Affiliation:
1. Department of Mechanical Engineering, Kitami Institute of Technology, Japan
2. Department of Industrial Engineering and Management, College of Engineering, University of Sharjah, UAE
Abstract
Fuzzy Monte Carlo Simulation (FMCS) uses both the probability density function ( pdf) and possibility distributions (e.g., fuzzy numbers) to model the uncertainty/imprecision associated with the input parameters and, then, to simulate the uncertainty/imprecision associated with the output parameters. A probability–possibility transformation is needed to transfer the information of a fuzzy number into its equivalent pdf, while performing the simulation. This study deals with an approach of FMCS that uses a point-cloud-based probability–possibility transformation. Let x( t), t = 0,1,…, n, be a set of points that represents some random states of an uncertain/imprecise quantity. The collection of points ( x( t), x( t+ i)), t = 0,…, n– i, i∈ {1,2,…} is called point-cloud, providing a visual/computational representation of variability, modality, and ranges associated with the quantity. This study identifies the pdf and possibility distribution (fuzzy number) underlying a given point-cloud. Using these distributions, the relationships between the triangular fuzzy number and unimodal pdf (normal/uniform distributions) are identified. Two numerical examples are described elucidating the effectiveness of the proposed transformation. The first example deals with the issue of monitoring a FMCS process. The other example deals with the issue of making a decision by using FMCS.
Subject
Computer Graphics and Computer-Aided Design,Modelling and Simulation,Software
Cited by
30 articles.
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