A combined framework for carbon emissions prediction integrating online search attention

Dabin Zhang, Zehui Yu, Liwen Ling, Huanling Hu, Ruibin Lin
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Abstract

As CO2 emissions continue to rise, the problem of global warming is becoming increasingly serious. It is important to provide a robust management decision-making basis for the reductions of carbon emissions worldwide by predicting carbon emissions accurately. However, affected by various factors, the prediction of carbon emissions is challenging due to its nonlinear and nonstationary characteristics. Thus, we propose a combination forecast model, named CEEMDAN-GWO-SVR, which incorporates multiple features to predict trends in China’s carbon emissions. First, the impact of online search attention and public health emergencies are considered in carbon emissions prediction. Since the impact of different variables on carbon emissions is lagged, the grey relational degree is used to identify the appropriate lag series. Second, irrelevant features are eliminated through RFECV. To address the issue of feature redundancy of online search attention, we propose a dimensionality reduction method based on keyword classification. Finally, to evaluate the features of the proposed framework, four evaluation indicators are tested in multiple machine learning models. The best-performed model (SVR) is optimized by CEEMDAN and GWO to enhance prediction accuracy. The empirical results indicate that the proposed framework maintains good performance in both multi-scenario and multi-step prediction.
结合在线搜索关注度的碳排放预测组合框架
随着二氧化碳排放量的不断增加,全球变暖问题日益严重。通过准确预测碳排放量,为全球减少碳排放提供有力的管理决策依据非常重要。然而,受各种因素的影响,碳排放量的预测具有非线性和非平稳性的特点,因此具有很大的挑战性。因此,我们提出了一个综合预测模型,命名为 CEEMDAN-GWO-SVR,该模型结合了多种特征来预测中国的碳排放趋势。首先,在碳排放预测中考虑了网络搜索关注度和突发公共卫生事件的影响。由于不同变量对碳排放的影响具有滞后性,因此采用灰色关联度来确定合适的滞后序列。其次,通过 RFECV 消除无关特征。针对在线搜索关注的特征冗余问题,我们提出了一种基于关键词分类的降维方法。最后,为了评估所提框架的特征,我们在多个机器学习模型中测试了四个评估指标。通过 CEEMDAN 和 GWO 对表现最好的模型(SVR)进行优化,以提高预测准确性。实证结果表明,所提出的框架在多场景和多步骤预测中都保持了良好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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