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Adaptive Data-Driven Modeling of Complex Systems

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Monday, October 14, 2024
9:15 am - 10:15 am
Dr. Jose E. Andrade, Caltech, George W. Housner Professor of Civil and Mechanical Engineering
35th ANNUAL ROBERT J. MELOSH MEDAL COMPETITION FOR THE BEST STUDENT PAPER ON COMPUTATIONAL MECHANICS

In this talk, we present a multiscale adaptive data-driven framework to simulate the behavior of complex systems. Such complex systems typically display non-linear, non-local, micro-morphic features that have challenged continuum and discrete models for over a century. We use granular materials as canonical examples of complex systems to contextualize our proposed data-driven framework, highlighting its ability to bridge the continuum scale with experimental data or grain-scale physics-based simulations. In contrast to continuum phenomenological models and standard multiscale techniques, our approach is parameter-free, physics-based, and true to the entire data set. Additionally, we show that the adaptive nature of the data-driven approach gives rise to a new generation of models that admit goal-oriented data assimilation as a standard feature. This feature is not readily available in phenomenological models that rely on a posteriori metrics of error, resulting in increased complexity, obscurity, and inaccuracy. Conversely, the adaptive data-driven models can incorporate data seamlessly and thereby increase their accuracy to a priori user-specified levels. We argue that this approach to modeling is fundamentally different from current modeling philosophies.

Contact: Nicolle Hinz