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Pressure Sampling Design for Estimating Nodal Water Demand in Water Distribution Systems
by
Li, Kun
, Shao, Yu
, Ao, Weilin
, Zhang, Tuqiao
, Chu, Shipeng
in
Accuracy
/ Algorithms
/ Civil engineering
/ Design
/ Design factors
/ Design techniques
/ Distribution
/ Hydraulic models
/ Hydraulics
/ Integer programming
/ Methods
/ Model accuracy
/ Modularity
/ Monitoring systems
/ Noise
/ Noise measurement
/ Noise monitoring
/ Optimization
/ Pressure
/ Sampling
/ Sampling designs
/ Sensitivity analysis
/ Sensors
/ Side effects
/ System theory
/ Water
/ Water demand
/ Water distribution
/ Water distribution systems
/ Water engineering
/ Water quality
2024
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Pressure Sampling Design for Estimating Nodal Water Demand in Water Distribution Systems
by
Li, Kun
, Shao, Yu
, Ao, Weilin
, Zhang, Tuqiao
, Chu, Shipeng
in
Accuracy
/ Algorithms
/ Civil engineering
/ Design
/ Design factors
/ Design techniques
/ Distribution
/ Hydraulic models
/ Hydraulics
/ Integer programming
/ Methods
/ Model accuracy
/ Modularity
/ Monitoring systems
/ Noise
/ Noise measurement
/ Noise monitoring
/ Optimization
/ Pressure
/ Sampling
/ Sampling designs
/ Sensitivity analysis
/ Sensors
/ Side effects
/ System theory
/ Water
/ Water demand
/ Water distribution
/ Water distribution systems
/ Water engineering
/ Water quality
2024
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Do you wish to request the book?
Pressure Sampling Design for Estimating Nodal Water Demand in Water Distribution Systems
by
Li, Kun
, Shao, Yu
, Ao, Weilin
, Zhang, Tuqiao
, Chu, Shipeng
in
Accuracy
/ Algorithms
/ Civil engineering
/ Design
/ Design factors
/ Design techniques
/ Distribution
/ Hydraulic models
/ Hydraulics
/ Integer programming
/ Methods
/ Model accuracy
/ Modularity
/ Monitoring systems
/ Noise
/ Noise measurement
/ Noise monitoring
/ Optimization
/ Pressure
/ Sampling
/ Sampling designs
/ Sensitivity analysis
/ Sensors
/ Side effects
/ System theory
/ Water
/ Water demand
/ Water distribution
/ Water distribution systems
/ Water engineering
/ Water quality
2024
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Pressure Sampling Design for Estimating Nodal Water Demand in Water Distribution Systems
Journal Article
Pressure Sampling Design for Estimating Nodal Water Demand in Water Distribution Systems
2024
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Overview
The water distribution system (WDS) hydraulic model is extensively used for design and management of WDS. The nodal water demand is the crucial parameter of the model that requires accurate estimating by the pressure measurements. Proper pressure sampling design is essential for estimating nodal water demand and improving model accuracy. Existing research has emphasized the need to enhance the observability of monitoring systems and mitigate the adverse effects of monitoring noise. However, methods that simultaneously consider both of these factors in sampling design have not been adequately studied. In this study, a novel two-objective sampling design method is developed to improve the system observability and mitigate the adverse effects of monitoring noise. The approach is applied to a realistic network and results demonstrate that the developed approach can effectively improve the observability and robustness of the system especially when considerable measurement noise is considered.
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