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A Hybrid Expert Systems Architecture for Yarn Fault Diagnosis

Identyfikatory
Warianty tytułu
PL
Hybrydowe systemy eksperckie do rozpoznawania uszkodzeń przędzy
Języki publikacji
EN
Abstrakty
EN
This article describes a hybrid expert system architecture to support yarn fault diagnosis. The system uses a combination of rule-based and case-based techniques to achieve the diagnosis. Rule-based systems handle problems with well-defined knowledge bases, which limits the flexibility of such systems. To overcome this inherent weakness of rule-based systems (RBS), case-based reasoning (CBR) has been adopted to improve the performance of the expert system by incorporating previous cases in the generation of new cases. The idea of this research is to use rules to generate a diagnosis on a fault and to use cases to handle exceptions to the rules. The cases are represented using an object-oriented approach to support abstraction, re-use and inheritance features.
PL
Artykuł ten opisuje architekturę hybrydowego systemu eksperckiego, stosowanego jako pomoc w rozpoznawaniu błędów przędzy. W celu dokonania rozpoznania uszkodzeń, system hybrydowy oparty jest na kombinacji technik, których podstawami są „reguły” i „przypadki”. Systemy oparte na „regułach” (SOR) rozwiązują problemy o dobrze znanych i określonych zasadach, co ogranicza elastyczność takich systemów. Aby pokonać tą ich nieodłączną niesprawność i polepszyć działanie systemu, zastosowano podsystemy rozpoznające przypadki (SRP), dla generacji nowych przypadków na podstawie analizy dotychczasowych. Myślą przewodnią przedstawionego opracowania jest stosowanie reguł dla generowania diagnozy, dotyczącej danego błędu i wykorzystania przypadków dla rozpatrywania odstępstw od reguł. Przypadki są reprezentowane poprzez dochodzenie do celu zorientowanie na obiekt dla wsparcia abstrakcji reguły i powtórnej realizacji zadania.
Rocznik
Strony
43--49
Opis fizyczny
Bibliogr. 50 poz., rys.
Twórcy
autor
  • National University of Science and Technology, Box AC 939, Ascot, Bulawayo, Zimbabwe
  • Council for Scientific and Industrial Research, National Fibre, Textile and Clothing Centre, Box 1124, Gomery Avenue, Summerstrand, Port Elizabeth, South Africa 6000
autor
  • Nelson Mandela Metropolitan University P.O. Box 7700 Port Elizabeth, South Africa 6003
  • Council for Scientific and Industrial Research, National Fibre, Textile and Clothing Centre, Box 1124, Gomery Avenue, Summerstrand, Port Elizabeth, South Africa 6000
autor
  • Council for Scientific and Industrial Research, National Fibre, Textile and Clothing Centre, Box 1124, Gomery Avenue, Summerstrand, Port Elizabeth, South Africa 6000
  • Council for Scientific and Industrial Research, National Fibre, Textile and Clothing Centre, Box 1124, Gomery Avenue, Summerstrand, Port Elizabeth, South Africa 6000
autor
  • Council for Scientific and Industrial Research, National Fibre, Textile and Clothing Centre, Box 1124, Gomery Avenue, Summerstrand, Port Elizabeth, South Africa 6000
Bibliografia
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Typ dokumentu
Bibliografia
Identyfikator YADDA
bwmeta1.element.baztech-3821dc7f-73b4-4f90-82e9-64f5fa531d8d
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