Abstract

Wind energy is considered a clear and sustainable substitution for fossil fuel, and the stock index of the wind energy industry is closely related to the oil price fluctuation. Their relationship is characterized by multiscale and time-varying features based on a variety of stakeholders who have different objectives within various time horizons, which makes it difficult to identify the factor in which time scale could be the most influential one in the market. Aiming to explore the correlation between oil price and the wind energy stock index from the time–frequency domain in a dynamic perspective, we propose an algorithm combining the wavelet transform, complex network, and gray correlation analyses and choose the Brent oil price and the international securities exchange (ISE) global wind energy index from January 2006 to October 2015 in daily frequency as data sample. First, we define the multiscale conformation by a set of fluctuation information with different time horizons to represent the fluctuation status of the correlation of the oil–wind nexus rather than by a single original correlation value. Then, we transform the multiscale conformation evolution into a network model, and only 270 multiscale conformations and 710 transmissions could characterize 2451 data points. We find that only 30% of conformations and transmissions work as a backbone of the entire correlation series; through these major conformations, we identify that the main factor that could influence the oil–wind nexus are long-term components, such as policies, the status of the global economy and demand–supply issues. In addition, there is a clustering effect and transmissions among conformations that mainly happen inside clusters and rarely among clusters, which means the interaction of the oil–wind nexus is stable over a short period of time.

Highlights

  • The green gas emissions and climate changes caused by fossil fuel consumption derive an urgent demand of the shift from traditional energy sources to renewable ones [1]

  • We aim to explore the multiscale fluctuation of the correlation between the oil price and the wind energy stock index in the joint time–frequency domain

  • Being different from previous methods, mainly focusing on the time or frequency domain separately, we proposed an integrated research framework combining gray correlation analysis, wavelet transform, and network analysis, which could offer a more comprehensive manner to observe the relationship between the oil price and the wind energy stock index quantitatively in both time and frequency dimensions

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Summary

Introduction

The green gas emissions and climate changes caused by fossil fuel consumption derive an urgent demand of the shift from traditional energy sources to renewable ones [1]. Aiming to examine the fluctuation of the correlation of the oil price and the wind energy stock index, we propose a novel algorithm combining the wavelet transform, the complex network, and gray correlation analyses. We implement the gray correlation to estimate the correlation between the oil price and the wind energy stock index in a point-to-point way We decompose their gray correlation series into a time–frequency domain and define the multiscale conformation for each time point to express the fluctuation status of the correlation of the oil–wind nexus using a set of data from different time horizons rather than using the original single value. The evolution over time could identify fluctuation features of the main influential time scale of interactions across financial markets

Data Description
Co-Movement in Time Domain
Decomposition into the Time–Frequency Domain
Construction of the Multiscale Conformation Evolution Network
Decomposition in Time–Frequency Domain
Evolution Features Analyses
The Clustering Effect
Findings
Conclusions
Full Text
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