Data-Driven Multiscale Science for Tread Compounding

Tire Science and Technology(2023)

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摘要
Tread compounding has always been faced with the simultaneous optimization of multiple performance properties, most of which have tradeoffs between the properties. The search for overcoming these conflicting tradeoffs have led many companies in the tire industry to discover and develop material physics-based platforms. This report describes some of our efforts to quantify compound structures and properties at multiple scales, and their subsequent application in compound design. Integration of experiment and simulation has been found to be critical to highlighting the levers in data-driven multiscale compound tread design.
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关键词
rubber compounds, material modeling, material design, viscoelasticity, structure-property relationships, filler morphology, far-field rubber, filler-rubber interphase, scanning electron microscopy, structure correlation functions, finite element analysis, representative volume elements, statistical volume elements, dynamic moduli, materials informatics
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