We found a match
Your institution may have access to this item. Find your institution then sign in to continue.
- Title
Flood-routing modeling with neural network optimized by social-based algorithm.
- Authors
Nikoo, Mehdi; Ramezani, Fatemeh; Hadzima-Nyarko, Marijana; Nyarko, Emmanuel; Nikoo, Mohammad
- Abstract
Forecasting and operational routing flood requires accurate forecasts on proper feed time, to be able to issue suitable warnings and take suitable emergency actions. Flood-routing problem is one of the most complicated matters in hydraulics of open channels and river engineering. Flood routing is the process of computing the progressive time and shape of a flood wave at successive points along a river. To get an approximate solution of the flood-routing problem, different techniques are used. This paper describes an approach to train artificial neural network (ANN) using social-based algorithm (SBA). The approach illustrates feed-forward neural network optimization for the flood-routing problem of Kheir Abad River called FF-SBA. To this end, the number and effective time lag of input data in ANN models are initially determined by means of linear correlation between input and output time series; subsequently, the weights of the feed-forward network is optimized by SBA. Optimization algorithms and statistical models like Genetic Algorithm and linear regression are compared to FF-SBA. Compared to the results of optimization algorithms and statistical models, the FF-SBA model for the Kheir Abad River in Iran shows more flexibility and accuracy.
- Subjects
IRAN; FLOOD routing; STREAM measurements; NEURAL circuitry; RIVER engineering
- Publication
Natural Hazards, 2016, Vol 82, Issue 1, p1
- ISSN
0921-030X
- Publication type
Article
- DOI
10.1007/s11069-016-2176-5