Demand forecasting in power sector has become an important part of modern demand management and response systems with the rise of smart metering enabled grids. Long Short-Term Memory (LSTM) shows promising results in predicting time series data which can also be applied to power load demand in smart grids. In this paper, an LSTM based model using neural network architecture is proposed to forecast power demand. The model is trained with hourly energy and power usage data of four years from a smart grid. After training and prediction, the accuracy of the model is compared against the traditional statistical time series analysis algorithms, such as Auto-Regressive (AR), to determine the efficiency. The mean absolute percentile error is found to be 1.22 in the proposed LSTM model, which is the lowest among the other models. From the findings, it is clear that the inclusion of neural network in predicting power demand reduces the error of prediction significantly. Thus, the application of LSTM can enable a more efficient demand response system.
翻译:电力部门的需求预测已成为现代需求管理和反应系统的一个重要部分,智能计量功能电网的上升使该模型的准确性与传统的统计时间序列分析算法(如自动回归分析算法)进行比较,以确定效率。长期短期内存显示预测时间序列数据的可喜结果,这些数据也可适用于智能电网的电力负荷需求。在本文中,提议使用神经网络结构的基于LSTM模型来预测电力需求。该模型用智能电网提供的每小时能源和电力使用数据培训了四年。经过培训和预测,该模型的准确性与传统的统计时间序列分析算法(如自动回归分析算法)相比,以确定效率。在拟议的LSTM模型中,平均绝对百分率误差为1.22,这是其他模型中最低的。根据研究结果,显然将神经网络纳入预测电力需求可以大大降低预测错误。因此,应用LSTM可以使需求响应系统更加有效。