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Development of residential water demand model for a densely populated area of Jaipur City, India

机译:印度斋浦尔人口稠密地区居民用水需求模型的开发

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Water demand forecasting has become an essential ingredient in effective water resource planning and management. In water-scare urban areas of developing countries, this emphasis on accurate forecasting is particularly important for effective water resource planning and management. This paper presents an econometric water demand model for forecasting future residential water requirements for a densely populated area of Jaipur city. This study used an ordinary least squared (OLS) regression model to measured the impact of household income (I), age of respondent (A_R), household size (SIZE), age of home (A_H), wealth (W), asset score (AS), dwelling status (DWELL), monthly expenditure on water supply (EXP WS), number of bathrooms (BATHR), and number of rooms (RMS) on residential water use (RWU) using data from a survey of 149 representative households in the study area. Empirical results indicate that residential water demand of the study area is characterized by I, SIZE, AS, and EXP_WS, with SIZE (0.542) and AS (0.418) having a major influence on RWU, as shown by their high standardized model coefficient values at 95% confidence intervals. Therefore major saving should be achieved by technological developments in water efficient appliances combined with education in efficient use of water.
机译:需水量预测已成为有效进行水资源规划和管理的重要组成部分。在发展中国家的节水城市地区,对准确预测的强调对于有效的水资源规划和管理尤为重要。本文提出了一种计量经济学的需水模型,用于预测斋浦尔人口稠密地区未来的住宅用水需求。本研究使用普通最小二乘(OLS)回归模型来衡量家庭收入(I),受访者年龄(A_R),家庭规模(SIZE),家庭年龄(A_H),财富(W),资产得分的影响(AS),居住状态(DWELL),每月水费支出(EXP WS),浴室数量(BATHR)和住宅用水量(RWU)的房间数量(RMS),使用的是对149个代表性家庭的调查数据在研究区域。实证结果表明,研究区的住宅用水需求具有I,SIZE,AS和EXP_WS的特征,其中SIZE(0.542)和AS(0.418)对RWU的影响很大,如它们在的高标准化模型系数值所示。 95%置信区间。因此,应通过节水电器的技术发展与有效节水的教育相结合来实现重大节约。

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