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Dynamic Analysis of Numerical Mesoscale Models of Composite Materials

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Academic year: 2019

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Figure 1.1- Experimental results of a test specimen constituted by 26 plies with four different orientations  and an organizational chart describing the work developed
Figure 2.1-Different types of reinforcements [7]
Figure 2.4 - Comparison between a conventional woven fabric and a spread-tow fabric [12]
Figure 2.5- Typical behavior shown by isotropic, anisotropic and orthotropic material subjected to axial  tension [6]
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