Matches in SemOpenAlex for { <https://semopenalex.org/work/W2626079542> ?p ?o ?g. }
- W2626079542 endingPage "264" @default.
- W2626079542 startingPage "235" @default.
- W2626079542 abstract "Grey Wolf Optimizer (GWO) is a new meta-heuristic search algorithm inspired by the social behavior of leadership and the hunting mechanism of grey wolves. GWO algorithm is prominent in terms of finding the optimal solution without getting trapped in premature convergence. In the original GWO, half of the iterations are dedicated to exploration and the other half are devoted to exploitation, overlooking the impact of right balance between these two to guarantee an accurate approximation of global optimum. To overcome this shortcoming, an Enhanced Grey Wolf Optimization (EGWO) algorithm with a better hunting mechanism is proposed, which focuses on proper balance between exploration and exploitation that leads to an optimal performance of the algorithm and hence promising candidate solutions are generated. To verify the performance of our proposed EGWO algorithm, it is benchmarked on twenty-five benchmark functions with diverse complexities. It is then employed on range based node localization problem in wireless sensor network to demonstrate its applicability. The simulation results indicate that the proposed algorithm is able to provide superior results in comparison with some well-known algorithms. The results of the node localization problem indicate the effectiveness of the proposed algorithm in solving real world problems with unknown search spaces." @default.
- W2626079542 created "2017-06-23" @default.
- W2626079542 creator A5041868654 @default.
- W2626079542 creator A5079361519 @default.
- W2626079542 date "2017-06-16" @default.
- W2626079542 modified "2023-10-16" @default.
- W2626079542 title "Enhanced Grey Wolf Optimization Algorithm for Global Optimization" @default.
- W2626079542 cites W1518918738 @default.
- W2626079542 cites W1527696706 @default.
- W2626079542 cites W1573676079 @default.
- W2626079542 cites W1601024910 @default.
- W2626079542 cites W1614314557 @default.
- W2626079542 cites W1672221038 @default.
- W2626079542 cites W1859314164 @default.
- W2626079542 cites W1969195722 @default.
- W2626079542 cites W1976744965 @default.
- W2626079542 cites W1978303631 @default.
- W2626079542 cites W1984762043 @default.
- W2626079542 cites W1997350909 @default.
- W2626079542 cites W2038523443 @default.
- W2626079542 cites W2052385998 @default.
- W2626079542 cites W2060040920 @default.
- W2626079542 cites W2061438946 @default.
- W2626079542 cites W2072955302 @default.
- W2626079542 cites W2074230221 @default.
- W2626079542 cites W2103434431 @default.
- W2626079542 cites W2117034207 @default.
- W2626079542 cites W2132643611 @default.
- W2626079542 cites W2138537392 @default.
- W2626079542 cites W2151634194 @default.
- W2626079542 cites W2151676833 @default.
- W2626079542 cites W2159537134 @default.
- W2626079542 cites W2163109311 @default.
- W2626079542 cites W2166563477 @default.
- W2626079542 cites W2169064301 @default.
- W2626079542 cites W2170239483 @default.
- W2626079542 cites W2177188361 @default.
- W2626079542 cites W2182977007 @default.
- W2626079542 cites W2196999120 @default.
- W2626079542 cites W2248269286 @default.
- W2626079542 cites W2324023456 @default.
- W2626079542 cites W2345827752 @default.
- W2626079542 cites W2431407304 @default.
- W2626079542 cites W2507770834 @default.
- W2626079542 cites W2510664958 @default.
- W2626079542 cites W2518915060 @default.
- W2626079542 cites W2520000989 @default.
- W2626079542 cites W2522511613 @default.
- W2626079542 cites W2546496111 @default.
- W2626079542 cites W2565888730 @default.
- W2626079542 cites W2593487812 @default.
- W2626079542 cites W2596355100 @default.
- W2626079542 cites W2604365107 @default.
- W2626079542 cites W3100933494 @default.
- W2626079542 cites W789266749 @default.
- W2626079542 cites W945669211 @default.
- W2626079542 doi "https://doi.org/10.3233/fi-2017-1539" @default.
- W2626079542 hasPublicationYear "2017" @default.
- W2626079542 type Work @default.
- W2626079542 sameAs 2626079542 @default.
- W2626079542 citedByCount "37" @default.
- W2626079542 countsByYear W26260795422018 @default.
- W2626079542 countsByYear W26260795422019 @default.
- W2626079542 countsByYear W26260795422020 @default.
- W2626079542 countsByYear W26260795422021 @default.
- W2626079542 countsByYear W26260795422022 @default.
- W2626079542 countsByYear W26260795422023 @default.
- W2626079542 crossrefType "journal-article" @default.
- W2626079542 hasAuthorship W2626079542A5041868654 @default.
- W2626079542 hasAuthorship W2626079542A5079361519 @default.
- W2626079542 hasConcept C11413529 @default.
- W2626079542 hasConcept C126255220 @default.
- W2626079542 hasConcept C127413603 @default.
- W2626079542 hasConcept C13280743 @default.
- W2626079542 hasConcept C137836250 @default.
- W2626079542 hasConcept C146978453 @default.
- W2626079542 hasConcept C162324750 @default.
- W2626079542 hasConcept C173801870 @default.
- W2626079542 hasConcept C185798385 @default.
- W2626079542 hasConcept C204323151 @default.
- W2626079542 hasConcept C205649164 @default.
- W2626079542 hasConcept C2777303404 @default.
- W2626079542 hasConcept C2987595161 @default.
- W2626079542 hasConcept C33923547 @default.
- W2626079542 hasConcept C41008148 @default.
- W2626079542 hasConcept C50522688 @default.
- W2626079542 hasConcept C62611344 @default.
- W2626079542 hasConcept C66938386 @default.
- W2626079542 hasConceptScore W2626079542C11413529 @default.
- W2626079542 hasConceptScore W2626079542C126255220 @default.
- W2626079542 hasConceptScore W2626079542C127413603 @default.
- W2626079542 hasConceptScore W2626079542C13280743 @default.
- W2626079542 hasConceptScore W2626079542C137836250 @default.
- W2626079542 hasConceptScore W2626079542C146978453 @default.
- W2626079542 hasConceptScore W2626079542C162324750 @default.
- W2626079542 hasConceptScore W2626079542C173801870 @default.
- W2626079542 hasConceptScore W2626079542C185798385 @default.
- W2626079542 hasConceptScore W2626079542C204323151 @default.