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Forecasting CO 2 emissions in Hebei, China, through moth-flame optimization based on the random forest and extreme learning machine

机译:预测河北省河北省的CO <下标> 2 排放,通过基于随机森林和极端学习机的蛾火焰优化

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摘要

The surge of carbon dioxide emission plays a dominant role in global warming and climate change, posing an enormous threat to the development of human being and a profound impact on the global ecosystem. Thus, it is essential to analyze the carbon dioxide emission change trend through an accurate prediction to inform reasonable energy-saving emission reduction measures and effectively control the carbon dioxide emission from the source. This paper proposed a hybrid model by combining the random forest and extreme learning machine together for the carbon dioxide emission forecasting in this paper; the random forest is applied for influential factors analysis and the extreme learning machine for the prediction. To improve the performance of the prediction model, moth-flame optimization is adopted to optimize initial weight and bias in extreme learning machine. A case study whose data is derived from Hebei Province, China, during the period 1995–2015 is conducted to verify the effectiveness of the proposed model. Results show that the novel model outperforms the compared parallel models in carbon dioxide emission prediction and has the potential to improve the accuracy of CO~(2)emission forecasting.
机译:二氧化碳排放的激增在全球变暖和气候变化中起着主导作用,对人类的发展和对全球生态系统的深远影响构成了巨大威胁。因此,必须通过准确的预测来分析二氧化碳排放变化趋势,以便能够提供可靠的节能减排措施,并有效地控制来自来源的二氧化碳排放。本文提出了一种通过将随机森林和极端学习机组合在一起进行了混合模型,用于本文中的二氧化碳排放预测;随机森林适用于影响因素分析和预测的极限学习机。为了提高预测模型的性能,采用蛾火焰优化来优化极端学习机中的初始重量和偏差。在1995 - 2015年期间,中国数据来自中国的数据来自河北省的案例研究,以验证拟议模型的有效性。结果表明,新颖的模型优于二氧化碳排放预测中的相比平行模型,具有提高CO〜(2)排放预测的准确性。

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