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Ultrastrong Eutectogels Engineered Via Integrated Mechanical Training in Molecular and Structural Engineering

Chenggong Xu,Ao Xie, Haiyuan Hu, Zhengde Wang,Yange Feng,Daoai Wang,Weimin Liu

Nature communications(2025)

Chinese Academy of Sciences

Cited 0|Views7
Abstract
Ultrastrong gels possess generally ultrahigh modulus and strength yet exhibit limited stretchability owing to hardening and embrittlement accompanied by reinforcement. This dilemma is overcome here by using hyperhysteresis-mediated mechanical training that hyperhysteresis allows structural retardation to prevent the structural recovery of network after training, resulting in simply single pre-stretching training. This training strategy introduces deep eutectic solvent into polyvinyl alcohol hydrogels to achieve hyperhysteresis via hydrogen bonding nanocrystals on molecular engineering, performs single pre-stretching training to produce hierarchical nanofibrils on structural engineering, and fabricates chemically cross-linked second network to enable stretchability. The resultant eutectogels display exceptional mechanical performances with enormous fracture strength (85.2 MPa), Young's modulus (98 MPa) and work of rupture (130.6 MJ m-3), which compare favorably to those of previous gels. The presented strategy is generalizable to other solvents and polymer for engineering ultrastrong organogels, and further inspires advanced fabrication technologies for force-induced self-reinforcement materials.
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