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A new hybrid optimization ensemble learning approach for carbon price forecasting

机译:碳价格预测新的混合优化集合学习方法

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摘要

Accurate carbon price forecast plays a vital role in energy conservation, emission reduction and environmental protection. In previous studies, more attention was focused on the prediction accuracy and stability, while the problem of disharmony between the prediction model and the data pattern is usually ignored. Considering the matching utility with deeper understanding of data and model, this paper proposes a novel approach to forecast carbon price, which combines the data preprocessing mechanism, decomposition technology, forecast module with selection and matching strategy and ensemble model based on an original hybrid optimization algorithm. According to a comprehensive evaluation index in consideration of several evaluation perspectives, the optimal parameter structures of the three forecast models are selected in this framework. Then, the data components decomposed by variational mode decomposition are reconstructed into three novel range entropy series with different levels of complexity by range entropy. As a result, the matching relation between the three forecasting models and the three range entropy series is correspondingly established. Additionally, a feedback neural network optimized by hybrid optimization algorithm, which persists more superiorities of reasonable weight assignment than the usual ensemble method, is initially used to synthesize three forecasting results of range entropy series. The carbon price data from four different trading markets in China is used to test the novel approach and the experimental results indicate that it does enhance the performance of carbon price forecasting, and provide a convincing tool for the operation and investment of the carbon markets.
机译:准确的碳价格预测在节能,减排和环保方面发挥着至关重要的作用。在以前的研究中,更多地关注预测准确性和稳定性,而预测模型与数据模式之间的不和谐的问题通常被忽略。本文考虑匹配的实用程序对数据和模型的更深入了解,提出了一种新的预测碳价格的方法,它将数据预处理机制,分解技术,预测模块与选择和匹配策略和集合模型相结合,基于原始混合优化算法。根据综合评估指数考虑了几个评估观点,在该框架中选择了三种预测模型的最佳参数结构。然后,通过变化模式分解分解的数据分量重构成三个新颖的范围熵系,其具有不同程度的复杂性,范围熵。结果,相应地建立了三种预测模型与三个范围熵系列之间的匹配关系。另外,通过混合优化算法优化的反馈神经网络,其持续性比通常的合理方法的合理权重分配的更优选,最初用于合成范围熵系列的三个预测结果。来自中国四个不同交易市场的碳价格数据用于测试新颖的方法,实验结果表明它确实提高了碳价格预测的性能,并为碳市场的运作和投资提供了令人信服的工具。

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