Machine learning‐driven optimization and prediction of poly(lactic acid)/poly(butylene‐adipate‐co‐terephthalate)/clay blend nanocomposites in structure–property relationships: A combination of experimental and computational techniques
Mahsa Akbarzadeh,
Tayebeh Gorji,
Mohammad Iman Tayouri
et al.
Abstract:The melt‐mixing method in a twin screw extruder was utilized to develop blended nanocomposites of poly(lactic acid: PLA) and poly(butylene‐adipate‐co‐terephthalate: PBAT) with three combinations of weight percent 90/10, 70/30, and 50/50 (w/w) which contain 1, 3, and 5 phr of organic clays (Cloisite 30B). As a result, both x‐ray diffraction analysis and scanning electron microscopy revealed a consistent compatibilization effect of the nanoclays (NCs) within the PLA/PBAT matrix. The interfacial adhesion between … Show more
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