Title of article :
A hybrid genetic—instance based learning algorithm for CE-QUAL-W2 calibration
Author/Authors :
Avi Ostfeld ?، نويسنده , , Shani Salomons، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2005
Pages :
21
From page :
122
To page :
142
Abstract :
This paper presents a calibration model for CE-QUAL-W2. CE-QUAL-W2 is a two-dimensional (2D) longitudinal/vertical hydrodynamic and water quality model for surface water bodies, modeling eutrophication processes such as temperature–nutrient–algae–dissolved oxygen–organic matter and sediment relationships. The proposed methodology is a combination of a ‘hurdle-race’ and a hybrid Genetic-k-Nearest Neighbor algorithm (GA-kNN). The ‘hurdle race’ is formulated for accepting–rejecting a proposed set of parameters during a CE-QUAL-W2 simulation; the k-Nearest Neighbor algorithm (kNN)—for approximating the objective function response surface; and the Genetic Algorithm (GA)—for linking both. The proposed methodology overcomes the high, non-applicable, computational efforts required if a conventional calibration search technique was used, while retaining the quality of the final calibration results. Base runs and sensitivity analysis are demonstrated on two example applications: a synthetic hypothetical example calibrated for temperature, serving for tuning the GA-kNN parameters; and the Lower Columbia Slough case study in Oregon US calibrated for temperature and dissolved oxygen. The GA-kNN algorithm was found to be robust and reliable, producing similar results to those of a pure GA, while reducing running times and computational efforts significantly, and adding additional insights and flexibilities to the calibration process.
Keywords :
calibration , CE-QUAL-W2 , Instance based learning , Genetic Algorithm , simulation , Water quality
Journal title :
Journal of Hydrology
Serial Year :
2005
Journal title :
Journal of Hydrology
Record number :
1098588
Link To Document :
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