Abstract

Accurate prediction of crude oil prices is meaningful for reducing firm risks, stabilizing commodity prices and maintaining national financial security. Wrong crude oil price forecasts can bring huge losses to governments, enterprises, investors and even cause economic and social instability. Many classic econometrics and computational approaches show good performance for the ordinary time series prediction tasks, but not satisfactory in crude oil price predictions. They ignore the characteristics of non-linearity and non-stationarity of crude oil prices data, which hinder an accurate prediction and eventually lead to poor accuracy or the wrong result. Empirical mode decomposition (EMD) and ensemble EMD (EEMD) solve the problems of non-stationary time series forecasting, but they also generate new problems of mode mixing and reconstruction errors. We propose a hybrid method that is combination of the complete ensemble empirical mode decomposition with adaptive noise (CEEMDAN) and multi-layer gated recurrent unit (ML-GRU) neural network to solve the abovementioned issues. This not only deals with the issue of mode mixing effectively, but also makes the reconstruction error of data close to zero. Multi-layer GRU has an excellent ability of nonlinear data-fitting. The experimental results of real WTI crude oil dataset show that the proposed approach perform better in crude oil prices forecasts than some state-of-the-art models.

Highlights

  • Crude oil was once considered to be the blood flowing through the veins of the world economy and played an extremely critical role in the development of the world economy

  • The goal of this study is to propose a new novel approach of CEEMDAN-based multi-layer gated recurrent unit networks (CEEMDAN-ML-GRU)

  • We introduce a novel approach combining CEEMDAN and multi-layer GRU

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Summary

Introduction

Crude oil was once considered to be the blood flowing through the veins of the world economy and played an extremely critical role in the development of the world economy. In light of the International Energy Agency (IEA) data, the global consumption of oil reached 1.0075 million barrels per day in 2019. In meeting world energy needs, oil still plays the most important role. Asian emerging market countries have become the main contributors to the growth in crude oil demand. The rapid economic growth has prompted them to significantly increase demand for crude oil. Sadorsky [1] verified the impact of fluctuations in crude oil prices on companies of different firm size through evidence from the stock market. Rising oil prices may lead to inflation and hinder economic growth. Volatility in oil prices increases risk and uncertainty to financial markets [2]

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