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OverviewThere has been an explosive growth of methods in recent years for learning (or estimating dependency) from data, where data refers to known samples that are combinations of inputs and corresponding outputs of a given physical system. The main subject addressed in this thesis is model induction from data for the simulation of hydrodynamic processes in the aquatic environment. Firstly, some currently popular artificial neural network architectures are introduced, and it is then argued that these devices can be regarded as domain knowledge incapsulators by applying the method to the generation of wave equations from hydraulic data and showing how the equations of numerical-hydraulic models can, in their turn, be recaptured using artificial neural networks. The book also demonstrates how artificial neural networks can be used to generate numerical operators on non-structured grids for the simulation of hydrodynamic processes in two-dimensional flow systems and a methodology has been derived for developing generic hydrodynamic models using artificial neural network. The book also highlights one other model induction technique, namely that of support vector machine, as an emerging new method with a potential to provide more robust models. Full Product DetailsAuthor: Y.B. DibikePublisher: A A Balkema Publishers Imprint: A A Balkema Publishers Volume: 30 Dimensions: Width: 17.80cm , Height: 0.80cm , Length: 25.40cm Weight: 0.290kg ISBN: 9789058093561ISBN 10: 9058093565 Pages: 156 Publication Date: 01 January 2002 Audience: College/higher education , Professional and scholarly , Postgraduate, Research & Scholarly , Professional & Vocational Format: Paperback Publisher's Status: Active Availability: In Print ![]() This item will be ordered in for you from one of our suppliers. Upon receipt, we will promptly dispatch it out to you. For in store availability, please contact us. Table of ContentsChapter 1 Introduction 1.1 Current Practices of Computational Hydraulic Modelling 1.2 Problems Associated with the Current Practice 1.3 Model Induction from Data: an Alternative Approach 1.4 Model Structure Selection 1.5 Outline of the Thesis Chapter 2 Artificial Neural Networks as Model Induction Techniques Chapter 3 Model Induction with Support Vector Machines Chapter 4 Artificial Neural Networks as Domain knowledge Encapsulators Chapter 5 Simulation of Hydrodynamic Processes Using ANNs Chapter 6 Developing Generic Hydrodynamic Models Using ANNs Chapter 7 Summary and Conclusions.ReviewsAuthor InformationYONAS BERHAN DIBIKE born in Addis Ababa, Ethiopia Master of Science with Distinction, IHE. Tab Content 6Author Website:Countries AvailableAll regions |