This article proposes a new general approach in short-term water demand forecasting based on a two-stage learning process that couples time-series clustering with gene expression programming (GEP). The approach was tested on the real life water demand data of the city of Milan, in Italy. Moreover, multi-scale modeling using a series of head-time was deployed to investigate the optimum temporal resolution under study. Multi-scale modeling was performed based on rearranging hourly based patterns of water demand into 3, 6, 12, and 24 h lead times. Results showed that GEP should receive more attention among the emerging nonlinear modelling techniques if coupled with unsupervised learning algorithms in detailed spherical k-means.Applied Science,...
Epidemiology-based models have shown to have successful adaptations to deal with challenges coming f...
This paper presents a comparison of different short-term water demand forecasting models. The compar...
[EN] Operational and economic aspects of water distribution make water demand forecasting paramount ...
This article proposes a new general approach in short-term water demand forecasting based on a two-s...
Water distribution systems (WDS) operators would benefit greatly from educated estimates of water de...
Statistical water demand models are usually developed as time series coefficients using historically...
Water demand forecasting is an important tool in the design, operation, and management of urban wate...
Short-term water demand forecasting models address the case of a real-time optimal water pumping sch...
n this paper a comparison among six short-term water demand forecasting models is presented. The mod...
Genetic programming (GP) is a widely used machine learning (ML) algorithm that has been applied in w...
Efficient management of a drinking water network reduces the economic costs related to water product...
This article presents a real-time data analysis platform to forecast water consumption with Machine-...
Nowadays, a large number of water utilities still manage their operation on the instant water demand...
Abstract: River flow forecasting models provide an essential tool to manage water resources, address...
Water demand forecasting is a crucial task in the efficient management of the water supply system. T...
Epidemiology-based models have shown to have successful adaptations to deal with challenges coming f...
This paper presents a comparison of different short-term water demand forecasting models. The compar...
[EN] Operational and economic aspects of water distribution make water demand forecasting paramount ...
This article proposes a new general approach in short-term water demand forecasting based on a two-s...
Water distribution systems (WDS) operators would benefit greatly from educated estimates of water de...
Statistical water demand models are usually developed as time series coefficients using historically...
Water demand forecasting is an important tool in the design, operation, and management of urban wate...
Short-term water demand forecasting models address the case of a real-time optimal water pumping sch...
n this paper a comparison among six short-term water demand forecasting models is presented. The mod...
Genetic programming (GP) is a widely used machine learning (ML) algorithm that has been applied in w...
Efficient management of a drinking water network reduces the economic costs related to water product...
This article presents a real-time data analysis platform to forecast water consumption with Machine-...
Nowadays, a large number of water utilities still manage their operation on the instant water demand...
Abstract: River flow forecasting models provide an essential tool to manage water resources, address...
Water demand forecasting is a crucial task in the efficient management of the water supply system. T...
Epidemiology-based models have shown to have successful adaptations to deal with challenges coming f...
This paper presents a comparison of different short-term water demand forecasting models. The compar...
[EN] Operational and economic aspects of water distribution make water demand forecasting paramount ...