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Short-Term Water Demand Prediction in Residential Complexes: Case Study in Columbia City, USA

机译:住宅区的短期需水量预测:以美国哥伦比亚市为例

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Shortage of freshwater resources and increasing water demand are significant challenges facing water utilities. Accordingly, reliable and accurate short-term prediction is a valuable tool to efficiently operate and manage an existing municipal water supply system. The present study aims to develop an accurate and easy to apply methodology to predict the water demand based on past water consumption data. The proposed methodology uses singular spectrum analysis (SSA) and a linear autoregressive (AR) model to forecast accurately the required water quantities in forthcoming years. The SSA is used to clean the signal of structure-less noise. Then the AR is used to describe the behaviour of the past water consumption data and then to forecast the daily expected water demand in a short-term period. The suggested methodology is validated using daily water consumption data from July 2007- December 2016 in Columbia City, USA, as inputs for the short-term model. The initial results show that the suggested methodology, SSA-AR, has the ability to predict water demand accurately and outperform an AR model.
机译:淡水资源的短缺和不断增长的用水需求是水务公司面临的重大挑战。因此,可靠和准确的短期预测是有效操作和管理现有市政供水系统的宝贵工具。本研究旨在开发一种准确且易于应用的方法,以根据过去的用水量数据预测需水量。所提出的方法使用奇异频谱分析(SSA)和线性自回归(AR)模型来准确预测未来几年的所需水量。 SSA用于清除无结构噪声的信号。然后使用AR描述过去的用水量数据的行为,然后预测短期内的每日预期需水量。建议的方法已使用2007年7月至2016年12月在美国哥伦比亚市的每日耗水量数据作为短期模型的输入进行了验证。初步结果表明,所建议的方法SSA-AR具有准确预测需水量并优于AR模型的能力。

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