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Adaptive hierarchical grid model of water-borne pollutant dispersion

AGL Borthwick*, RD Marchant, GJM Copeland

*Corresponding author for this work

Research output: Contribution to journalArticlepeer-review

Abstract

Water pollution by industrial and agricultural waste is an increasingly major public health issue. It is therefore important for water engineers and managers to be able to predict accurately the local behaviour of water-borne pollutants. This paper describes the novel and efficient coupling of dynamically adaptive hierarchical grids with standard solvers of the advection-diffusion equation. Adaptive quadtree grids are able to focus on regions of interest such as pollutant fronts, while retaining economy in the total number of grid elements through selective grid refinement. Advection is treated using Lagrangian particle tracking. Diffusion is solved separately using two grid-based methods; one is by explicit finite differences, the other a diffusion-velocity approach. Results are given in two dimensions for pure diffusion of an initially Gaussian plume, advection-diffusion of the Gaussian plume in the rotating flow field of a forced vortex, and the transport of species in a rectangular channel with side wall boundary layers. Close agreement is achieved with analytical solutions of the advection-diffusion equation and simulations from a Lagrangian random walk model. An application to Sepetiba Bay, Brazil is included to demonstrate the method with complex flows and topography. (C) 2000 Elsevier Science Ltd. All rights reserved.

Original languageEnglish
Pages (from-to)849-865
Number of pages17
JournalAdvances in Water Resources
Volume23
Issue number8
Publication statusPublished - Jul 2000

Keywords / Materials (for Non-textual outputs)

  • SIMULATION
  • MESHES
  • GENERATION
  • EQUATIONS
  • SCHEME
  • FLOW

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