiable methods to select prediction indicators and studied the CO_2 emissions of commercial department. So this paper establishes a novel BP neural network prediction model based on the index quantization ability of random forest and the performance optimization ability of PSO. For further strengthening the prediction accuracy, several improvements have been made to PSO. Finally, the validity of the model is tested using panel data from 1997 to 2017 of the Chinese commercial sector. The results as follows: (1) Compared with other parallel models, the newly established hybrid forecasting model can more accurately predict the CO_2 emissions of China's commercial department. (2) The prediction indexes selected after quantification based on the random forest can improve the prediction accuracy. (3) These improvements of PSO in this paper can greatly enhance the prediction effect of the hybrid prediction model.
机译:近年来,随着全球气候问题的恶化,CO_2排放问题逐渐引起人们的关注。准确预测CO_2排放并分析其变化趋势是现阶段解决气候问题的重要因素。尽管前人对CO_2的排放进行了大量研究,并建立了一些预测模型,但很少有人采用可量化的方法来选择预测指标并研究了商业部门的CO_2排放。因此,本文基于随机森林的指标量化能力和PSO的性能优化能力,建立了一种新的BP神经网络预测模型。为了进一步增强预测精度,对PSO进行了一些改进。最后,使用1997年至2017年中国商业部门的面板数据对模型的有效性进行了检验。结果表明:(1)与其他并行模型相比,新建立的混合预测模型可以更准确地预测中国商务部门的CO_2排放量。 (2)基于随机森林量化后选择的预测指标可以提高预测精度。 (3)本文对PSO的这些改进可以大大提高混合预测模型的预测效果。

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