Iron Ore Price Forecast based on a Multi-Echelon Tandem Learning Model

IF 4.8 2区 地球科学 Q1 GEOSCIENCES, MULTIDISCIPLINARY
Weixu Pan, Shi Qiang Liu, Mustafa Kumral, Andrea D’Ariano, Mahmoud Masoud, Waqar Ahmed Khan, Adnan Bakather
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引用次数: 0

Abstract

Iron ore has had a highly global market since setting a new pricing mechanism in 2008. With current dollar values, iron ore concentrate for sale price, which was $39 per tonne (62% Fe) in December 2015, reached $218 per tonne (62% Fe) in mid-2021. It is hovering around $120 in October 2023 (cf. https://tradingeconomics.com/commodity/iron-ore). The uncertainty associated with these fluctuations creates hardship for iron ore mine operators and steelmakers in planning mine development and making future sale agreements. Therefore, iron ore price forecasting is of special importance. This paper proposes a cutting-edge multi-echelon tandem learning (METL) model to forecast iron ore prices. This model comprises variational mode decomposition (VMD), multi-head convolutional neural network (MCNN), stacked long short-term-memory (SLSTM) network, and attention mechanism (AT). In the proposed METL (i.e., the combination of VMD, MCNN, SLSTM, AT) model, the VMD decomposes the time series data into sub-sequential modes for better measuring volatility. Then, the MCNN is applied as an encoder to extract spatial features from the decomposed sub-sequential modes. The SLSTM network is adopted as a decoder to extract temporal features. Finally, the AT is employed to capture spatial–temporal features to obtain the complete forecasting process. Extensive computational experiments are conducted based on daily-based and weekly-based iron ore price datasets with different time scales. It was validated that the proposed METL model outperformed its single-echelon and other categorized models by 10–65% in range. The proposed METL model can improve the prediction accuracy of iron ore prices and thus help mining and steelmaking enterprises to determine their sale or purchase strategies.

Abstract Image

基于多梯队串联学习模型的铁矿石价格预测
自 2008 年制定新的定价机制以来,铁矿石市场高度全球化。以当前美元价值计算,2015 年 12 月铁精矿销售价格为每吨 39 美元(62% 铁),2021 年中期达到每吨 218 美元(62% 铁)。2023 年 10 月,该价格徘徊在 120 美元左右(参见 https://tradingeconomics.com/commodity/iron-ore)。这些波动带来的不确定性给铁矿运营商和钢铁制造商规划矿山开发和签订未来销售协议造成了困难。因此,铁矿石价格预测尤为重要。本文提出了一种用于预测铁矿石价格的前沿多螺旋串联学习(METL)模型。该模型由变模分解(VMD)、多头卷积神经网络(MCNN)、堆叠长短期记忆(SLSTM)网络和注意力机制(AT)组成。在拟议的 METL(即 VMD、MCNN、SLSTM 和 AT 的组合)模型中,VMD 将时间序列数据分解为子序列模式,以便更好地测量波动性。然后,将 MCNN 用作编码器,从分解的子序列模式中提取空间特征。SLSTM 网络被用作解码器来提取时间特征。最后,采用 AT 捕捉空间-时间特征,从而获得完整的预测过程。基于不同时间尺度的每日和每周铁矿石价格数据集进行了广泛的计算实验。实验验证了所提出的 METL 模型在 10-65% 的范围内优于其单麋鹿模型和其他分类模型。所提出的 METL 模型可以提高铁矿石价格预测的准确性,从而帮助采矿和炼钢企业确定其销售或采购策略。
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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来源期刊
Natural Resources Research
Natural Resources Research Environmental Science-General Environmental Science
CiteScore
11.90
自引率
11.10%
发文量
151
期刊介绍: This journal publishes quantitative studies of natural (mainly but not limited to mineral) resources exploration, evaluation and exploitation, including environmental and risk-related aspects. Typical articles use geoscientific data or analyses to assess, test, or compare resource-related aspects. NRR covers a wide variety of resources including minerals, coal, hydrocarbon, geothermal, water, and vegetation. Case studies are welcome.
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