Matches in SemOpenAlex for { <https://semopenalex.org/work/W4386074817> ?p ?o ?g. }
- W4386074817 endingPage "117496" @default.
- W4386074817 startingPage "117496" @default.
- W4386074817 abstract "A novel spatial-temporal graph convolutional networks (STGCN) based method for the regression task of localizing acoustic emission (AE) sources in composite panels is proposed. This is the first time that graph convolutional networks are introduced into the AE source localization task. Data generated by AE sensor networks is represented by a graph structure, in which the temporal features extracted from AE waveforms using one-dimensional convolutional neural networks (1D-CNN) and the spatial information of sensors constitute the node features. An adaptive distance-based adjacency matrix calculation method according to the geographical locations of AE sensors is further developed to represent the connectivity of the graph. Finally, the proposed method is experimentally validated on a glass fiber-reinforced plastic (GFRP) panel, and 5-fold cross-validation was carried out to evaluate the performance of the method effectively. The results show that the proposed STGCN method has a high performance in damage source localization and it significantly outperforms other methods." @default.
- W4386074817 created "2023-08-23" @default.
- W4386074817 creator A5034367719 @default.
- W4386074817 creator A5048318821 @default.
- W4386074817 date "2023-11-01" @default.
- W4386074817 modified "2023-10-06" @default.
- W4386074817 title "Spatial-temporal graph convolutional networks (STGCN) based method for localizing acoustic emission sources in composite panels" @default.
- W4386074817 cites W1859979375 @default.
- W4386074817 cites W1982815888 @default.
- W4386074817 cites W2008056655 @default.
- W4386074817 cites W2008765457 @default.
- W4386074817 cites W2019699520 @default.
- W4386074817 cites W2062848325 @default.
- W4386074817 cites W2077751506 @default.
- W4386074817 cites W2080966898 @default.
- W4386074817 cites W2088252378 @default.
- W4386074817 cites W2106210113 @default.
- W4386074817 cites W2114030927 @default.
- W4386074817 cites W2116341502 @default.
- W4386074817 cites W2186669694 @default.
- W4386074817 cites W2232375136 @default.
- W4386074817 cites W2789384544 @default.
- W4386074817 cites W2791957585 @default.
- W4386074817 cites W2798149570 @default.
- W4386074817 cites W2802943870 @default.
- W4386074817 cites W2892666457 @default.
- W4386074817 cites W2915097576 @default.
- W4386074817 cites W2965177866 @default.
- W4386074817 cites W2988659191 @default.
- W4386074817 cites W3005486352 @default.
- W4386074817 cites W3006351417 @default.
- W4386074817 cites W3082436677 @default.
- W4386074817 cites W3087323963 @default.
- W4386074817 cites W3112270356 @default.
- W4386074817 cites W3112520736 @default.
- W4386074817 cites W3159895633 @default.
- W4386074817 cites W3163676459 @default.
- W4386074817 cites W3182088150 @default.
- W4386074817 cites W3195704491 @default.
- W4386074817 cites W3198543070 @default.
- W4386074817 cites W3208271024 @default.
- W4386074817 cites W3209124788 @default.
- W4386074817 cites W3217258565 @default.
- W4386074817 cites W4200237117 @default.
- W4386074817 cites W4200473862 @default.
- W4386074817 cites W4220760685 @default.
- W4386074817 cites W4280522159 @default.
- W4386074817 cites W4283751106 @default.
- W4386074817 cites W4283791799 @default.
- W4386074817 cites W4289515670 @default.
- W4386074817 cites W4292321560 @default.
- W4386074817 cites W4294295332 @default.
- W4386074817 cites W4296969888 @default.
- W4386074817 cites W4303453665 @default.
- W4386074817 cites W4312737473 @default.
- W4386074817 cites W4313592065 @default.
- W4386074817 cites W4318183047 @default.
- W4386074817 cites W4320006639 @default.
- W4386074817 cites W4322766726 @default.
- W4386074817 doi "https://doi.org/10.1016/j.compstruct.2023.117496" @default.
- W4386074817 hasPublicationYear "2023" @default.
- W4386074817 type Work @default.
- W4386074817 citedByCount "0" @default.
- W4386074817 crossrefType "journal-article" @default.
- W4386074817 hasAuthorship W4386074817A5034367719 @default.
- W4386074817 hasAuthorship W4386074817A5048318821 @default.
- W4386074817 hasConcept C110484373 @default.
- W4386074817 hasConcept C11413529 @default.
- W4386074817 hasConcept C121332964 @default.
- W4386074817 hasConcept C132525143 @default.
- W4386074817 hasConcept C153180895 @default.
- W4386074817 hasConcept C154945302 @default.
- W4386074817 hasConcept C174598085 @default.
- W4386074817 hasConcept C180356752 @default.
- W4386074817 hasConcept C24890656 @default.
- W4386074817 hasConcept C41008148 @default.
- W4386074817 hasConcept C80444323 @default.
- W4386074817 hasConcept C81363708 @default.
- W4386074817 hasConceptScore W4386074817C110484373 @default.
- W4386074817 hasConceptScore W4386074817C11413529 @default.
- W4386074817 hasConceptScore W4386074817C121332964 @default.
- W4386074817 hasConceptScore W4386074817C132525143 @default.
- W4386074817 hasConceptScore W4386074817C153180895 @default.
- W4386074817 hasConceptScore W4386074817C154945302 @default.
- W4386074817 hasConceptScore W4386074817C174598085 @default.
- W4386074817 hasConceptScore W4386074817C180356752 @default.
- W4386074817 hasConceptScore W4386074817C24890656 @default.
- W4386074817 hasConceptScore W4386074817C41008148 @default.
- W4386074817 hasConceptScore W4386074817C80444323 @default.
- W4386074817 hasConceptScore W4386074817C81363708 @default.
- W4386074817 hasFunder F4320321001 @default.
- W4386074817 hasLocation W43860748171 @default.
- W4386074817 hasOpenAccess W4386074817 @default.
- W4386074817 hasPrimaryLocation W43860748171 @default.
- W4386074817 hasRelatedWork W125803343 @default.
- W4386074817 hasRelatedWork W1991172810 @default.
- W4386074817 hasRelatedWork W2059018062 @default.
- W4386074817 hasRelatedWork W2153421018 @default.