多步时间序列预测质量的研究

Petr M. Tishin, Victor S. Buyukli
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引用次数: 0

摘要

研究了利用电力消费数据对时间序列进行多步预测的质量问题。已经实施了5个多步预测模型,并对其进行了后续训练和结果评价。该数据集是对四年电力消耗的一分钟一分钟的升级测量。数据集分为训练样本、验证样本和测试样本,分别用于训练和测试模型。通过使用TensorFlow机器学习库简化了实现,它允许我们方便地处理和呈现数据;建立和训练神经网络。TensorFlow功能还提供了用于评估时间序列预测准确性的标准指标,这使得评估获得的预测电力消耗时间序列的模型成为可能,并根据给定的指标突出显示那些考虑的最佳模型。这些模型的建立方式使它们可以用于研究人类生活各个领域的时间序列预测的质量。本文所考虑的24小时前多步预测问题在电量估算中尚未得到解决。所获得的预测精度可与最近发表的估算其他条件下用电量的方法相媲美。同时,与其他方法相比,所构建模型的预测精度得到了提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The study of the quality of multi-step time series forecasting
The work is devoted to the study of the quality of multistep forecasting of time series using the electricity consumption data for forecasting. Five models of multistep forecasting have been implemented, with their subsequent training and evaluation of the results obtained. The dataset is an upgraded minute-by-minute measurement of four years of electricity consumption. The dataset has been divided into training, validation, and test samples for training and testing models. The implementation is simplified by using the TensorFlow machine learning library, which allows us to conveniently process and present data; build and train neural networks. The TensorFlow functionality also provides standard metrics used to assess the accuracy of time series forecasting, which made it possible to evaluate the obtained models for forecasting the time series of electricity consumption and highlight the best ofthose considered according to the given indicators. The models are built in such a way that they can be used in studies of the quality of time series forecasting in various areas of human life. The problem of multistep forecasting for twenty fourhours ahead, considered in the paper, has not yet been solved for estimating electricity consumption. Theobtainedforecasting accuracy is comparable to recently published methods for estimating electricity consumption used in other conditions.At the same time, the forecasting accuracy of the constructed models has been improved in comparison with other methods.
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