Single Valued Neutrosophic M/M/C Queuing Model
Abstract
This paper shows the neutrosophic abstraction of M/M/c queuing model. The neutrosophic environment used here is to analyse uncertain cases in queuing systems. The arrival and service rate are assumed to be neutrosophic numbers. To provide supplementary possibility for real world problems, single valued neutrosophic set is applied. Here, we derive the system measures of performance of NM/NM/c queuing Model. Also, the model is provided with suitable examples and its corresponding graphs are depicted. While computing the numerical examples, some basic neutrosophic operators are utilized.
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