利用人工智能技术预测电力市场价格,改进市场参与者的战略

IF 4.8 2区 经济学 Q1 ECONOMICS
A. Bâra, S. Oprea, Cristian-Eugen Ciurea
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引用次数: 0

摘要

本文分析了东欧国家平衡市场 (BM) 之一--罗马尼亚--的近期电价演变,旨在了解电价趋势,并在当前的经济和地缘政治背景下对其进行预测。这一点尤为重要,因为电力生产商必须在电力批发市场、辅助服务市场和 BM 目标市场之间分配其产出,以实现价值最大化和经济可持续发展。因此,在本文中,我们提出了一种人工智能驱动的电价预测方法,使用分类器和回归器等几种杰出的机器学习(ML)算法来预测 BM 上的电价。该方法由两个步骤组成,可识别不平衡符号并显著提高电价预测的性能。所提出的方法通过两种预测方案为市场参与者的交易机会提供了宝贵的见解。第一种预测方案包括对五种集合 ML 算法的结果进行平均。第二种是使用线性回归或决策树算法对五种预测 ML 算法的结果进行加权。因此,我们建议将有监督和无监督 ML 算法结合起来,为电力市场参与者制定最佳投标策略找到基础。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
IMPROVING THE STRATEGIES OF THE MARKET PLAYERS USING AN AI-POWERED PRICE FORECAST FOR ELECTRICITY MARKET
This paper analyses the recent evolution of the electricity price of one of the EastEuropean countries’ Balancing Markets (BM) – Romania, aiming to understand the prices trend and predict them in the current economic and geopolitical context. This is especially important as the electricity producers have to allocate their output between wholesale electricity market, ancillary services markets and BM targeting to maximize value and achieve a sustainable economic development. Therefore, in this paper, we propose an AI-powered electricity price forecast using several types of standout Machine Learning (ML) algorithms such as classifiers and regressors to predict the electricity price on BM. This approach, consisting of two steps, identifies the imbalance sign and significantly enhances the performance of the price forecast. The proposed method offers valuable insights into the market participants’ trading opportunities using two prediction solutions. The first prediction solution consists of averaging the results of five ensemble ML algorithms. The second one consists in weighting the results of the five forecasting ML algorithms using either a linear regression or a decision tree algorithm. Thus, we propose to combine supervised and unsupervised ML algorithms and find the fundamentals for creating optimal bidding strategies for electricity market players.
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来源期刊
CiteScore
10.00
自引率
8.50%
发文量
66
审稿时长
15 weeks
期刊介绍: Technological and Economic Development of Economy is a refereed journal that publishes original research and review articles and book reviews. The Journal is designed for publishing articles in the following fields of research: systems for sustainable development, policy on sustainable development, legislation on sustainable development, strategies, approaches and methods for sustainable development, visions and scenarios for the future, education for sustainable development, institutional change and sustainable development, health care and sustainable development, alternative economic paradigms for sustainable development, partnership in the field of sustainable development, industry and sustainable development, sustainable development challenges to business and management, technological changes and sustainable development, social aspects of sustainability, economic dimensions of sustainability, political dimensions of sustainability, innovations, life cycle design and assessment, ethics and sustainability, sustainable design and material selection, assessment of environmental impact, ecology and sustainability, application case studies, best practices, decision making theory, models of operations research, theory and practice of operations research, statistics, optimization, simulation. All papers to be published in Technological and Economic Development of Economy are peer reviewed by two appointed experts. The Journal is published quarterly, in March, June, September and December.
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