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contributor authorS. Yoshimura
contributor authorA. S. Jovanovic
date accessioned2017-05-08T23:51:23Z
date available2017-05-08T23:51:23Z
date copyrightMay, 1996
date issued1996
identifier issn0094-9930
identifier otherJPVTAS-28368#237_1.pdf
identifier urihttp://yetl.yabesh.ir/yetl/handle/yetl/117568
description abstractThis paper describes analyses of case studies on failure of structural components in power plants using hierarchical (multilayer) neural networks. Using selected test data about case studies stored in the structural failure database of a knowledge-based system, the network is trained: either to predict possible failure mechanisms like creep, overheating (OH), or overstressing (OS)-induced failure (network of Type A), or to classify a root failure cause of each case study into either a primary or secondary cause (network of Type B). In the present study, the primary root cause is defined as “manufacturing, material or design-induced causes,” while the secondary one as “not manufacturing, material or design-induced causes, e.g., failures due to operation or mal-operation.” An ordinary three-layer neural network employing the back propagation algorithm with the momentum method is utilized in this study. The results clearly show that the neural network is a powerful tool for analyzing case studies of failure in structural components. For example, the trained network of Type A predicts creep-induced failure in unknown case studies with an accuracy of 86 percent, while the network of Type B classifies root failure causes of unknown case studies with an accuracy of 88 percent. It should be noted that, due to a shortage of available case studies, an appropriate selection of case studies and input parameters to be used for network training was necessary in order to attain high accuracy. A collection of more case studies should, however, resolve this problem, and improve the accuracy of the analyses. An analysis module for case studies using the neural network has also been developed and successfully implemented in a knowledge-based system.
publisherThe American Society of Mechanical Engineers (ASME)
titleAnalyses of Possible Failure Mechanisms and Root Failure Causes in Power Plant Components Using Neural Networks and Structural Failure Database
typeJournal Paper
journal volume118
journal issue2
journal titleJournal of Pressure Vessel Technology
identifier doi10.1115/1.2842186
journal fristpage237
journal lastpage246
identifier eissn1528-8978
keywordsStructural failures
keywordsFailure mechanisms
keywordsPower stations
keywordsArtificial neural networks
keywordsDatabases
keywordsFailure
keywordsNetworks
keywordsCreep
keywordsManufacturing
keywordsDesign
keywordsMomentum AND Algorithms
treeJournal of Pressure Vessel Technology:;1996:;volume( 118 ):;issue: 002
contenttypeFulltext


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