Connectedness between artificial intelligence, clean energy, and conventional energy markets: Fresh findings from CQ and WLMC techniques

IF 7.2 1区 地球科学 Q1 GEOSCIENCES, MULTIDISCIPLINARY Gondwana Research Pub Date : 2024-08-31 DOI:10.1016/j.gr.2024.08.013
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Abstract

In line with achieving the objectives of COP27 and SDG7, this paper examines the interdependence of the Artificial Intelligence market, clean energy, and conventional energy markets from 19th December 2017 to 5th May 2023 by using Cross-Quantilogram (CQ) and Wavelet Locale Multiple correlations (WLMC) techniques. Heatmaps of CQ show a bidirectional relationship between the AI market and clean energy at lag one with negative cross-quantile dependence evident throughout most quantiles, especially in normal market conditions. It also indicates a positive relationship between AI return rates and the clean energy market, but only when both datasets are in the same extreme quantiles (10th and 90th). Additionally, WMLC results reveal that time, scale, and investment horizons influence the interaction between AI and clean and non-clean energy industries. A considerable positive association exists between the AI market and traditional energy markets, ranging from 0.6 to 0.8. However, during the pandemic, this dependency turned negative, and it has since been minor, with an uptick in co-movement during Russia – Ukraine conflict. Several policy implications are suggested for the clean energy and conventional energy markets in line with AI.

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人工智能、清洁能源和传统能源市场之间的联系:CQ 和 WLMC 技术的新发现
为了实现 COP27 和 SDG7 的目标,本文采用交叉量表(CQ)和小波位置多重相关(WLMC)技术,研究了 2017 年 12 月 19 日至 2023 年 5 月 5 日期间人工智能市场、清洁能源和传统能源市场的相互依存关系。CQ 热图显示,人工智能市场与清洁能源之间在滞后期一存在双向关系,在大多数量级上,尤其是在正常市场条件下,负的交叉量级依赖性非常明显。它还表明人工智能回报率与清洁能源市场之间存在正相关关系,但只有当两个数据集处于相同的极端分位数(第 10 和第 90 位)时才会出现这种情况。此外,WMLC 的结果显示,时间、规模和投资期限会影响人工智能与清洁能源和非清洁能源行业之间的相互作用。人工智能市场与传统能源市场之间存在相当大的正相关性,范围在 0.6 到 0.8 之间。然而,在大流行病期间,这种依存关系变成了负相关,此后这种依存关系一直较小,在俄罗斯-乌克兰冲突期间,这种共同作用有所上升。根据人工智能,对清洁能源和传统能源市场提出了若干政策影响。
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来源期刊
Gondwana Research
Gondwana Research 地学-地球科学综合
CiteScore
12.90
自引率
6.60%
发文量
298
审稿时长
65 days
期刊介绍: Gondwana Research (GR) is an International Journal aimed to promote high quality research publications on all topics related to solid Earth, particularly with reference to the origin and evolution of continents, continental assemblies and their resources. GR is an "all earth science" journal with no restrictions on geological time, terrane or theme and covers a wide spectrum of topics in geosciences such as geology, geomorphology, palaeontology, structure, petrology, geochemistry, stable isotopes, geochronology, economic geology, exploration geology, engineering geology, geophysics, and environmental geology among other themes, and provides an appropriate forum to integrate studies from different disciplines and different terrains. In addition to regular articles and thematic issues, the journal invites high profile state-of-the-art reviews on thrust area topics for its column, ''GR FOCUS''. Focus articles include short biographies and photographs of the authors. Short articles (within ten printed pages) for rapid publication reporting important discoveries or innovative models of global interest will be considered under the category ''GR LETTERS''.
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