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首页> 外文期刊>Journal of water, sanitation and hygiene for development >Analysis of domestic water demand variables of a residential colony in Ajmer, Rajasthan (India)
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Analysis of domestic water demand variables of a residential colony in Ajmer, Rajasthan (India)

机译:AJMER,拉贾斯坦邦(印度)住宅殖民地的国内水需求变量分析

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摘要

In this paper, significant variables of domestic urban water demand required for the purpose of estimation of urban water supply in five planned colonies of the City of Ajmer, Rajasthan, India, are identified. The data for these 16 variables are entered in the multiple linear regression (MLR) (stepwise) models in SPSS software, and domestic water demand models are developed. Based on these models, the six most significant variables, namely temperature (T), rainfall (RF), family size (FS), family income (FI), number of bathrooms (NB), and age of house (AH), are identified. The data of 16 variables are further utilized in principal component analysis (PCA), and five factors/variables are extracted, comprising combinations of these 16 variables. A regression coefficient of 0.76 is obtained in the PCA model. These six significant variables are further fed into amultilayer perceptron neural network (NN) model for water demand forecasting. The linear regression coefficient of NN is 0.90, very close to the MLR (stepwise) coefficient of 0.89, and verifying the dependence of water demand on these six variables. The outcome of the study suggests that the six variables are significant for estimation of water demand for Ajmer.
机译:本文确定了印度拉贾斯坦邦Ajmer市五个规划殖民地城市供水估算所需的城市生活用水需求的重要变量。将这16个变量的数据输入SPSS软件中的多元线性回归(MLR)(逐步)模型,并开发生活用水需求模型。基于这些模型,确定了六个最重要的变量,即温度(T)、降雨量(RF)、家庭规模(FS)、家庭收入(FI)、浴室数量(NB)和房屋年龄(AH)。主成分分析(PCA)进一步利用了16个变量的数据,提取了5个因子/变量,包括这16个变量的组合。PCA模型的回归系数为0.76。这六个重要变量被进一步输入一个多层感知器神经网络(NN)模型进行需水量预测。NN的线性回归系数为0.90,非常接近MLR(逐步)系数0.89,验证了需水量对这六个变量的依赖性。研究结果表明,这六个变量对Ajmer的需水量估计具有重要意义。

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