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Urban Residential Water Demand Prediction Based on Artificial Neural Networks and Time Series Models

机译:基于人工神经网络和时间序列模型的城市居民用水需求预测

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Water demand prediction is essential in any short or long-term management plans. For short-term prediction of water demand, climatic factors play an important role since they have direct influence on water consumption. In this paper, prediction of future daily water demand for Al-Khobar city in the Kingdom of Saudi Arabia is investigated. For this purpose, the combined technique of Artificial Neural Networks (ANNs) and time series models was constructed based on the available daily water consumption and climatic data. The paper covers the following: forecast daily water demand for Al-Khobar city, compare the performance of the ANNs [General Regression Neural Network (GRNN) model] technique to time series models in predicting water consumption, and study the ability of the combined technique (GRNN and time series) to forecast water consumption compared to the time series technique alone. Results indicate that combining time series models with ANNs model will give better prediction compared to the use of ANNs or time series models alone.
机译:在任何短期或长期管理计划中,水需求预测都是必不可少的。对于短期需水量预测,气候因素起重要作用,因为它们直接影响用水量。本文研究了沙特阿拉伯王国阿克巴尔地区未来每日需水量的预测。为此,基于每日可用的用水量和气候数据,构建了人工神经网络(ANN)和时间序列模型的组合技术。本文涵盖以下内容:预测Al-Khobar市的每日需水量,将ANNs [通用回归神经网络(GRNN)模型]技术与时间序列模型的预测用水量进行比较,并研究组合技术的能力(GRNN和时间序列)来预测与单独的时间序列技术相比的用水量。结果表明,与仅使用人工神经网络或时间序列模型相比,将时间序列模型与人工神经网络模型相结合将提供更好的预测。

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