基于注意机制的LSTM方法碳价格预测

Xiaohu Luo, Runxin Yu, Yuchen Guo, Heping Jia, Dunnan Liu
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引用次数: 0

摘要

随着双碳目标的提出,碳市场逐渐成为人们关注的焦点,准确预测碳价格可以帮助人们更好地了解碳市场动态,合理分配碳排放配额。本文基于注意机制和长短期记忆(LSTM)网络进行了相关研究,提出了基于注意机制的碳价格预测模型,对LSTM方法进行了改进。该模型可以区分信息的重要性,从而获得时间序列数据中的重要特征进行预测,提高预测精度。然后,以欧洲能源交易所的碳价数据为例验证了模型的有效性,并将所提模型的预测结果与其他常用预测模型的预测结果进行了比较。结果表明,本文提出的碳价格预测模型具有较好的拟合效果。
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Carbon Price Prediction of LSTM Method Based on Attention Mechanism
With the proposal of double carbon target, carbon market has gradually become the focus of people’s attention, and accurate prediction of carbon price can help people better understand the dynamics of carbon market and allocate carbon emission quota reasonably. This paper carries out relevant research based on attention mechanism and long short-term memory (LSTM) network, and proposes a carbon price prediction model based on attention mechanism to improve LSTM method. This model can distinguish the importance of information, and in this way, important features in time series data can be obtained for prediction to improve the accuracy. Then, this paper takes the carbon price data of European Energy Exchange as an example to verify the performance of the model, and compares prediction results of the proposed model with those of other common forecasting models. The results show that the carbon price prediction model proposed in this paper has better fitting effect.
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