Dimension Reduction and Measure Transformation in Stochastic Multiphysics Modeling
نویسندگان
چکیده
In numerous critical areas from across science and engineering, models and simulations share a common base of mathematical formulations and algorithms that are multi-physics, multi-scale and/or multi-domain in nature. The crucial demand for predictive computational results in these areas motivates the development of uncertainty quantification approaches for coupled models that feature multiple physics, scales and/or domains.
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