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Multi-ETS carbon prices forecasting based on EMD-SVM model

机译:基于EMD-SVM模型的多ETS碳价格预测

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With the widespread attention of governments around the world on climate issues, carbon pricing-related policies have been gradually adopted by countries to deal with climate change. Among these policy tools, the carbon emissions trading system (ETS) is the most widely used. Carbon price plays a crucial role in this trading system, not only determining the trading activity, but also affecting the market stability. Therefore, carbon price prediction is so significant that we are motivated to study it. However, carbon price presents complex nonlinear dynamic characteristics, which makes some existing methods inaccurate. To address it, this paper combines empirical mode decomposition (EMD) and support vector machine (SVM) to predict carbon prices. The original carbon prices are signal-decomposed by using EMD and the decomposed signal is predicted by using SVM. Based on the EMD-SVM model, this paper conducts empirical analysis on the carbon prices of multi-ETS, including European Union ETS and China ETS pilots. The results of analysis show that the EMD-SVM model has better overall forecasting ability, and carbon prices forecasting performance of China ETS pilots is better than that of the EU ETS, while the short-term forecasting results of the model show the opposite conclusion. The proposed EMD-SVM model is advisable in carbon prices forecasting for market participants and regulatory authorities of multi-ETS.
机译:随着世界各地政府对气候问题的广泛关注,各国逐步采用碳定价的政策来应对气候变化。在这些政策工具中,碳排放交易系统(ETS)是最广泛使用的。碳价格在本次交易系统中发挥着至关重要的作用,不仅确定交易活动,而且影响市场稳定性。因此,碳价格预测是如此重要的是,我们有动力研究它。然而,碳价格呈现复杂的非线性动态特性,这使得一些现有方法不准确。为了解决它,本文将经验模式分解(EMD)结合起来,支持向量机(SVM)预测碳价格。原始碳价格是通过使用EMD进行信号分解,并通过使用SVM来预测分解信号。基于EMD-SVM模型,本文对多ETES的碳价格进行了实证分析,包括欧盟ETS和中国ETS飞行员。分析结果表明,EMD-SVM模型具有更好的整体预测能力,碳价格预测中国ETS飞行员的表现优于欧盟ETS,而该模型的短期预测结果表明了相反的结论。拟议的EMD-SVM模型是建议的,以碳价格预测市场参与者和多ETE的监管机构。

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