Title of article
Using genetic algorithms to calibrate a water quality model
Author/Authors
Shuming Liu، نويسنده , , d، نويسنده , , ?، نويسنده , , David Butler، نويسنده , , Richard Brazier، نويسنده , , A. Louise Heathwaite، نويسنده , , Soon-Thiam Khu، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2007
Pages
13
From page
260
To page
272
Abstract
With the increasing concern over the impact of diffuse pollution on water bodies, many diffuse pollution models have been
developed in the last two decades. A common obstacle in using such models is how to determine the values of the model
parameters. This is especially true when a model has a large number of parameters, which makes a full range of calibration
expensive in terms of computing time. Compared with conventional optimisation approaches, soft computing techniques often
have a faster convergence speed and are more efficient for global optimum searches. This paper presents an attempt to calibrate a
diffuse pollution model using a genetic algorithm (GA). Designed to simulate the export of phosphorus from diffuse sources
(agricultural land) and point sources (human), the Phosphorus Indicators Tool (PIT) version 1.1, on which this paper is based,
consisted of 78 parameters. Previous studies have indicated the difficulty of full range model calibration due to the number of
parameters involved. In this paper, a GAwas employed to carry out the model calibration in which all parameters were involved. A
sensitivity analysis was also performed to investigate the impact of operators in the GA on its effectiveness in optimum searching.
The calibration yielded satisfactory results and required reasonable computing time. The application of the PIT model to the
Windrush catchment with optimum parameter values was demonstrated. The annual P loss was predicted as 4.4 kg P/ha/yr, which
showed a good fitness to the observed value.
Keywords
Diffuse pollution , Genetic algorithm , model calibration , Phosphorus Indicators Tool
Journal title
Science of the Total Environment
Serial Year
2007
Journal title
Science of the Total Environment
Record number
986114
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