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Model order reduction assisted by deep neural networks (ROM-net)

Thomas Daniel, Fabien Casenave, Nissrine Akkari, David Ryckelynck

2020Advanced Modeling and Simulation in Engineering Sciences86 citationsDOIOpen Access PDF

Abstract

Abstract In this paper, we propose a general framework for projection-based model order reduction assisted by deep neural networks. The proposed methodology, called ROM-net , consists in using deep learning techniques to adapt the reduced-order model to a stochastic input tensor whose nonparametrized variabilities strongly influence the quantities of interest for a given physics problem. In particular, we introduce the concept of dictionary-based ROM-nets , where deep neural networks recommend a suitable local reduced-order model from a dictionary. The dictionary of local reduced-order models is constructed from a clustering of simplified simulations enabling the identification of the subspaces in which the solutions evolve for different input tensors. The training examples are represented by points on a Grassmann manifold, on which distances are computed for clustering. This methodology is applied to an anisothermal elastoplastic problem in structural mechanics, where the damage field depends on a random temperature field. When using deep neural networks, the selection of the best reduced-order model for a given thermal loading is 60 times faster than when following the clustering procedure used in the training phase.

Topics & Concepts

Artificial neural networkComputer scienceCluster analysisReduction (mathematics)Tensor (intrinsic definition)Artificial intelligenceField (mathematics)Linear subspaceDeep learningModel order reductionNet (polyhedron)Projection (relational algebra)Dimensionality reductionAlgorithmDimensional reductionMathematicsGeometryMathematical physicsPure mathematicsModel Reduction and Neural NetworksProbabilistic and Robust Engineering DesignStructural Health Monitoring Techniques