Abstract

Markov model of multi-component machining system comprising two unreliable heterogeneous servers and mixed type of standby support has been studied. The repair job of broken down machines is done on the basis of bi-level threshold policy for the activation of the servers. The server returns back to render repair job when the pre-specified workload of failed machines is build up. The first (second) repairman turns on only when the work load of N1 (N2) failed machines is accumulated in the system. The both servers may go for vacation in case when all the machines are in good condition and there are no pending repair jobs for the repairmen. Runge–Kutta method is implemented to solve the set of governing equations used to formulate the Markov model. Various system metrics including the mean queue length, machine availability, throughput, etc., are derived to determine the performance of the machining system. To provide the computational tractability of the present investigation, a numerical illustration is provided. A cost function is also constructed to determine the optimal repair rate of the server by minimizing the expected cost incurred on the system. The hybrid soft computing method is considered to develop the adaptive neuro-fuzzy inference system (ANFIS). The validation of the numerical results obtained by Runge–Kutta approach is also facilitated by computational results generated by ANFIS.

Highlights

  • In this industrial age, the machining system becomes the great boon for the human beings

  • Bhargava and Jain (2014) explored the utilization of the hybrid adaptive neuro-fuzzy inference system (ANFIS) technique to provide the comparative study of queueing and reliability results obtained by matrix geometric method (MGM) of a Markov queueing model having an unreliable server operating under vacation policy

  • We study the transient analysis of machine repair problem having mixed warm standby support and two heterogeneous unreliable servers

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Summary

Introduction

The machining system becomes the great boon for the human beings. Keywords Threshold policy Á Vacation Á Machine repair Á Cost optimization Á Runge–Kutta method Á ANFIS

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