Particle Swarm Optimization Neural Network for Flow Prediction in Vegetative Channel

Flow prediction in a vegetated channel has been extensively studied in the past few decades. A number of equations that essentially differ from each other in derivation and form have been developed. Because the process is extremely complex, getting the deterministic or analytical form of the process...

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Main Authors: Jha Anjaneya, Kumar Bimlesh
Format: Article
Language:English
Published: De Gruyter 2013-12-01
Series:Journal of Intelligent Systems
Subjects:
Online Access:https://doi.org/10.1515/jisys-2013-0003
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spelling doaj-2c0ef176c25f4abc932d900bdc3a45442021-09-06T19:40:35ZengDe GruyterJournal of Intelligent Systems0334-18602191-026X2013-12-0122448750110.1515/jisys-2013-0003Particle Swarm Optimization Neural Network for Flow Prediction in Vegetative ChannelJha Anjaneya0Kumar Bimlesh1Indian Institute of Technology Guwahati, Department of Civil Engineering, Guwahati, Assam 781039, IndiaIndian Institute of Technology Guwahati, Department of Civil Engineering, Guwahati, Assam 781039, IndiaFlow prediction in a vegetated channel has been extensively studied in the past few decades. A number of equations that essentially differ from each other in derivation and form have been developed. Because the process is extremely complex, getting the deterministic or analytical form of the process phenomena is too difficult. Hybrid neural network model (combining particle swarm optimization with neural network) is particularly useful in modeling processes where an adequate knowledge of the physics is limited. This hybrid model is presented here as a complementary tool to model channel flow–vegetation interactions in submerged vegetation conditions. The hybrid model is used to overcome the local minima limitations of a feed-forward neural network. The prediction capability of model has been found to be better than past empirical predictors. The model developed herein showed significantly better results in several model performance criteria compared with empirical models.https://doi.org/10.1515/jisys-2013-0003flow velocityparticle swarm optimizationneural networkvegetation densityvegetation height
collection DOAJ
language English
format Article
sources DOAJ
author Jha Anjaneya
Kumar Bimlesh
spellingShingle Jha Anjaneya
Kumar Bimlesh
Particle Swarm Optimization Neural Network for Flow Prediction in Vegetative Channel
Journal of Intelligent Systems
flow velocity
particle swarm optimization
neural network
vegetation density
vegetation height
author_facet Jha Anjaneya
Kumar Bimlesh
author_sort Jha Anjaneya
title Particle Swarm Optimization Neural Network for Flow Prediction in Vegetative Channel
title_short Particle Swarm Optimization Neural Network for Flow Prediction in Vegetative Channel
title_full Particle Swarm Optimization Neural Network for Flow Prediction in Vegetative Channel
title_fullStr Particle Swarm Optimization Neural Network for Flow Prediction in Vegetative Channel
title_full_unstemmed Particle Swarm Optimization Neural Network for Flow Prediction in Vegetative Channel
title_sort particle swarm optimization neural network for flow prediction in vegetative channel
publisher De Gruyter
series Journal of Intelligent Systems
issn 0334-1860
2191-026X
publishDate 2013-12-01
description Flow prediction in a vegetated channel has been extensively studied in the past few decades. A number of equations that essentially differ from each other in derivation and form have been developed. Because the process is extremely complex, getting the deterministic or analytical form of the process phenomena is too difficult. Hybrid neural network model (combining particle swarm optimization with neural network) is particularly useful in modeling processes where an adequate knowledge of the physics is limited. This hybrid model is presented here as a complementary tool to model channel flow–vegetation interactions in submerged vegetation conditions. The hybrid model is used to overcome the local minima limitations of a feed-forward neural network. The prediction capability of model has been found to be better than past empirical predictors. The model developed herein showed significantly better results in several model performance criteria compared with empirical models.
topic flow velocity
particle swarm optimization
neural network
vegetation density
vegetation height
url https://doi.org/10.1515/jisys-2013-0003
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AT kumarbimlesh particleswarmoptimizationneuralnetworkforflowpredictioninvegetativechannel
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