A platform for research: civil engineering, architecture and urbanism
Burst detection using hydraulic data from water distribution systems with artificial neural networks
This paper presents research into the application of artificial neural networks (ANNs) for analysis of data from sensors measuring hydraulic parameters (flow and pressure) of the water flow in treated water distribution systems. Two neural architectures (static and time delay) are applied for time series pattern classification from the perspective of detecting leakage. Results are presented using data from an experimental site in a distribution system of a UK water company in which bursts were simulated by hydrant flushing. Field trials have shown how ANNs can be used effectively for a leakage detection task. Both static and time delay ANNs learned patterns of leaks/bursts. The time delay neural network showed improved performance over the static network. It is concluded that the effectiveness of an ANN in discovering relationships within the data is dependent upon two key factors: availability of sufficient exemplars and data quality.
Burst detection using hydraulic data from water distribution systems with artificial neural networks
This paper presents research into the application of artificial neural networks (ANNs) for analysis of data from sensors measuring hydraulic parameters (flow and pressure) of the water flow in treated water distribution systems. Two neural architectures (static and time delay) are applied for time series pattern classification from the perspective of detecting leakage. Results are presented using data from an experimental site in a distribution system of a UK water company in which bursts were simulated by hydrant flushing. Field trials have shown how ANNs can be used effectively for a leakage detection task. Both static and time delay ANNs learned patterns of leaks/bursts. The time delay neural network showed improved performance over the static network. It is concluded that the effectiveness of an ANN in discovering relationships within the data is dependent upon two key factors: availability of sufficient exemplars and data quality.
Burst detection using hydraulic data from water distribution systems with artificial neural networks
Mounce, Stephen R. (author) / Machell, John (author)
Urban Water Journal ; 3 ; 21-31
2006-03-01
11 pages
Article (Journal)
Electronic Resource
Unknown
DOAJ | 2021
|Burst Detection Using an Artificial Immune Network in Water-Distribution Systems
British Library Online Contents | 2014
|Burst detection and location in water distribution networks
British Library Conference Proceedings | 2005
|Burst detection and location in water distribution networks
Online Contents | 2005
|