Published 2016
Journal article

Performance of Conceptual and Black-Box Models in Flood Warning Systems

Description

AbstractFlood forecasting is a core of flood forecasting and flood warning system which can be implemented by both conceptual rainfall?runoff (CRR) model and black-box rainfall?runoff (BBRR) model. Dynamic artificial neural network (DANN) as an innovative BBRR model and HEC-HMS as a traditional CRR model were used for flood forecasting. The aim of this paper is to compare the efficiency of HEC-HMS and DANN for the determination of flood warning lead-time (FWLT) in a steep urbanized watershed. A framework is proposed to compare the performance of the models based on four criteria: type and quantity of required input data by each model, flood simulation performance, FWLT and expected lead-time (ELT). Finally, the results show that FWLT and ELT were estimated longer by DANN than by HEC-HMS model. In brief, because of less required data by BBRR model and its longer ELT, future research should be focused on better verification of it.

Additional details

Publishing information

Title
Cogent Engineering
Volume
3
Issue
1
Pages
1127798

Legacy Data

Legacy numeric recid
32146