Litcius/Paper detail

Short-term water demand predictions coupling an artificial neural network model and a genetic algorithm

Majid Gholami Shirkoohi, Mouna Doghri, Sophie Duchesne

2021Water Science & Technology Water Supply33 citationsDOIOpen Access PDF

Abstract

Abstract The application of artificial neural network (ANN) models for short-term (15 min) urban water demand predictions is evaluated. Optimization of the ANN model's hyperparameters with a genetic algorithm (GA) and use of a growing window approach for training the model are also evaluated. The results are compared to those of commonly used time series models, namely the Autoregressive Integrated Moving Average (ARIMA) model and a pattern-based model. The evaluations are based on data sets from two Canadian cities, providing 15 min water consumption records over respectively 5 years and 23 months, with a respective mean water demand of 14,560 and 887 m3/d. The GA optimized ANN model performed better than the other models, with Nash–Sutcliffe Efficiencies of 0.91 and 0.83, and relative root mean square errors of 6 and 16% for City 1 and City 2, respectively. The results of this study indicate that the optimization of the hyperparameters of an ANN model can lead to better 15 min urban water demand predictions, which are useful for many real-time control applications, such as dynamic pressure control.

Topics & Concepts

Autoregressive integrated moving averageArtificial neural networkGenetic algorithmHyperparameterMean squared errorTerm (time)Computer scienceAutoregressive modelAlgorithmTime seriesArtificial intelligenceMachine learningStatisticsMathematicsQuantum mechanicsPhysicsWater resources management and optimizationHydrological Forecasting Using AIEnergy Load and Power Forecasting