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Cassava Leaf Nanoparticles (CLNPs) as a Potential Additive to Anti-Corrosion Coatings for Oil and Gas Pipeline

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Academic year: 2020

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Figure

Fig. 1. Image of cassava leaves (a) soaked in water (b) sun dried (c) powder milled for 72 hours
Fig. 2. SEM of cassava leaf (a) un-milled (b) milled for 36 hours (c) milled for 48 hours (d) milled for 60 hours (e) milled for 72 hours (f) EDX of CL milled for 72 hours
Fig. 5. TEM image of CLNPs milled for 72 hours.
Fig. 8. GC-MS Result of CLNPs.

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