Day-ahead Electricity Price Forecasting using Long-short Term Memory Recurrent Neural Network

Ekaterina Popovska, G. Georgieva-Tsaneva
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Abstract

The availability of accurate day-ahead electricity price forecasts is very important for electricity market participants and it is an essential challenge to accurately forecast the electricity price. Therefore, this study proposes an efficient method suitable for electricity price forecasting (EPF) and processing time-series data from the Bulgarian day-ahead market based on a long-short term memory (LSTM) recurrent neural network model. The LSTM model is used to forecast the day-ahead electricity price for the Bulgarian day-ahead market. As inputs to the model are used historical hourly prices for the period between 20.01.2016 and 05.03.2022. The output is the electricity price forecasts for hours and days ahead. The future values of prices are forecasted recursively. LSTM can model temporal dependencies in larger Time Series set horizons without forgetting the short-term patterns. LSTM networks are composed of units that are called LSTM memory cells and these cells contain some gates that process the inputs. Since electricity price is affected by various seasonal effects, the model is trained for several years. The effectiveness of the proposed method is verified using real market data.
基于长短期记忆递归神经网络的日前电价预测
准确的日前电价预测对电力市场参与者来说是非常重要的,准确预测电价是一个重要的挑战。因此,本研究提出了一种适用于电价预测(EPF)的有效方法,并基于长短期记忆(LSTM)递归神经网络模型处理保加利亚日前市场的时间序列数据。利用LSTM模型对保加利亚日前市场进行了日前电价预测。作为模型的输入,使用了2016年1月20日至2022年3月5日期间的历史小时价格。输出是未来数小时或数天的电价预测。价格的未来值是递归预测的。LSTM可以在不忘记短期模式的情况下,在更大的时间序列集合范围内建模时间依赖性。LSTM网络由称为LSTM记忆单元的单元组成,这些单元包含一些处理输入的门。由于电价受到各种季节效应的影响,模型经过数年的训练。用实际市场数据验证了该方法的有效性。
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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