The objective of this work is to design long-term groundwater-quality sampling networks to provide a predetermined level of confidence in water quality estimates at selected locations and times at minimum cost. A genetic algorithm is used to select the location and timing of sampling events. A Kalman filter is used in the algorithm to obtain the best estimate of the concentration field. The use of a Kalman filter requires an initial estimate of the concentration field. This is achieved as the output of a groundwater flow and transport simulation model. One input to the simulator, observations of the hydraulic conductivity field, are generated using a Latin-hypercube sampling (Lhs) technique. The use of this Lhs technique reduces the number of times one solves a groundwater flow and transport problem in a Monte Carlo approach. The combination of all of these technologies provides an efficient groundwater sampling network design. The proposed methodology is applied to a field problem. Results show the methodology is applicable and cost-effective. They also suggest that better estimates are achieved if sampled field data are utilized in an interactive sampling-network design strategy.
Book Details: |
|
ISBN-13: |
978-620-2-31271-4 |
ISBN-10: |
6202312718 |
EAN: |
9786202312714 |
Book language: |
English |
By (author) : |
Yingqi Zhang |
Number of pages: |
168 |
Published on: |
2019-02-21 |
Category: |
Other |