Forecasting the Short-Term Electricity In Steel Manufacturing For Purchase Accuracy on Day-Ahead Market

A. Koca, Z. Erdem, Mehmet N. Aydin
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Abstract

Forecasting electricity consumption in the most accurate way is crucial for purchase on the day-ahead market in steel manufacturing. This study is aimed to predict short-term electricity consumption regarding the day-ahead market purchase by employing important features of electricity consumption time-series data. We utilize Random Forest (RF), Gradient-Boosted Trees (GBT), and Generalized Linear Models (GLM), as they are appropriate for the given problem and widely used regression algorithms for prediction purposes. This study leverages the regression algorithms in the Apache Spark Machine Learning library. The performance of the prediction models is evaluated based on the standard deviation of the residuals (RMSE) and the proportion of variance explained (R-squared). We additionally discuss the distribution of prediction errors of the models. Experiments show that the RF model outperforms the GBT and GLM. It is considered that the results can contribute to accurate forecasting of short-term electricity demand for purchasing on the day-ahead.
基于日前市场的钢铁短期电力预测及采购准确性研究
以最准确的方式预测用电量,对于钢铁制造业在前一天的市场上进行采购至关重要。本研究旨在利用用电量时间序列数据的重要特征,预测与日前市场购买相关的短期用电量。我们使用随机森林(RF),梯度增强树(GBT)和广义线性模型(GLM),因为它们适合给定的问题和广泛使用的回归算法用于预测目的。本研究利用了Apache Spark机器学习库中的回归算法。预测模型的性能是根据残差的标准差(RMSE)和方差解释的比例(r平方)来评估的。我们还讨论了模型预测误差的分布。实验表明,该模型优于GBT和GLM模型。研究结果有助于准确预测未来一天的短期购电需求。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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