TY - JOUR
T1 - Design and Fabrication of Nano-Particles with Customized Properties using Self-Assembly of Block-Copolymers
AU - Huang, Changhang
AU - Bai, Kechun
AU - Zhu, Yanyan
AU - Andelman, David
AU - Man, Xingkun
N1 - Publisher Copyright:
© 2024 Wiley-VCH GmbH.
PY - 2024/11/26
Y1 - 2024/11/26
N2 - Functional nanoparticles (NPs) have gained significant attention as promising applications in various fields, including sensor, smart coating, drug delivery, and more. Here, a novel mechanism assisted by machine-learning workflow is proposed to accurately predict phase diagram of NPs, which elegantly achieves tunability of shapes and internal structures of NPs using self-assembly of block-copolymers (BCP). Unlike most of previous studies, onion-like and mesoporous NPs in neutral environment and hamburger-like NPs in selective environment are obtained. Such novel phenomena are obtained only by tailoring the topology of a miktoarm star BCP chain architecture without the need for any further treatment. Moreover, it is demonstrated that the BCP chain architecture can be used as a new strategy for tuning the lamellar asymmetry of NPs. It is shown that the asymmetry between A and B lamellae in striped ellipsoidal and onion-like particles increases as the volume fraction of the A-block increases, beyond the level reached by linear BCPs. In addition, an extended region of onion-like structure is found in the phase diagram of A-selective environment, as well as the emergence of an inverse onion-like structure in the B-selective one. The findings provide a valuable insight into the design and fabrication of nanoscale materials with customized properties, opening up new possibilities for advanced applications in sensing, materials science, and beyond.
AB - Functional nanoparticles (NPs) have gained significant attention as promising applications in various fields, including sensor, smart coating, drug delivery, and more. Here, a novel mechanism assisted by machine-learning workflow is proposed to accurately predict phase diagram of NPs, which elegantly achieves tunability of shapes and internal structures of NPs using self-assembly of block-copolymers (BCP). Unlike most of previous studies, onion-like and mesoporous NPs in neutral environment and hamburger-like NPs in selective environment are obtained. Such novel phenomena are obtained only by tailoring the topology of a miktoarm star BCP chain architecture without the need for any further treatment. Moreover, it is demonstrated that the BCP chain architecture can be used as a new strategy for tuning the lamellar asymmetry of NPs. It is shown that the asymmetry between A and B lamellae in striped ellipsoidal and onion-like particles increases as the volume fraction of the A-block increases, beyond the level reached by linear BCPs. In addition, an extended region of onion-like structure is found in the phase diagram of A-selective environment, as well as the emergence of an inverse onion-like structure in the B-selective one. The findings provide a valuable insight into the design and fabrication of nanoscale materials with customized properties, opening up new possibilities for advanced applications in sensing, materials science, and beyond.
KW - block copolymer
KW - chain architecture
KW - machine learning
KW - nanoparticle
KW - self-consistent field theory
UR - http://www.scopus.com/inward/record.url?scp=85198560412&partnerID=8YFLogxK
U2 - 10.1002/adfm.202408311
DO - 10.1002/adfm.202408311
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AN - SCOPUS:85198560412
SN - 1616-301X
VL - 34
JO - Advanced Functional Materials
JF - Advanced Functional Materials
IS - 48
M1 - 2408311
ER -