Incremental Deep-Learning for Continuous Load Prediction in Energy Management Systems

Gustavo Aragón, Harsh Puri, Alexander Grass, S. Chala, C. Beecks
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引用次数: 6

Abstract

In this work, we introduce load prediction as continuous input for optimization models within an optimization framework for short-term control of complex energy systems. In this context, we investigated long short-term memory (LSTM) models for load prediction, because they allow incremental training in an application with continuous real-time data and have not been used in other works for continuous load prediction to our knowledge. The test and evaluation were realized using data sets of real residential data from different locations in different time resolution - hourly and minutely. Accordingly, we tested different recurrent neural network (RNN) parameters of the model such as the number of layers, the number of hidden nodes, the inclusion of regularization, and dropout in order to find the optimal LSTM configuration for our continuous load prediction application. Besides, we analyzed the quality of the LSTM algorithm by comparing it in continuous mode with the baseline model and in batch mode with the statistical model ARIMA. Training and prediction time, as well as the error stabilization time were parameters used for the evaluation. The results showed that LSTM algorithms are highly promising for integrating continuous load prediction with incremental learning.
基于增量深度学习的能源管理系统连续负荷预测
在这项工作中,我们引入负荷预测作为优化模型的连续输入,在优化框架内用于复杂能源系统的短期控制。在这种情况下,我们研究了用于负荷预测的长短期记忆(LSTM)模型,因为它们允许在具有连续实时数据的应用程序中进行增量训练,并且据我们所知尚未在其他工作中用于连续负荷预测。测试和评估采用不同时间分辨率(小时和分钟)的不同地点的真实住宅数据集实现。因此,我们测试了模型的不同递归神经网络(RNN)参数,如层数、隐藏节点数、包含正则化和dropout,以便为我们的连续负荷预测应用找到最优的LSTM配置。此外,通过对比连续模式下与基线模型、批处理模式下与统计模型ARIMA的差异,分析了LSTM算法的质量。训练时间和预测时间以及误差稳定时间作为评价参数。结果表明,LSTM算法在将连续负荷预测与增量学习相结合方面具有较好的应用前景。
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