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Forecasting Carbon Emissions Related to Energy Consumption in Beijing-Tianjin-Hebei Region Based on Grey Prediction Theory and Extreme Learning Machine Optimized by Support Vector Machine Algorithm

机译:基于灰色预测理论和支持向量机算法优化的极限学习机预测京津冀地区与能源消耗有关的碳排放

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Carbon emissions and environmental protection issues have brought pressure from the international community during Chinese economic development. Recently, Chinese Government announced that carbon emissions per unit of GDP would fall by 60–65% compared with 2005 and non-fossil fuel energy would account for 20% of primary energy consumption by 2030. The Beijing-Tianjin-Hebei region is an important regional energy consumption center in China, and its energy structure is typically coal-based which is similar to the whole country. Therefore, forecasting energy consumption related carbon emissions is of great significance to emissions reduction and upgrading of energy supply in the Beijing-Tianjin-Hebei region. Thus, this study thoroughly analyzed the main energy sources of carbon emissions including coal, petrol, natural gas, and coal power in this region. Secondly, the kernel function of the support vector machine was applied to the extreme learning machine algorithm to optimize the connection weight matrix between the original hidden layer and the output layer. Thirdly, the grey prediction theory was used to predict major energy consumption in the region from 2017 to 2030. Then, the energy consumption and carbon emissions data for 2000–2016 were used as the training and test sets for the SVM-ELM (Support Vector Machine-Extreme Learning Machine) model. The result of SVM-ELM model was compared with the forecasting results of SVM (Support Vector Machine Algorithm) and ELM (Extreme Learning Machine) algorithm. The accuracy of SVM-ELM was shown to be higher. Finally, we used forecasting output of GM (Grey Prediction Theory) (1, 1) as the input of the SVM-ELM model to predict carbon emissions in the region from 2017 to 2030. The results showed that the proportion of energy consumption seriously affects the amount of carbon emissions. We found that the energy consumption of electricity and natural gas will reach 45% by 2030 and carbon emissions in the region can be controlled below 96.9 million tons. Therefore, accelerating the upgradation of industrial structure will be the key task for the government in controlling the amount of carbon emissions in the next step.
机译:在中国经济发展过程中,碳排放和环境保护问题给国际社会带来了压力。最近,中国政府宣布,到2005年,单位GDP的碳排放量将比2005年下降60-65%,非化石燃料能源将占一次能源消费的20%。京津冀地区是重要的中国的区域能源消耗中心,其能源结构通常以煤炭为基础,与全国相似。因此,预测与能源消耗相关的碳排放量对于京津冀地区的减排和能源供应升级具有重要意义。因此,本研究彻底分析了该地区碳排放的主要能源,包括煤炭,汽油,天然气和煤电。其次,将支持向量机的核函数应用于极限学习机算法,以优化原始隐藏层与输出层之间的连接权重矩阵。第三,使用灰色预测理论预测该地区2017年至2030年的主要能源消耗。然后,使用2000-2016年的能源消耗和碳排放数据作为SVM-ELM(支持向量)的训练和测试集。机器-极限学习机)模型。将SVM-ELM模型的结果与SVM(支持向量机算法)和ELM(极限学习机)算法的预测结果进行了比较。 SVM-ELM的准确性较高。最后,我们使用GM(灰色预测理论)的预测输出(1、1)作为SVM-ELM模型的输入来预测2017年至2030年该地区的碳排放。结果表明,能源消耗的比例严重影响碳排放量。我们发现,到2030年,电力和天然气的能源消耗将达到45%,该地区的碳排放量可控制在9690万吨以下。因此,加快产业结构升级将是政府下一步控制碳排放量的关键任务。

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