Lycidae

Multi tool use
Lycidae
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Metriorrhynchus rhipidius
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Taxinomia
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Regnum:
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Animalia
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Phylum:
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Arthropoda
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Classis:
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Insecta
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Ordo:
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Coleoptera
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Subordo:
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Polyphaga
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Infraordo:
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Elateriformia
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Superfamilia:
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Elateroidea
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Familia:
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Lycidae Laporte, 1836
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Genera
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- Caenia
- Calochromus
- Calopteron
- Dictyopterus
- Duliticola
- Eropterus
- Leptoceletes
- Lycus
- Metriorrhynchus
- Plateros
Sulabanus[1]
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Coniunctio duorum
Metriorrhynchi rhipidii
Lycidae (Anglice net-winged beetles) sunt familia coleopterorum, usitate inter flores et caules observatae. Adulti nonnullarum specierum sunt nectarivorae, sed aliis sunt vitae brevissimae, cum eae minime vescuntur.
Corpora sunt elongata. Caput est triangulare, et antennae sunt longae, crassae, serratae. Plurimae colore sunt testaceae. Praedatoribus sunt venenosae.[2]
Larvae sub cortice vel in detritu foliorum habitant.
Notae |
↑ Milan Dvorak et Ladislav Bocak (2007), "Sulabanus gen. nov., a new genus of Lycidae (Coleoptera) from Sulawesi," Zootaxa 1611:1-24.
↑ J. F. Lawrence, A. M. Hastings, M. J. Dallwitz, T. A. Paine, et E. J. Zurcher (2000 porro), "Elateriformia (Coleoptera): descriptions, illustrations, identification, and information retrieval for families and subfamilies." Textus 9 Octobris 2005.
Nexus externi |
Calopteron discrepans, banded net-winged beetle, apud situm entomology.ifas.ufl.edu (Featured Creatures)
De familia apud situm web.archive.org
Photogrammata apud flickr.com

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Vicimedia Communia plura habent quae ad Lycidas spectant.
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Vide Lycidas apud Vicispecies.
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Haec stipula ad Coleoptera spectat. Amplifica, si potes!
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