使用多种经济指标进行系统边际价格预测的在线机器学习方法:一种实时决策的新模型

Taehyun Kim , Byeongmin Ha , Soonho Hwangbo
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引用次数: 0

摘要

与其他国家相比,韩国高度依赖能源,其大部分电力由政府运营的公司生产,以确保稳定和负担得起的供应。与“按出价付费”不同,韩国采用的是边际价格(SMP)制度,也被称为“按明确付费”。准确的SMP预测对于保证稳定的经济增长至关重要,因为制造业是韩国的旗舰产业,占该国电力消耗的50%。在这项研究中,利用由五个能源部门、两个金融部门和一个运输部门组成的数据集,采用基于机器学习的批量学习和在线学习技术的组合来预测韩国的SMP。f值分析表明,作为能源部门之一的煤炭部门对SMP的影响最显著,得分最高,为2,328。在本研究中,提出了支持向量回归、简单深度神经网络和深度神经网络三种机器学习模型,并对其进行了批量学习的比较,以确定训练最好的模型。评估指标用于评估这些模型的性能。基于所获得的结果,发现简单深度神经网络在准确率方面优于其他模型。在训练好的批处理模型的基础上,采用权值修正和输入输出间时间间隔更新两种方法进行在线学习。在实施模型更新后,利用决定系数、均方根误差、平均绝对误差和平均绝对百分比误差等指标对其性能进行持续评估。这些指标的平均值分别为0.924、7.991、5.035和0.052。预期这项研究将直接协助工业部门的决策者制订能源计划。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Online machine learning approach for system marginal price forecasting using multiple economic indicators: A novel model for real-time decision making

Online machine learning approach for system marginal price forecasting using multiple economic indicators: A novel model for real-time decision making

In comparison to other countries, South Korea has a high reliance on energy, with the majority of its electricity being generated by a government-run company to ensure a stable and affordable supply. Unlike the "pay-as-bid" pricing approach, South Korea utilizes the system marginal price (SMP), also known as "pay-as-clear." Accurate SMP forecasting is crucial for guaranteeing steady economic growth because manufacturing is South Korea's flagship industry and accounts for 50 % of the nation's power consumption. In this study, a combination of machine learning-based batch learning and online learning techniques were employed to forecast the SMP in South Korea, utilizing a dataset consisting of five energy sectors, two financial sectors, and one transportation sector. The analysis of the F-value revealed that the coal sector, which is one of the energy sectors, had the most significant influence on SMP indicating the greatest score of 2,328. In this study, three machine learning models, namely support vector regression, simple deep neural network, and deep neural network, were suggested and compared for batch learning to determine the best-trained model. The evaluation metrics were used to assess the performance of these models. Based on the results obtained, the simple deep neural network was found to outperform the other models in terms of accuracy. Furthermore, two methods such as weight modification and time interval updating between inputs and output were employed for online learning based on the trained batch model. Upon the implementation of model updates, an ongoing assessment of its performance transpired utilizing the metrics of coefficient of determination, root mean square error, mean absolute error, and mean absolute percentage error. The average values for these metrics were observed to be 0.924, 7.991, 5.035, and 0.052, respectively. This study is expected to provide direct assistance in the formulation of energy plans for decision-makers in the industrial sector.

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来源期刊
Machine learning with applications
Machine learning with applications Management Science and Operations Research, Artificial Intelligence, Computer Science Applications
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