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Thermal Degradation Kinetics Epoxy (DGEBA) and Epoxy Reinforcement by Toner Carbon Nano Powder Composites

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Figure

Table (3) Peak temperature vs. amount of residual for EP
Fig (2) TGA curves at different % TCNP for EP/TCNP composite at β=5Co/min
Fig (3) TG and DTG curve of pure EP at β=5 Co/min
Fig (6) shows Coast-Redfern plot for different percentages of TCNP at constant heating rate 5 K/min again the data fits linearly, the kinetics parameter are extracted from Fig (6) are shown in Table (6) shows the activation energy increased as comparing with pure EP this indicates that TCNP increases thermal stability but at the same time fostering the reaction to produce the layer of char eventually protect EP from fire or heat, therefore the stability increases (17)
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