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Rainfall-runoff Modeling Using Artificial Neural Networks: Rainfall-runoff Modeling Using Artificial Neural Networks (Anns) and Physically-based Model-theory Simulation and Results Jagadeesh Anmala
Rainfall-runoff Modeling Using Artificial Neural Networks: Rainfall-runoff Modeling Using Artificial Neural Networks (Anns) and Physically-based Model-theory Simulation and Results
Jagadeesh Anmala
The book addresses a two-pronged approach for the determination of a watershed's response by developing a physically-based model and a neural network-based model. For the physically-based model, the watershed is partitioned into a series of one-dimensional overland flow planes and channel elements, and water is routed over these elements in a cascading fashion. A system of partial differential equations under the kinematic wave approximation was used to describe surface water movement. The applicability of ANNs was investigated by developing a neural network-based runoff predictive model. The performance of ANNs, with different architectures, was evaluated using monthly precipitation and temperature data (input) and watershed runoff (output) for 3 medium-sized watersheds ? El Dorado, Marion, and Council Grove in Kansas, USA. The prediction of watershed response was also studied using several existing empirical rainfall-runoff models. The advantage of ANNs over the physically-based models is that they require only input and output data for mapping of an unknown function such as rainfall-runoff relationship. In the case of physically-based models a lot more data is required.
| Medios de comunicación | Libros Paperback Book (Libro con tapa blanda y lomo encolado) |
| Publicado | 19 de julio de 2010 |
| ISBN13 | 9783838383392 |
| Editores | LAP LAMBERT Academic Publishing |
| Páginas | 200 |
| Dimensiones | 225 × 11 × 150 mm · 316 g |
| Lengua | Alemán |