Urban water demand prediction for a city that suffers from climate change and population growth: Gauteng province case study

Salah L. Zubaidi, Sandra Ortega-Martorell, Hussein Al-Bugharbee, Ivan Olier, Khalid S. Hashim, Sadik Kamel Gharghan, Patryk Kot, Rafid Al-Khaddar

Research output: Contribution to journalArticlepeer-review

160 Citations (Scopus)

Abstract

The proper management of a municipal water system is essential to sustain cities and support the water security of societies. Urban water estimating has always been a challenging task for managers of water utilities and policymakers. This paper applies a novel methodology that includes data pre-processing and an Artificial Neural Network (ANN) optimized with the Backtracking Search Algorithm (BSA-ANN) to estimate monthly water demand in relation to previous water consumption. Historical data of monthly water consumption in the Gauteng Province, South Africa, for the period 2007-2016, were selected for the creation and evaluation of the methodology. Data pre-processing techniques played a crucial role in the enhancing of the quality of the data before creating the prediction model. The BSA-ANN model yielded the best result with a root mean square error and a coefficient of efficiency of 0.0099 mega liters and 0.979, respectively. Moreover, it proved more efficient and reliable than the Crow Search Algorithm (CSA-ANN), based on the scale of error. Overall, this paper presents a new application for the hybrid model BSA-ANN that can be successfully used to predict water demand with high accuracy, in a city that heavily suffers from the impact of climate change and population growth.

Original languageEnglish
Article number1885
JournalWater (Switzerland)
Volume12
Issue number7
DOIs
Publication statusPublished - 1 Jul 2020
Externally publishedYes

Keywords

  • Artificial neural network
  • Backtracking search algorithm
  • Climate change
  • Municipal water demand
  • Population growth

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