2020
DOI: 10.3390/electronics9111945
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Evolutionary Machine Learning for Optimal Polar-Space Fuzzy Control of Cyber-Physical Mecanum Vehicles

Abstract: This paper contributes to the development of evolutionary machine learning (EML) for optimal polar-space fuzzy control of cyber-physical Mecanum vehicles using the flower pollination algorithm (FPA). The metaheuristic FPA is utilized to design optimal fuzzy systems, called FPA-fuzzy. In this hybrid computation, both the fuzzy structure and the number of IF–THEN rules are optimized through the FPA evolutionary process. This approach overcomes the drawback of the structure tuning problem in conventional fuzzy sy… Show more

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Cited by 2 publications
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“…On the other hand, neural and fuzzy logic system (FLS) -based control approaches have been extensively applied for uncertain applications [14][15][16]. For instance, in [17] an FLS with optimal secondary fuzzy sets is developed for the frequency control of uncertain microgrids.…”
Section: Introduction 1literature Reviewmentioning
confidence: 99%
“…On the other hand, neural and fuzzy logic system (FLS) -based control approaches have been extensively applied for uncertain applications [14][15][16]. For instance, in [17] an FLS with optimal secondary fuzzy sets is developed for the frequency control of uncertain microgrids.…”
Section: Introduction 1literature Reviewmentioning
confidence: 99%