TY - JOUR N2 - The growing demand for fresh water and its scarcity are the major problems encountered in semi-arid cities. Two different techniques have been used to assess the main determinants of domestic water in the Sedrata City, North-East Algeria: prin-cipal component analysis (PCA) and artificial neural networks (ANNs). To create the ANNs models based on the PCA, twelve explanatory variables are initially investigated, of which nine are socio-economic parameters and three physical char-acteristics of building units. Two optimum ANNs models have been selected where correlation coefficients equal to 0.99 in training, testing and validation phases. In addition, results demonstrate that the combination of socio-economic parameters with physical characteristics of building units enhances the assessment of household water consumption. L1 - http://www.czasopisma.pan.pl/Content/120133/25%20Zeroual%20et%20al%20742.pdf L2 - http://www.czasopisma.pan.pl/Content/120133 PY - 2021 IS - No 49 EP - 228 DO - 10.24425/jwld.2021.137115 KW - artificial neural networks KW - domestic water use determinants KW - household water consumption KW - principal component analysis KW - semi-arid area A1 - Zeroual, Menal A1 - Hani, Azzedine A1 - Boustila, Amir PB - Polish Academy of Sciences; Institute of Technology and Life Sciences - National Research Institute DA - 2021.07.01 T1 - Assessing domestic factors determining water consumption in a semi-arid area (Sedrata City) using artificial neural networks and principal component analysis SP - 219 UR - http://www.czasopisma.pan.pl/dlibra/publication/edition/120133 T2 - Journal of Water and Land Development ER -