Litcius/Paper detail

Learning-Informed Parameter Identification in Nonlinear Time-Dependent PDEs

Christian Aarset, Martin Höller, Tram Thi Ngoc Nguyen

2023Applied Mathematics & Optimization14 citationsDOIOpen Access PDF

Abstract

Abstract We introduce and analyze a method of learning-informed parameter identification for partial differential equations (PDEs) in an all-at-once framework. The underlying PDE model is formulated in a rather general setting with three unknowns: physical parameter, state and nonlinearity. Inspired by advances in machine learning, we approximate the nonlinearity via a neural network, whose parameters are learned from measurement data. The latter is assumed to be given as noisy observations of the unknown state, and both the state and the physical parameters are identified simultaneously with the parameters of the neural network. Moreover, diverging from the classical approach, the proposed all-at-once setting avoids constructing the parameter-to-state map by explicitly handling the state as additional variable. The practical feasibility of the proposed method is confirmed with experiments using two different algorithmic settings: A function-space algorithm based on analytic adjoints as well as a purely discretized setting using standard machine learning algorithms.

Topics & Concepts

Nonlinear systemDiscretizationArtificial neural networkMathematicsIdentification (biology)Partial differential equationState (computer science)State variableState spaceFunction (biology)Parameter identification problemMathematical optimizationApplied mathematicsComputer scienceArtificial intelligenceAlgorithmModel parameterMathematical analysisQuantum mechanicsBotanyStatisticsEvolutionary biologyPhysicsBiologyThermodynamicsModel Reduction and Neural NetworksProbabilistic and Robust Engineering DesignControl Systems and Identification
Learning-Informed Parameter Identification in Nonlinear Time-Dependent PDEs | Litcius