Fuzzy Random Variable LR

Author

20.1001.1.27174409.1398.2.1.5.3/DOR

Abstract

After A Critical Review Of The Fuzzy Random Variables That Have Been Proposed So Far, This Paper Introduces A New Type Of This Concept Called "Linear Fragmented Random Variable" Based On A Finite Number Of Random Slices. When The Number Of These Random Slices Is Infinite, The Linear Fragmented Random Variable Is Called Another Type Of Fuzzy Random Variable, Which We Call The Fuzzy Random Variable LR. Therefore, Based On This Limit State, At The End Of This Article, A More Accurate And At The Same Time Simpler Definition For The Fuzzy Random Variable Is Provided. Also, Several Numerical Examples For Better Transfer Of Concepts And Definitions Based On Simulation Are Presented.

Keywords


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