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Using particle-based simplified swarm optimization to solve the cold-standby reliability of the gas turbine industry

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Abstract

Simplified swarm optimization (SSO) and particle swarm optimization (PSO) are two types of modern swarm intelligence techniques that are often used for optimization. In order to identify the most effective system RRAP with a cold-standby strategic plan while aiming to exploit the reliability of the organization, the article discusses a PSSO procedure that combines UM of PSO and Simplified swarm optimization, PSSO is especially impressive in comparison with other recently incorporated algorithms into four popular applications, namely a sequences scheme, a complex organization, a series–parallel system, and an airspeed indicator defense system for a turbine, with extensive experiments conducted on the pretty standard and well-known four benchmarks of reliability-redundancy allocation problems. Finally, the experiment findings show that the particle-based simplified swarm optimization can successfully solution to address the reliability-redundancy allocation (RRAP) issues using the cold-standby method and performs well in terms of organization reliability, even though the best platform consistency is not attained in all four benchmarks and experiment is done using python and Google colab.

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Correspondence to Komalpreet Kaur.

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Singla, S., Kaur, K. Using particle-based simplified swarm optimization to solve the cold-standby reliability of the gas turbine industry. Int J Syst Assur Eng Manag 15, 4456–4465 (2024). https://doi.org/10.1007/s13198-024-02457-x

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