This paper presents a completely data-driven and machine-learning-based approach, in two stages, to first characterize and then forecast hourly water demand in the short term with applications of two different data sources: urban water demand (SCADA data) and individual customer water consumption (AMR data). In the first case, reliable forecasting can be used to optimize operations, particularly the pumping schedule, in order to reduce energy-related costs, while in the second case, the comparison between forecast and actual values may support the online detection of anomalies, such as smart meter faults, fraud or possible cyber-physical attacks. Results are presented for a real case: the water distribution network in Milan.

Candelieri, A. (2017). Clustering and support vector regression for water demand forecasting and anomaly detection. WATER, 9(3) [10.3390/w9030224].

Clustering and support vector regression for water demand forecasting and anomaly detection

Candelieri, A
2017

Abstract

This paper presents a completely data-driven and machine-learning-based approach, in two stages, to first characterize and then forecast hourly water demand in the short term with applications of two different data sources: urban water demand (SCADA data) and individual customer water consumption (AMR data). In the first case, reliable forecasting can be used to optimize operations, particularly the pumping schedule, in order to reduce energy-related costs, while in the second case, the comparison between forecast and actual values may support the online detection of anomalies, such as smart meter faults, fraud or possible cyber-physical attacks. Results are presented for a real case: the water distribution network in Milan.
Articolo in rivista - Articolo scientifico
Anomaly detection; Support vector regression; Time-series clustering; water demand forecasting; Biochemistry; Geography, Planning and Development; Aquatic Science; Water Science and Technology
English
2017
9
3
224
open
Candelieri, A. (2017). Clustering and support vector regression for water demand forecasting and anomaly detection. WATER, 9(3) [10.3390/w9030224].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10281/204369
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