Short-Term Electrical Load Forecasting in Power Systems Using Deep Learning Techniques

Nihat PAMUK
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Abstract

The use of big data in deep neural networks has recently surpassed traditional machine learning techniques in many application areas. The main reasons for the use of deep neural networks are the increase in computational power made possible by graphics processing units and tensor processing units, and the new algorithms created by recurrent neural networks and CNNs. In addition to traditional machine learning methods, deep neural networks have applications in anticipating electricity load. Using a real dataset for one-step forecasting, this article compares three deep learning algorithms for short-term power load forecasting: LSTM, GRUs, and CNN. The statistics come from the Turkish city of Zonguldak and include hourly electricity usage loads and temperatures over a period of three years, commencing in 2019 and ending in 2021. The mean absolute percentage error is used to compare the performances of the techniques. Forecasts are made for twelve representative months from each season. The main reason for the significant deviations in the forecasts for January, May, September, and December is the presence of religious and national holidays in these months. This was solved by adding the information obtained from religious and national holidays to the modeling. This is not to say that CNNs are not good at capturing long-term dependencies and modeling sequential data. In all experiments, LSTM, GRUs and encoder-decoder LSTM outperformed simple CNN designs. In the future, these new architectural methods can be applied to long- or short-term electric charge predictions and their results can be compared to LSTM, GRUs and their variations.
基于深度学习技术的电力系统短期负荷预测
最近,深度神经网络中大数据的使用在许多应用领域超过了传统的机器学习技术。使用深度神经网络的主要原因是图形处理单元和张量处理单元带来的计算能力的提高,以及由循环神经网络和cnn创建的新算法。除了传统的机器学习方法外,深度神经网络在预测电力负荷方面也有应用。本文使用真实数据集进行一步预测,比较了三种用于短期电力负荷预测的深度学习算法:LSTM、GRUs和CNN。这些统计数据来自土耳其的宗古尔达克市,包括从2019年开始到2021年结束的三年内每小时的用电负荷和温度。使用平均绝对百分比误差来比较这些技术的性能。从每个季节开始的12个有代表性的月份进行预测。1月、5月、9月和12月的预测出现显著偏差的主要原因是这些月份存在宗教和法定假日。这是通过将从宗教和国家节日获得的信息添加到建模中来解决的。这并不是说cnn不擅长捕获长期依赖关系和对顺序数据建模。在所有实验中,LSTM、gru和编码器-解码器LSTM都优于简单的CNN设计。在未来,这些新的体系结构方法可以应用于长期或短期电荷预测,其结果可以与LSTM, gru及其变化进行比较。
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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