Proceedings of the Korea Water Resources Association Conference (한국수자원학회:학술대회논문집)
- 2005.05b
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- Pages.679-683
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- 2005
The Derivation of Rating Curve using GRNNM and GA
GRNNM과 GA를 이용한 Rating Curve의 유도
Abstract
The technique which connects Generalized Regression Neural Networks Model(GRNNM) with Genetic Algorithm (CA) is used to derive rating curve in the river basin. GRNNM architecture consists of 4 layers ; input, hidden, summation and output layer. GA method is applied to estimate the optimal smoothing factor when GRNNM is trained. The derivation of rating curve using GRNNM is considered different kinds of hydraulic characteristics such as water stage, area and mean velocity and is applied two stage stations; Sunsan and Jungam. Furthermore, it is compared with conventional curve-fitting method. Through the training and validation performance, the results show that GRNNM is much superior as compared to the conventional curve-fitting method.