Stochastic modeling and optimization of turbogenerator performance using meta‐heuristic techniques

Author:

Sinwar Deepak1,Kumar Naveen2,Kumar Ashish2,Saini Monika2ORCID

Affiliation:

1. Department of IoT and Intelligent Systems Manipal University Jaipur Jaipur Rajasthan India

2. Department of Mathematics and Statistics Manipal University Jaipur Jaipur Rajasthan India

Abstract

AbstractThe objective of this paper is to identify the most sensitive component of a turbogenerator and optimize its availability. To achieve this, we begin by conducting an initial reliability, availability, maintainability, and dependability (RAMD) analysis on each component. Subsequently, a novel stochastic model is developed to analyze the steady‐state availability of the turbogenerator, employing a Markov birth‐death process. In this model, failure and repair rates are assumed to follow an exponential distribution and are statistically independent. To optimize the proposed stochastic model, we employ four population‐based meta‐heuristic approaches: the grey wolf optimization (GWO), the dragonfly algorithm (DA), the grasshopper optimization algorithm (GOA), and the whale optimization algorithm (WOA). These algorithms are utilized to find the optimal solution by iteratively improving the availability of the turbogenerator. The performance of each algorithm is evaluated in terms of system availability and execution time, allowing us to identify the most efficient algorithm for this task. Based on the numerical results, it is evident that the WOA outperforms the GWO, GOA, and DA in terms of both system availability and execution time.

Publisher

Wiley

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