1 / 23

Alireza Yazdani Post-Doctoral Research Associate Department of Civil & Environmental Engineering

Quantifying Uncertainty to Support Sustainable Planning and Management of Water Supply Infrastructure. Alireza Yazdani Post-Doctoral Research Associate Department of Civil & Environmental Engineering Rice University Presented at: SAMSI Uncertainty Quantification Transition Workshop

maeve
Télécharger la présentation

Alireza Yazdani Post-Doctoral Research Associate Department of Civil & Environmental Engineering

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. Quantifying Uncertainty to Support Sustainable Planning and Management of Water Supply Infrastructure Alireza Yazdani Post-Doctoral Research Associate Department of Civil & Environmental Engineering Rice University Presented at: SAMSI Uncertainty Quantification Transition Workshop May 22nd, 2012

  2. NETWORK TOPOLOGY • UNCERTAINTY QUANTIFICATION • SYSTEM PERFORMANCE EVALUATION • SUSTAINABLE WATER SUPPLY MANAGEMENT

  3. Water Supply Infrastructure • Water Distribution Systems (WDS) are large complex networks of multiple interdependent nodes (e.g. reservoirs, fittings, fire hydrants) joined by links (e.g. pipes, valves, pumps). • Main system components: • Source • Treatment • Transmission • Storage • Distribution A hypothetical network representation

  4. The problem • The US Water infrastructure is old, fragile and inadequate in meeting the increasing demand for water. • Last year’s Texas drought resulted in a spike in water main breaks (CBS local, Aug 2011). • Existing centralized networks, suffer from high water age, bio-film growth, pressure loss and high energy consumption. • There is currently an underinvestment (~ $108.6 Billion). • Source: (EPA, 2006 Committee on Public Water Supply Distribution Systems: Assessing and Reducing Risks, National Research Council, and 2009 Report Card for America’s Infrastructure)

  5. 2009 ASCE Report Card for America’s Infrastructure America's Infrastructure G.P.A. = DA = Exceptional B = GoodC = MediocreD = Poor F = Failing

  6. Sustainability • A sustainable Water Supply System is one that supplies anticipated demands over a sensible time horizon without degradation of the source of the supply or other element’s of the system’s environment.* • Criteria: • Reliability: • adequate flow and pressure, availability of the physical components • Water Quality: • Acceptable water age and chemical contents • Efficiency: • leakage management, operational efficiency and environmental impacts • Achieving sustainability requires integrated analysis and optimization of performance criteria while dealing with uncertainties in the data/model/natural environment * Water Distribution Systems (2011), D. Savic, J. Banyard (Eds.), ICE Press.

  7. Reservoir and treatment facilities Adequacy (quality/quantity): How does water taste there? Is the pressure sufficient? Reliability: what if these pipes break together?! Efficiency: what is the cost/impacts of getting water here? A slightly reconfigured EPANET representation of Colorado Springs WDS

  8. Uncertainty and Decision Making • Reducible ( epistemic) uncertainty: Resulting from a lack of information in model about the system, typically reduced through inspection, measurement or improving the analogy between the abstract model and real system • Irreducible (aleatoric) uncertainty: Natural randomness in a process, usually described by probabilistic approaches Not to be absolutely certain is, I think, one of the essential things in rationality. Bertrand Russell Image taken from: S. Fox (2011), Factors in ontological uncertainty related to ICT innovations, I. J. Manag. Proj. Busin, 4 (1), 137-149.

  9. Examples from Water Supply Engineering • Model (e): inability to represent true physics of the system and its behaviour • Data (e): measurement error, inconsistent/inaccurate/inadequate data • Operation (e): related to the system construction, design, equipments, deterioration, maintenance • Natural (a): unpredictability of nature and its impacts on the system • Determining the pipe size, tank diameter, network topology at design stage • Placement of sensors/control valves to monitor water quality • Prediction of the physical components failure rates and evaluating failure consequences • Estimating water weekly/monthly/yearly water demand to support normal/peak consumption • Assessing the impacts of climate/demographical changes on resources

  10. WDS Performance is largely affected by network topology • Uncertainty in system performance due to the unknown/unpredictable parameters may be reduced through studying topology. Source unavailable Reservoir Reservoir Pipe Break/Contaminant Ingress Tank • Reliability: how often the system fails (in quantity or quality terms). • Vulnerability: how serious the consequences of the failure may be. • Resiliency: how quickly the system recovers from failure.

  11. The Need and Practicality • Centralized treatment/operation • water quality deterioration • cost of wastewater collection • high energy loss • Decentralized treatment • shorter pipe lengths • improved water quality? • more efficient? Image from D. Kang, K. Lansey, Scenario-based Robust Optimization of Regional Water/Wastewater Infrastructure,doi:10.1061/(ASCE)WR.1943-5452.0000236

  12. Network measurements

  13. Network topology models • Random networks: • Random degree distribution (equal connectivity likelihood) • Network equally vulnerable to failures/attacks (typical nodes) • Examples: spatial networks (no hubs, large diameter) • Small worlds: • Gaussian or exponential degree distribution • Large networks with low path lengths and high clustering • Scale free networks: • Scale-free networks/power law degree distribution • Many low degree nodes with very few highly connected hubs • Robust against random component failures yet fragile under targeted attacks on the hubs

  14. Image: Albert, Barabasi and Bonabeau, (2003), Scale-free Networks, Scientific American, 288, 50-59.

  15. Case studies Colorado Springs (CS), USA City of Houston (COH), USA Richmond Yorkshire Water (RYW), UK

  16. Case studies (cont.)

  17. Generalized connectivity(an example of reducing model uncertainty at the fine scales) W1=1 W1=0.5 W2=0.5 W3=0.3 W3=0.3 W3=0.3 W3=0.3 Demand-adjusted entropic degree (DAED)* combines topology and physics by incorporating the number of links attached to a node, the capacity of the link connections and the way they are distributed while taking into account the demand for water at each node. d=0.4 i i i i W3=0.6 W3=0.2 * A. Yazdani, P. Jeffrey (2012), Water Resour. Res., doi:10.1029/2012WR011897, in press

  18. Generalized connectivity (cont.) CS RYW

  19. Generalized connectivity (cont.) RYW CS

  20. Generalized connectivity (a WDS specific alternative for degree distribution)

  21. Summary and Conclusions • The analysis of WDS topology: • Reduces model uncertainty and offers a computationally inexpensive and less data-dependent simplified approach • Helps quantifying vaguely understood qualities such as redundancy, optimal-connectivity and fault-tolerance • Supports development and comparison of the alternative design and operation (e.g. Decentralized) scenarios • The UQ via studying interactions of system topology and performance (hydraulic reliability, energy use, water quality) provides theoretical support for finding sustainable solutions for water infrastructure systems planning and management (rehabilitation/design/expansion problems). • Due to the WDS specifications, data and model uncertainties, and hydraulic complexities, advanced UQ techniques (e.g. spectral methods, multiple regression and survival analysis and non-parametric statistics) have a special place in the realistic analysis of WDS vulnerability/sustainability.

  22. Ongoing and future work • Performance analysis and comparison of the centralized, decentralized and hybrid layouts in terms of water quantity and quality • Analysis of historical failure data to develop component/system failure rate models serving reliability analysis • Investigating the role of network topology (in the presence or absence of shut off valves) in facilitating mass transport/preventing the spread of contaminants within the system validated by the EPANET models

  23. Acknowledgements • Rice University Shell Centre for Sustainability • SAMSI for the travel support • Dr. Leonardo Duenas-Osorio and Dr. Qilin Li of Rice University Civil and Environmental Engineering

More Related