AGGREGATION IN FUZZY FAULT TREE QUANTIFICATION: COMPARISON OF MEANS AND EXPERTONS TECHNIQUES

المؤلفون

  • R NAIT-SAID University of Batna
  • T BOUHOUFANI University of Batna
  • R SAL University of Batna

الكلمات المفتاحية:

Fuzzy Fault Tree Quantification، Aggregation، Arithmetic Mean، Experton

الملخص

This paper presents a comparison of the two techniques: arithmetic means and expertons, used for aggregation of experts’ judgments relative to basic events of fault trees. Valuations as confidence intervals included in [0, 1] have been considered. First, bounds are numbers to one decimal; next, numbers belonging to [0, 1]. In this last case, R+_expertons concept is used, with a counter-expertise form proposed. The means technique is well known in practice, but as fault tree is a logical diagram built by "AND" and "OR" gates, i.e. nonlinear operators, its use leads to wrong results and expertons technique should be used.

التنزيلات

بيانات التنزيل غير متوفرة بعد.

السير الشخصية للمؤلفين

R NAIT-SAID، University of Batna

Health and Safety Department
Faculty of Engineering

T BOUHOUFANI، University of Batna

Health and Safety Department
Faculty of Engineering

R SAL، University of Batna

Health and Safety Department
Faculty of Engineering

المراجع

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التنزيلات

منشور

2003-06-01

كيفية الاقتباس

NAIT-SAID, R., BOUHOUFANI, T., & SAL, R. (2003). AGGREGATION IN FUZZY FAULT TREE QUANTIFICATION: COMPARISON OF MEANS AND EXPERTONS TECHNIQUES. مجلة علوم و تكنولوجيا أ، علوم دقيقة, (19), 57–64. استرجع في من https://revue.umc.edu.dz/a/article/view/1833

إصدار

القسم

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