伊拉克城市用水需求预测——以巴格达省为例

S. Zubaidi, H. Al-Bugharbee, Y. R. Muhsen, K. Hashim, R. Alkhaddar, Wisam H. Hmeesh
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引用次数: 73

摘要

准确预测短期用水需求对供水商和政府的用水计划都具有重要作用。本文旨在根据巴格达市以前的用水量来预测即将到来的一年的市政用水需求。我们研究了各种信号处理方法来处理有噪声的用水量时间序列数据,同时提出了一种新的城市用水量短期预测方法。这将使我们能够利用混合单变量奇异谱分析和自回归模型(SSA-AR模型)的不同窗口和多阶段预测短期城市用水需求。首先,利用SSA的不同窗口和多阶段对原始水时间序列进行噪声分析和清除。然后,利用自回归(AR)模型对处理后的用水时间序列进行需水量预测。在本研究中,选取伊拉克巴格达市Al-Wehda处理厂2006-2015年的月用水量数据来评估模型。研究结果表明,SSA-AR模型能较好地预测高噪原始数据的需水量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Prediction of Municipal Water Demand in Iraq: A Case Study of Baghdad Governorate
Accurate prediction of short-term water demand plays an important role for water suppliers as well as for government's water plan. This paper aims to predict a municipal water demand for an upcoming year based on previous water consumption in Baghdad city. We have investigated various signal processing approaches to address the noisy time series data of water consumption, while a new methodology for short-term prediction of municipal water consumption has been proposed. This would enable us to forecast the short-term municipal water demand using different windows and multi-stages of hybrid univariate singular spectrum analysis and autoregressive model (SSA-AR model). First, different windows and multi-stages of SSA are utilised to analyse and clean the original water time series from noise. Then, the autoregressive (AR) model is employed to predict water demand based on the treated water consumption time series. In this study, monthly water consumption data from (2006-2015) for Al-Wehda treatment plant in Baghdad city, Iraq is selected to assess the model. The findings show that (SSA-AR model) can predict water demand with high accuracy from high noisy raw data.
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