System Engineering and Productivity

System Engineering and Productivity

Solving the Reliability-Surplus Allocation Problem Using a Hybrid Colonial Competitive and Genetic Algorithm

Document Type : Research Paper

Authors
1 M.Sc., Department of Industrial Engineering, Faculty of Industrial Engineering, University of Eyvanekey, Eyvanekey, Iran
2 Corresponding author: Assistant Professor, Department of Industrial Engineering, Faculty of Industrial Engineering, University of Eyvanekey, Eyvanekey, Iran
Abstract
Reliability is an important characteristic in electrical and mechanical systems. Finding the optimal level of reliability based on the constraints in the system is called the reliability optimization problem. One of the methods to improve the reliability of the system is to use redundant components in the system. Assigning appropriate reliability to each component and using redundant components in parallel with the main components of the system is known as reliability-redundancy allocation. It has been proven that the redundancy allocation problem is a non-deterministic polynomial optimization problem and the computations increase exponentially with increasing problem size and constraints. Therefore, finding a suitable solution to this class of problems is important. In this research, the redundancy-redundancy allocation problem was investigated in improving the reliability of series, series-parallel and bridge systems, and a combination of colonialist and genetic algorithms was used to solve the problems. The proposed algorithm has shown better performance compared to previous approaches. In fact, the present study has presented an appropriate algorithm and solution method for solving the reliability optimization problem.
Keywords

Copyright ©, Azadeh Andarkhor, Hossein Eghbali

 

License

This article is released under the Creative Commons Attribution (CC BY 4.0) license. Anyone is free to copy, share, translate, and adapt this article for any purpose, whether commercial or non-commercial, as long as proper citation is given to the authors and original publication.

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Volume 2, Issue 3 - Serial Number 4
Serial No. 4, Autumn Quarterly
Autumn 2022
Pages 27-47

  • Receive Date 26 September 2022
  • Revise Date 11 October 2022
  • Accept Date 14 October 2022
  • First Publish Date 14 October 2022
  • Publish Date 22 November 2022