基于双阶段注意力LSTM的泰国多步电力消费预测

Chukwan Siridhipakul, P. Vateekul
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引用次数: 9

摘要

我们的任务是预测第二天在半小时间隔内总共48个间隔内的用电量。目前已有很多研究提出了针对电力消耗预测问题的模型,但以往提出的技术大多集中在不同时间步长对电力消耗的影响上,没有考虑到不同特征的重要性。基于双阶段注意力的递归神经网络(DA-RNN)是时间序列预测的最新技术,它考虑了不同时间特征对一步预测的不同影响。相反,我们的工作侧重于多步超前预测。在本文中,我们的目标是将双阶段注意LSTM应用于多步超前的功耗预测问题。实验采用泰国的用电量数据,包括5个控制区、天气数据、日类型(工作日/周末)。我们使用RMSE和MAPE作为评价指标,结果表明双阶段LSTM在这两个指标上都优于传统模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-step Power Consumption Forecasting in Thailand Using Dual-Stage Attentional LSTM
Our task is to forecast the next day’s power consumption in the half-hour interval for a total of 48 intervals. There are many studies that proposed models for power consumption forecasting problems but most of the previously proposed techniques focus on impact from different time step to power consumption, the importance of different features was not considered in these works. The Dual-Stage Attention-Based Recurrent Neural Network (DA-RNN) is the state-of-the-art in time series forecasting that considers both varying impacts from different time features for one-step-ahead forecasting. On the contrary, our work focuses on multi-step-ahead forecasting. In this paper, we aim to apply Dual-Stage Attentional LSTM for a multi-step-ahead power consumption forecasting problem. Experiments were conducted on Thailand’s power consumption data consisting of 5 control areas, weather data, and day type (weekday/weekend). We use RMSE and MAPE as evaluation metrics, the results showed that the Dual-Stage Attentional LSTM outperformed traditional models in both metrics.
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