Scientific Results

  • ID:
    publications-3996
  • Type:
    article
  • Year:
    2015
  • Authors:
    Rasekh, Amin and Brumbelow, Kelly
  • Title:
    A dynamic simulation-optimization model for adaptive management of urban water distribution system contamination threats
  • Venue/Journal:
    Applied Soft Computing
  • DOI:
    10.1016/j.asoc.2015.03.021
  • Research type:
  • Water System:
  • Technical Focus:
  • Abstract:
    Dynamic simulation is performed to model water distribution system contamination.Dynamic optimization is used to track time-varying optimal response protocols.Dynamic models provide adaptive decision support for public health protection. Urban water distribution systems hold a critical and strategic position in preserving public health and industrial growth. Despite the ubiquity of these urban systems, aging infrastructure, and increased risk of terrorism, decision support models for a timely and adaptive contamination emergency response still remain at an undeveloped stage. Emergency response is characterized as a progressive, interactive, and adaptive process that involves parallel activities of processing streaming information and executing response actions. This study develops a dynamic decision support model that adaptively simulates the time-varying emergency environment and tracks changing best health protection response measures at every stage of an emergency in real-time. Feedback mechanisms between the contaminated network, emergency managers, and consumers are incorporated in a dynamic simulation model to capture time-varying characteristics of an emergency environment. An evolutionary-computation-based dynamic optimization model is developed to adaptively identify time-dependant optimal health protection measures during an emergency. This dynamic simulation-optimization model treats perceived contaminant source attributes as time-varying parameters to account for perceived contamination source updates as more data stream in over time. Performance of the developed dynamic decision support model is analyzed and demonstrated using a mid-size virtual city that resembles the dynamics and complexity of real-world urban systems. This adaptive emergency response optimization model is intended to be a major component of an all-inclusive cyberinfrastructure for efficient contamination threat management, which is currently under development.
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