机器学习能降低电力市场的波动性吗?经济计算辩论的教训

IF 1 Q3 ECONOMICS
Fuat Oğuz, Mustafa Çağrı Peker
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引用次数: 0

摘要

长期以来,电力市场的知识问题和波动性一直是能源市场政策辩论的核心问题。本研究考察了机器学习在解决这些问题方面的成功和局限性,为现有文献做出了贡献。机器学习在解决电力市场的具体技术问题方面显示出了希望,但它在预测客户行为和管理分散的可再生能源驱动系统方面的缺点凸显了进一步改进的必要性。虽然机器学习在减少市场波动的某些方面具有潜力,但它并不是解决电力市场面临的更广泛挑战的全面解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Can machine learning reduce volatility in electricity markets? Lessons from the economic calculation debate

The knowledge problem and volatility in electricity markets have long been central to policy debates in energy markets. This study examines the successes and limitations of machine learning in addressing these issues, contributing to the existing literature. Machine learning has shown promise in tackling specific technical aspects of power markets, but its shortcomings in forecasting customer behaviour and managing decentralised, renewable-driven systems highlight the need for further refinement. While machine learning offers potential in reducing certain aspects of market volatility, it is not a comprehensive solution to the broader challenges faced by the electricity market.

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来源期刊
ECONOMIC AFFAIRS
ECONOMIC AFFAIRS ECONOMICS-
CiteScore
1.40
自引率
14.30%
发文量
0
期刊介绍: Economic Affairs is a journal for those interested in the application of economic principles to practical affairs. It aims to stimulate debate on economic and social problems by asking its authors, while analysing complex issues, to make their analysis and conclusions accessible to a wide audience. Each issue has a theme on which the main articles focus, providing a succinct and up-to-date review of a particular field of applied economics. Themes in 2008 included: New Perspectives on the Economics and Politics of Ageing, Housing for the Poor: the Role of Government, The Economic Analysis of Institutions, and Healthcare: State Failure. Academics are also invited to submit additional articles on subjects related to the coverage of the journal. There is section of double blind refereed articles and a section for shorter pieces that are reviewed by our Editorial Board (Economic Viewpoints). Please contact the editor for full submission details for both sections.
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