希腊电力需求预测的一种新方法:从高维小时序列到单变量序列变换

Q1 Social Sciences
George Varelas , Giannis Tzimas , Panayiotis Alefragis
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引用次数: 0

摘要

本文提出了一种不同的电力消耗预测方法。这种预测可以帮助供电公司规划生产或采购。基于这一预测,公司参与了决定电力市场MWh价格的拍卖,并在一天结束时决定最终消费者的价格。到目前为止,电力供应时间序列的预测问题主要是使用经典的时间序列算法或VAR模型来处理的。在本文中,我们使用保险部门的一种方法来预测希腊每小时的电力消耗值。这种方法的创新之处在于,它允许将时间序列系统(高维时间序列)的预测转换为对单个时间序列的预测,并将结果传播回每个时间序列。它将预测算法的选择留给了研究人员,使其非常灵活,并消除了选择复杂算法的必要性。我们应用ARIMA算法对该方法的结果进行了预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A new approach in forecasting Greek electricity demand: From high dimensional hourly series to univariate series transformation

This article presents a different approach to power consumption forecasting problem. This forecasting can help power supply companies to program their production or purchases. Based on this forecasting the companies take part in auctions that determine the price of the MWh in the electricity market and at the end of the day, the price for the end consumer. So far, the problem of forecasting power supply time series has mainly been dealt with the use of classical time series algorithms or VAR models. In this paper, we use a method from the insurance sector to forecast Greek power consumption hourly values. The innovation in this method is that it allows converting the forecasting of a system of time series (high dimensional time series) into forecasting a single time series and propagating the results back to each time series. It leaves the forecasting algorithm choice to the researcher, making it very flexible and removing the necessity of choosing complex algorithms. We demonstrate the forecasting of the results of this method by applying the ARIMA algorithm.

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来源期刊
Electricity Journal
Electricity Journal Business, Management and Accounting-Business and International Management
CiteScore
5.80
自引率
0.00%
发文量
95
审稿时长
31 days
期刊介绍: The Electricity Journal is the leading journal in electric power policy. The journal deals primarily with fuel diversity and the energy mix needed for optimal energy market performance, and therefore covers the full spectrum of energy, from coal, nuclear, natural gas and oil, to renewable energy sources including hydro, solar, geothermal and wind power. Recently, the journal has been publishing in emerging areas including energy storage, microgrid strategies, dynamic pricing, cyber security, climate change, cap and trade, distributed generation, net metering, transmission and generation market dynamics. The Electricity Journal aims to bring together the most thoughtful and influential thinkers globally from across industry, practitioners, government, policymakers and academia. The Editorial Advisory Board is comprised of electric industry thought leaders who have served as regulators, consultants, litigators, and market advocates. Their collective experience helps ensure that the most relevant and thought-provoking issues are presented to our readers, and helps navigate the emerging shape and design of the electricity/energy industry.
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