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Additive and Advanced Manufacturing, Inverse Problem Methodologies and Machine Learning and Data Science, Volume 4: Proceedings of the 2023 Annual Conference & Exposition on Experimental and Applied Mechanics
Kategorie Beschreibung
036aXA-CH
037beng
087q978-3-031-50473-0
087q978-3-031-50475-4
087q978-3-031-50476-1
100bKramer, Sharlotte L.B. ¬[HerausgeberIn]¬
104bRetzlaff, Emily ¬[HerausgeberIn]¬
108bThakre, Piyush ¬[HerausgeberIn]¬
112bHoefnagels, Johan ¬[HerausgeberIn]¬
116bRossi, Marco ¬[HerausgeberIn]¬
120bLattanzi, Attilio ¬[HerausgeberIn]¬
124bHemez, François ¬[HerausgeberIn]¬
128bMirshekari, Mostafa ¬[HerausgeberIn]¬
132bDowney, Austin ¬[HerausgeberIn]¬
331 Additive and Advanced Manufacturing, Inverse Problem Methodologies and Machine Learning and Data Science, Volume 4
335 Proceedings of the 2023 Annual Conference & Exposition on Experimental and Applied Mechanics
403 1st ed. 2024.
410 Cham
410 Cham
412 Springer Nature Switzerland
412 Imprint: Springer
425 2024
425 2024
425a2024
433 1 Online-Ressource(VII, 102 p. 86 illus., 73 illus. in color.)
451bConference Proceedings of the Society for Experimental Mechanics Series
527 Erscheint auch als (Druck-Ausgabe)ISBN: 978-3-031-50473-0
527 Erscheint auch als (Druck-Ausgabe)ISBN: 978-3-031-50475-4
527 Erscheint auch als (Druck-Ausgabe)ISBN: 978-3-031-50476-1
540aISBN 978-3-031-50474-7
700 |TGP
700 |TEC009060
700b|670
750 Chapter 1. Quantifying residual stresses generated by laser powder bed fusion of metallic samples -- Chapter 2. Loading-Unloading Compressive Response and Energy Dissipation of Liquid Crystal Elastomers and Their 3D Printed Lattice Structures at Low and Intermediate Strain Rates -- Chapter 3. Residual Stress Induced in Thin Plates During Additive Manufacturing -- Chapter 4. Investigating the Effects of Acetone Vapor Treatment and Post Drying Conditions on Tensile and Fatigue behavior of 3D Printed ABS Components -- Chapter 5. Mechanics of Novel Double-Rounded-V Hierarchical Auxetic Structure - Finite Element Analysis and Experiments Using Three-dimensional Digital Image Correlation -- Chapter 6. Repeatability of Residual Stress in Replicate Additively Manufactured 316L Stainless Steel Samples -- Chapter 7. Acoustic nondestructive characterization of metal pantographs for material and defect identification -- Chapter 8. Rapid prototyping of a micro-scale spectroscopic system by two-photon direct laser writing -- Chapter 9. Bioinspired Interfaces for Improved Interlaminar Shear Strength in 3D Printed Multi-Material Polymer Composites -- Chapter 10. Thermo-mechanical Characterization of High-strength Steel through Inverse Methods -- Chapter 11. A multi-testing approach for the full calibration of 3D anisotropic plasticity models via inverse methods -- Chapter 12. Finite Element Based Material Property Identification Utilizing Full-Field Deformation Measurements -- Chapter 13. Data-driven material models for engineering materials subjected to arbitrary loading paths: influence of the dimension of the dataset -- Chapter 14. Data-driven methodology to extract stress fields in materials subjected to dynamic loading.
753 Additive and Advanced Manufacturing, Inverse Problem Methodologies and Machine Learning and Data Science, Volume 4 of the Proceedings of the 2023 SEM Annual Conference & Exposition on Experimental and Applied Mechanics, the fourth volume of five from the Conference, brings together contributions to this important area of research and engineering. The collection presents early findings and case studies on a wide range of topics and includes papers in the following general technical research areas: AM Composites and Polymers Dynamic Behavior of Additively Manufactured Materials and Structures Joint Residual Stress and Additive Manufacturing ML for Material Model Identification Novel AM Structures Novel Processing and Testing of Additively Manufactured Materials Plasticity and Complex Material Behavior Virtual Fields Method.
012 1881680592
081 Additive and Advanced Manufacturing, Inverse Problem Methodologies and Machine Learning and Data Science, Volume 4
100 Springer E-Book
125aElektronischer Volltext - Campuslizenz
655e$uhttps://doi.org/10.1007/978-3-031-50474-7
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