Abstract
We propel photopolymerizable liquid crystalline (LC) shape memory materials from solely elastomeric performance to the thermomechanical performance of tough, yielding thermosets. LC elastomers are at the forefront of smart, stimuli-responsive materials development. To apply their properties to mechanically superior thermosets, we demonstrate main-chain incorporation of high quantities of preordered LC motifs into a densely crosslinked network via thiol-ene photopolymerization to achieve a new material class hybridizing the advantages of LC elastomers and liquid crystalline networks. A terminal alkene mesogen with a robust LC phase is combined with multiple trithiol comonomers and selected based on resulting polymer crystallinities (13-37%). The bulk materials exhibit high strength, stiffness and pronounced yielding under stress with elongations around 200%. Their excellent thermomechanical properties were explained by phase separation observed in atomic force microscopy. Furthermore, we demonstrate shape memory of these materials with fast, near-perfect shape imprinting (99%) and recovery (97%) over at least 20 cycles, and their light-based 3D printing at high temperature.
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Supplementary Information
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The Supplementary Information contains additional text, Figures, Schemes, Equations and Tables directly relevant to and referenced in the main manuscript.
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Supplementary Video 1
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Video demonstrating curing of a drop of liquid resin in the vat of a heated stereolithographic printer, resulting in an opaque solid indicating crystallinity in the cured state.
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Supplementary Video 2
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Real-time footage of a shape-memory experiment of a 3D printed spiral.
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Raw data
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The data supporting this article have been included as part of the manuscript and Supplementary Information. Data for this article beyond the scope of these documents, including raw data of all presented graphs, are available at TU Wien Research Data at https://doi.org/10.48436/9d7a0-wqh32.
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