Matches in SemOpenAlex for { <https://semopenalex.org/work/W3095103917> ?p ?o ?g. }
Showing items 1 to 85 of
85
with 100 items per page.
- W3095103917 endingPage "67" @default.
- W3095103917 startingPage "61" @default.
- W3095103917 abstract "Biologicalisation calls for the integration of biological knowledge in manufacturing. Although biologists have been cataloguing biological knowledge for centuries, for the non-biologist finding this inspiration as input for bio-inspired design is a major challenge. In this paper, three different methods are used to find bio-inspiration for a case study on the clamping interface of a flexible mobile machining unit: the AskNature database, a natural language processing (NLP) approach, drawing on a large corpus of biological publications, and an informal consultation of an expert biologist as could be organised by a design office. The comparison of the retrieved principles with AskNature as a baseline indicates that the NLP approach allows retrieving publications about relevant biological strategies with a good recall performance, without involving an expert. However, extracting the working principles from the biological articles retrieved with the NLP approach is found to be error-prone and time consuming." @default.
- W3095103917 created "2020-11-09" @default.
- W3095103917 creator A5014546477 @default.
- W3095103917 creator A5017452679 @default.
- W3095103917 creator A5084849308 @default.
- W3095103917 date "2020-11-01" @default.
- W3095103917 modified "2023-09-26" @default.
- W3095103917 title "Where and how to find bio-inspiration?" @default.
- W3095103917 cites W1981747817 @default.
- W3095103917 cites W1989455285 @default.
- W3095103917 cites W1991736462 @default.
- W3095103917 cites W2038584831 @default.
- W3095103917 cites W2062627864 @default.
- W3095103917 cites W2095725814 @default.
- W3095103917 cites W2101155409 @default.
- W3095103917 cites W2141126632 @default.
- W3095103917 cites W2144487372 @default.
- W3095103917 cites W2144672110 @default.
- W3095103917 cites W2149530022 @default.
- W3095103917 cites W2157901441 @default.
- W3095103917 cites W2161237822 @default.
- W3095103917 cites W2163974073 @default.
- W3095103917 cites W2168064105 @default.
- W3095103917 cites W2177646235 @default.
- W3095103917 cites W2473833562 @default.
- W3095103917 cites W2571014468 @default.
- W3095103917 cites W2581074659 @default.
- W3095103917 cites W2765309354 @default.
- W3095103917 cites W2791151739 @default.
- W3095103917 cites W2796481342 @default.
- W3095103917 cites W2809524358 @default.
- W3095103917 cites W2888061392 @default.
- W3095103917 cites W2900714144 @default.
- W3095103917 cites W3112590129 @default.
- W3095103917 doi "https://doi.org/10.1016/j.cirpj.2020.09.013" @default.
- W3095103917 hasPublicationYear "2020" @default.
- W3095103917 type Work @default.
- W3095103917 sameAs 3095103917 @default.
- W3095103917 citedByCount "14" @default.
- W3095103917 countsByYear W30951039172021 @default.
- W3095103917 countsByYear W30951039172022 @default.
- W3095103917 countsByYear W30951039172023 @default.
- W3095103917 crossrefType "journal-article" @default.
- W3095103917 hasAuthorship W3095103917A5014546477 @default.
- W3095103917 hasAuthorship W3095103917A5017452679 @default.
- W3095103917 hasAuthorship W3095103917A5084849308 @default.
- W3095103917 hasBestOaLocation W30951039172 @default.
- W3095103917 hasConcept C113843644 @default.
- W3095103917 hasConcept C129307140 @default.
- W3095103917 hasConcept C154945302 @default.
- W3095103917 hasConcept C157915830 @default.
- W3095103917 hasConcept C173608175 @default.
- W3095103917 hasConcept C2522767166 @default.
- W3095103917 hasConcept C41008148 @default.
- W3095103917 hasConceptScore W3095103917C113843644 @default.
- W3095103917 hasConceptScore W3095103917C129307140 @default.
- W3095103917 hasConceptScore W3095103917C154945302 @default.
- W3095103917 hasConceptScore W3095103917C157915830 @default.
- W3095103917 hasConceptScore W3095103917C173608175 @default.
- W3095103917 hasConceptScore W3095103917C2522767166 @default.
- W3095103917 hasConceptScore W3095103917C41008148 @default.
- W3095103917 hasFunder F4320321773 @default.
- W3095103917 hasFunder F4320322252 @default.
- W3095103917 hasFunder F4320322681 @default.
- W3095103917 hasLocation W30951039171 @default.
- W3095103917 hasLocation W30951039172 @default.
- W3095103917 hasOpenAccess W3095103917 @default.
- W3095103917 hasPrimaryLocation W30951039171 @default.
- W3095103917 hasRelatedWork W1992987618 @default.
- W3095103917 hasRelatedWork W2015716388 @default.
- W3095103917 hasRelatedWork W2348049494 @default.
- W3095103917 hasRelatedWork W2357906747 @default.
- W3095103917 hasRelatedWork W2366230866 @default.
- W3095103917 hasRelatedWork W2372895414 @default.
- W3095103917 hasRelatedWork W2375130241 @default.
- W3095103917 hasRelatedWork W2383005052 @default.
- W3095103917 hasRelatedWork W2389372035 @default.
- W3095103917 hasRelatedWork W2390158879 @default.
- W3095103917 hasVolume "31" @default.
- W3095103917 isParatext "false" @default.
- W3095103917 isRetracted "false" @default.
- W3095103917 magId "3095103917" @default.
- W3095103917 workType "article" @default.