2023
DOI: 10.1111/exsy.13432
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An optimized extreme learning machine‐based novel model for bearing fault classification

Sandeep S. Udmale,
Aneesh G. Nath,
Durgesh Singh
et al.

Abstract: This work addresses the rolling element bearing (REB) fault classification problem by tackling the issue of identifying the appropriate parameters for the extreme learning machine (ELM) and enhancing its effectiveness. This study introduces a memetic algorithm (MA) to identify the optimal ELM parameter set for compact ELM architecture alongside better ELM performance. The goal of using MA is to investigate the promising solution space and systematically exploit the facts in the viable solution space. In the pr… Show more

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Cited by 4 publications
(1 citation statement)
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“…By leveraging local information and heuristic strategies to guide the search direction, these methods can achieve superior diagnostic performance with reduced computational resources. For instance, Udmale et al [83] utilized a combination of genetic algorithm and local search algorithm to achieve the…”
Section: Single Solution-based Heuristicsmentioning
confidence: 99%
“…By leveraging local information and heuristic strategies to guide the search direction, these methods can achieve superior diagnostic performance with reduced computational resources. For instance, Udmale et al [83] utilized a combination of genetic algorithm and local search algorithm to achieve the…”
Section: Single Solution-based Heuristicsmentioning
confidence: 99%