A Framework for Data-Driven Computational Mechanics Based on Nonlinear Optimization
Cristian Guillermo Gebhardt, Dominik Schillinger, Marc Christian, Steinbach, and Raimund Rolfes

TL;DR
This paper introduces a new data-driven computational mechanics framework that combines optimization and manifold learning to improve robustness, efficiency, and flexibility in modeling material behavior from data.
Contribution
It proposes a novel nonlinear optimization-based approach that integrates strengths of existing methods, allowing for robust, efficient, and structure-agnostic data-driven modeling.
Findings
Effective for data-driven truss and beam elements.
Robust and computationally efficient optimization formulation.
Handles implicit stress-strain relations and kinematic constraints.
Abstract
Data-Driven Computational Mechanics is a novel computing paradigm that enables the transition from standard data-starved approaches to modern data-rich approaches. At this early stage of development, one can distinguish two mainstream directions. The first one relies on a discrete-continuous optimization problem and seeks to assign to each material point a point in the phase space that satisfies compatibility and equilibrium, while being closest to the data set provided. The second one is a data driven inverse approach that seeks to reconstruct a constitutive manifold from data sets by manifold learning techniques, relying on a well-defined functional structure of the underlying constitutive law. In this work, we propose a third route that combines the strengths of the two existing directions and mitigates some of their weaknesses. This is achieved by the formulation of an approximate…
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Taxonomy
TopicsModel Reduction and Neural Networks · Hydraulic and Pneumatic Systems · Probabilistic and Robust Engineering Design
