Short-term water demand forecasting using data-centric machine learning approaches

Author:

Liu Guoxuan1ORCID,Savic Dragan123ORCID,Fu Guangtao1

Affiliation:

1. a Centre for Water Systems, University of Exeter, Exeter, EX4 4QF, United Kingdom

2. b KWR Water Research Institute, Nieuwegein, 3430 BB, The Netherlands

3. c Faculty of Civil Engineering, University of Belgrade, Bul. Kralja Aleksandra 73, 11120 Belgrade, Serbia

Abstract

Abstract Accurate water demand forecasting is the key to urban water management and can alleviate system pressure brought by urbanisation, water scarcity and climate change. However, existing research on water demand forecasting using machine learning is focused on model-centric approaches, where various forecasting models are tested to improve accuracy. The study undertakes a data-centric machine learning approach by analysing the impact of training data length, temporal resolution and data uncertainty on forecasting model results. The models evaluated are Autoregressive (AR) Integrated Moving Average (ARIMA), Neural Network (NN), Random Forest (RF) and Prophet. The first two are commonly used forecasting models. RF has shown similar forecast accuracy to NN but has received less attention. Prophet is a new model that has not been applied to short-term water demand forecasting, though it has had successful applications in various fields. The results obtained from four case studies show that (1) data-centric machine learning approaches offer promise for improving forecast accuracy of short-term water demands; (2) accurate forecasts are possible with short training data; (3) RF and NN models are superior at forecasting high-temporal resolution data; and (4) data quality improvement can achieve a level of accuracy increase comparable to model-centric machine learning approaches.

Funder

Engineering and Physical Sciences Research Council

Publisher

IWA Publishing

Subject

Atmospheric Science,Geotechnical Engineering and Engineering Geology,Civil and Structural Engineering,Water Science and Technology

Reference34 articles.

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