Prediction of Brent crude oil price based on LSTM model under the background of low-carbon transition
- URL: http://arxiv.org/abs/2409.12376v1
- Date: Thu, 19 Sep 2024 00:25:22 GMT
- Title: Prediction of Brent crude oil price based on LSTM model under the background of low-carbon transition
- Authors: Yuwen Zhao, Baojun Hu, Sizhe Wang,
- Abstract summary: This paper uses a deep learning model with three layers of LSTM units to predict the crude oil price in the next few days.
The results show that the LSTM model performs well in capturing the overall price trend, although there is some deviation during the period of sharp price fluctuation.
- Score: 1.7068557927955383
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: In the field of global energy and environment, crude oil is an important strategic resource, and its price fluctuation has a far-reaching impact on the global economy, financial market and the process of low-carbon development. In recent years, with the gradual promotion of green energy transformation and low-carbon development in various countries, the dynamics of crude oil market have become more complicated and changeable. The price of crude oil is not only influenced by traditional factors such as supply and demand, geopolitical conflict and production technology, but also faces the challenges of energy policy transformation, carbon emission control and new energy technology development. This diversified driving factor makes the prediction of crude oil price not only very important in economic decision-making and energy planning, but also a key issue in financial markets.In this paper, the spot price data of European Brent crude oil provided by us energy information administration are selected, and a deep learning model with three layers of LSTM units is constructed to predict the crude oil price in the next few days. The results show that the LSTM model performs well in capturing the overall price trend, although there is some deviation during the period of sharp price fluctuation. The research in this paper not only verifies the applicability of LSTM model in energy market forecasting, but also provides data support for policy makers and investors when facing the uncertainty of crude oil price.
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