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Modeling and Processing Measurement Uncertainty Within the Theory of Evidence: Mathematics of Random–Fuzzy Variables

机译:证据理论内的建模和处理测量不确定度:随机-模糊变量的数学

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Random-fuzzy variables (RFVs) are mathematical variables defined within the theory of evidence. Their importance in measurement activities is due to the fact that they can be employed for the representation of measurement results, together with the associated uncertainty, whether its nature is random effects, systematic effects, or unknown effects. Of course, their importance and usability also depend on the fact that they can be employed for processing measurement results. This paper proposes suitable mathematics and related calculus for processing RFVs, which consider the different nature and the different behavior of the uncertainty effects. The proposed approach yields to process measurement algorithms directly in terms of RFVs so that the final measurement result (and all associated available information) is provided as an RFV
机译:随机模糊变量(RFV)是在证据理论中定义的数学变量。它们在测量活动中的重要性是由于可以将它们用于表示测量结果以及相关的不确定性,无论其性质是随机效应,系统效应还是未知效应。当然,它们的重要性和可用性还取决于可以将它们用于处理测量结果的事实。本文提出了适合处理RFV的数学和相关演算,其中考虑了不确定性影响的不同性质和不同行为。所提出的方法直接根据RFV来处理测量算法,因此最终测量结果(以及所有相关的可用信息)将作为RFV提供

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