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Machine Learning in Engineering Analysis and Design: An Integrated Fuzzy Neural Network Learning Model
Applying neural network computing to structural engineering problems has received increasing interest, with particular emphasis placed on a supervised neural network with the backpropagation (BP) learning algorithm. In this article, we present an integrated fuzzy neural network (IFN) learning model by integrating a newly developed unsupervised fuzzy neural network (UFN) reasoning model with a supervised learning model in structural engineering. The UFN reasoning model is developed on the basis of a single‐layer laterally connected neural network with an unsupervised competing algorithm. The IFN learning model is compared with the BP learning algorithm as well as with a counterpropagation learning algorithm (CPN) using two engineering analysis and design examples from the recent literature. This comparison indicates not only a superior learning performance in solved instances but also a substantial decrease in computational time for the IFN learning model. In addition, the IFN learning model is applied to a complicated engineering design problem involving steel structures. The IFN learning model also demonstrates superior learning performance in a complicated structural design problem with a reasonable computational time.
Machine Learning in Engineering Analysis and Design: An Integrated Fuzzy Neural Network Learning Model
Applying neural network computing to structural engineering problems has received increasing interest, with particular emphasis placed on a supervised neural network with the backpropagation (BP) learning algorithm. In this article, we present an integrated fuzzy neural network (IFN) learning model by integrating a newly developed unsupervised fuzzy neural network (UFN) reasoning model with a supervised learning model in structural engineering. The UFN reasoning model is developed on the basis of a single‐layer laterally connected neural network with an unsupervised competing algorithm. The IFN learning model is compared with the BP learning algorithm as well as with a counterpropagation learning algorithm (CPN) using two engineering analysis and design examples from the recent literature. This comparison indicates not only a superior learning performance in solved instances but also a substantial decrease in computational time for the IFN learning model. In addition, the IFN learning model is applied to a complicated engineering design problem involving steel structures. The IFN learning model also demonstrates superior learning performance in a complicated structural design problem with a reasonable computational time.
Machine Learning in Engineering Analysis and Design: An Integrated Fuzzy Neural Network Learning Model
Hung, Shih‐Lin (Autor:in) / Jan, J. C. (Autor:in)
Computer‐Aided Civil and Infrastructure Engineering ; 14 ; 207-219
01.05.1999
13 pages
Aufsatz (Zeitschrift)
Elektronische Ressource
Englisch
MS_CMAC Neural Network Learning Model in Structural Engineering
British Library Online Contents | 1999
|Fuzzy Neural Network Model for Structural Design
British Library Conference Proceedings | 1998
|TECHNICAL PAPERS - MS CMAC Neural Network Learning Model in Structural Engineering
Online Contents | 1999
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