This article presents a real-time data analysis platform to forecast water consumption with Machine-Learning (ML) techniques. The strategy fully relies on a web-oriented architecture to ensure better management and optimized monitoring of water consumption. This monitoring is carried out through a communicating system for collecting data in the form of unevenly spaced time series. The platform is completed by learning capabilities to analyze and forecast water consumption. The analysis consists of checking the data integrity and inconsistency, in looking for missing data, and in detecting abnormal consumption. Forecasting is based on the Long Short-Term Memory (LSTM) and the Back-Propagation Neural Network (BPNN). After evaluation, results ...
Many regions on earth face daily limitations in the quantity and quality of the water resources avai...
L’objectif de cette thèse consiste à étudier le comportement des utilisateurs en tant que consommate...
© 2019 IEEE. Recommender systems assist customers to make decisions; however, the modest adoption of...
The importance of efficient water resource supply has been acknowledged, and it is essential to pred...
This study utilizes a rich UK data set of smart demand metering data, household characteristics, and...
Water demand forecasting is a crucial task in the efficient management of the water supply system. T...
Nowadays, a large number of water utilities still manage their operation on the instant water demand...
Sustainable and effective management of urban water supply is a key challenge for the well-being and...
This paper presents an application of Artificial Neural Network models (ANN) to predict the water co...
Water distribution systems (WDS) operators would benefit greatly from educated estimates of water de...
AbstractThis paper presents an artificial neural network-based model of domestic water consumption. ...
This paper presents an artificial neural network-based model of domestic water consumption. The mode...
n this paper a comparison among six short-term water demand forecasting models is presented. The mod...
This paper presents a completely data-driven and machine-learning-based approach, in two stages, to ...
Technology has been increasingly applied in search for excellence in water resource management. Tool...
Many regions on earth face daily limitations in the quantity and quality of the water resources avai...
L’objectif de cette thèse consiste à étudier le comportement des utilisateurs en tant que consommate...
© 2019 IEEE. Recommender systems assist customers to make decisions; however, the modest adoption of...
The importance of efficient water resource supply has been acknowledged, and it is essential to pred...
This study utilizes a rich UK data set of smart demand metering data, household characteristics, and...
Water demand forecasting is a crucial task in the efficient management of the water supply system. T...
Nowadays, a large number of water utilities still manage their operation on the instant water demand...
Sustainable and effective management of urban water supply is a key challenge for the well-being and...
This paper presents an application of Artificial Neural Network models (ANN) to predict the water co...
Water distribution systems (WDS) operators would benefit greatly from educated estimates of water de...
AbstractThis paper presents an artificial neural network-based model of domestic water consumption. ...
This paper presents an artificial neural network-based model of domestic water consumption. The mode...
n this paper a comparison among six short-term water demand forecasting models is presented. The mod...
This paper presents a completely data-driven and machine-learning-based approach, in two stages, to ...
Technology has been increasingly applied in search for excellence in water resource management. Tool...
Many regions on earth face daily limitations in the quantity and quality of the water resources avai...
L’objectif de cette thèse consiste à étudier le comportement des utilisateurs en tant que consommate...
© 2019 IEEE. Recommender systems assist customers to make decisions; however, the modest adoption of...