Many-objective groundwater monitorin...
Kollat, Joshua Brian.

 

  • Many-objective groundwater monitoring network design using bias-aware ensemble Kalman filtering, evolutionary optimization, and visual analytics.
  • Record Type: Language materials, printed : Monograph/item
    Title/Author: Many-objective groundwater monitoring network design using bias-aware ensemble Kalman filtering, evolutionary optimization, and visual analytics.
    Author: Kollat, Joshua Brian.
    Description: 211 p.
    Notes: Source: Dissertation Abstracts International, Volume: 71-09, Section: B, page: 5653.
    Contained By: Dissertation Abstracts International71-09B.
    Subject: Hydrology.
    Subject: Engineering, Civil.
    Subject: Water Resource Management.
    ISBN: 9781124167015
    [NT 15000229]: This dissertation contributes the ASSIST (Adaptive Strategies for Sampling in Space and Time) framework for improving long-term groundwater monitoring (LTGM) decisions across space and time while accounting for the influences of systematic model errors (or predictive bias). The new framework combines Monte Carlo based contaminant flow-and-transport modeling, bias-aware ensemble Kalman filtering (EnKF), many-objective evolutionary optimization, and visual analytics-based decision support. The ASSIST framework allows decision makers to forecast the value of investments in new observations for many objectives simultaneously. Information tradeoffs are evaluated using an EnKF to forecast plume transport in space and time in the presence of uncertain and biased model predictions that are conditioned on uncertain measurement data. The goal of the ASSIST framework is to provide decision makers with a fuller understanding of the information tradeoffs they must confront when performing long-term groundwater monitoring network design.
    Online resource: http://pqdd.sinica.edu.tw/twdaoapp/servlet/advanced?query=3420166
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