Smart water demand forecasting: Learning from the data

M Xenochristou, Z Kapelan… - International …, 2018 - researchportal.bath.ac.uk
International Conference on Hydroinformatics, 2018researchportal.bath.ac.uk
Accurate forecasts of demand are essential for water utilities in order to manage, plan, and
optimize the operation of their network. This work aims to develop a new method for short-
term water demand forecasting by utilizing a new data-driven approach based on Random
Forests, as well as consumption recordings, household, and socio-economic characteristics,
and weather data. Initial results, obtained on real-life consumption data from the UK,
demonstrate the potential of this method and show the importance of disaggregating …
Abstract
Accurate forecasts of demand are essential for water utilities in order to manage, plan, and optimize the operation of their network. This work aims to develop a new method for short-term water demand forecasting by utilizing a new data-driven approach based on Random Forests, as well as consumption recordings, household, and socio-economic characteristics, and weather data. Initial results, obtained on real-life consumption data from the UK, demonstrate the potential of this method and show the importance of disaggregating consumption when attempting to determine the influence of weather on water demand. In this study, adding weather input to the model achieved improved forecasting accuracy, especially for the aggregation of properties with medium occupancy and affluent residents during summer months.
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