基于深度学习的城市地区短期用水需求预测:混合多通道模型

Hossein Namdari, S. M. Ashrafi, Ali Haghighi
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引用次数: 0

摘要

短期需水量预测是城市供水管网运营公司最关键的需求之一。需水量具有时间序列性,各种因素都会影响其变化和规律,这给预测带来了困难。在这项研究中,我们首先采用了卷积神经网络(CNN)和递归神经网络(RNN)的混合模型来预测城市用水需求。这些模型包括卷积神经网络与简单 RNN(CNN-Simple RNN)、卷积神经网络与门递归单元(CNN-GRU)以及卷积神经网络与长短期记忆的组合。然后,我们增加了 CNN 通道的数量,以获得更高的精度。随着 CNN 通道数的增加,模型的准确率也随之提高,最高可达四个。评估指标表明,CNN-GRU 模型优于其他模型。最终,四通道 CNN-GRU 模型的准确度最高,在 24 小时的预测范围内,平均绝对百分比误差 (MAPE) 为 1.65%。此外,还研究了预测范围对结果准确性的影响。结果表明,在四通道 CNN-GRU 中,1 小时预测范围内的 MAPE 为 1.06%,其值随预测范围的扩大而减小。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep learning–based short-term water demand forecasting in urban areas: a hybrid multichannel model
Forecasting short-term water demands is one of the most critical needs of operating companies of urban water distribution networks. Water demands have a time series nature, and various factors affect their variations and patterns, which make it difficult to forecast. In this study, we first implemented a hybrid model of convolutional neural networks (CNNs) and recurrent neural networks (RNNs) to forecast urban water demand. These models include a combination of CNN with simple RNN (CNN-Simple RNN), CNN with the gate recurrent unit (CNN-GRU), and CNN with the long short-term memory. Then, we increased the number of CNN channels to achieve higher accuracy. The accuracy of the models increased with the number of CNN channels up to four. The evaluation metrics show that the CNN-GRU model is superior to other models. Ultimately, the four-channel CNN-GRU model demonstrated the highest accuracy, achieving a mean absolute percentage error (MAPE) of 1.65% for a 24-h forecasting horizon. The effects of the forecast horizon on the accuracy of the results were also investigated. The results show that the MAPE for a 1-h forecast horizon is 1.06% in four-channel CNN-GRU, and its value decreases with the amount of the forecast horizon.
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