2020
DOI: 10.1101/2020.08.11.246991
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Geographic potential of the world’s largest hornet,Vespa mandariniaSmith (Hymenoptera: Vespidae), worldwide and particularly in North America

Abstract: The Asian giant hornet (AGH, Vespa mandarinia) is the world’s largest hornet, occurring naturally in the Indomalayan region, where it is a voracious predator of pollinating insects including honey bees. In September 2019, a nest of Asian giant hornets was detected outside of Vancouver, British Columbia and in May 2020 an individual was detected nearby in Washington state, indicating that the AGH successfully overwintered in North America. Because hornets tend to spread rapidly and become pests, reliable estima… Show more

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Cited by 2 publications
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“…Studies often cover ecological aspects like taxonomy [15], morphology [17], and urbanization impacts [15]. The Asian giant hornet's global spread is increasingly studied using ecological niche modelling (ENM) for distribution prediction with environmental and human factors [2], climate change [18], and honey production and species diversity [19]. ENM, or species niche modelling [20], uses algorithms with climatic and environmental data [21] employing techniques like regression and machine learning (SVM, ANN).…”
Section: Literature Reviewmentioning
confidence: 99%
“…Studies often cover ecological aspects like taxonomy [15], morphology [17], and urbanization impacts [15]. The Asian giant hornet's global spread is increasingly studied using ecological niche modelling (ENM) for distribution prediction with environmental and human factors [2], climate change [18], and honey production and species diversity [19]. ENM, or species niche modelling [20], uses algorithms with climatic and environmental data [21] employing techniques like regression and machine learning (SVM, ANN).…”
Section: Literature Reviewmentioning
confidence: 99%