Publication | Open Access
Automating Embedded Analysis Capabilities and Managing Software Complexity in Multiphysics Simulation, Part II: Application to Partial Differential Equations
37
Citations
16
References
2012
Year
Numerical AnalysisEngineeringSoftware EngineeringSimulationEmbedded SystemsComputational MechanicsCo-simulationMesh OptimizationPde-constrained OptimizationNumerical SimulationSimulation FrameworkSystems EngineeringModeling And SimulationMulti-physics ModellingDeformation ModelingMultiphysics SimulationManaging Software ComplexityPartial Differential EquationsComputer EngineeringEmbedded Analysis AlgorithmsMultiphysics ProblemPart IiAnalysis CapabilitiesPde ApplicationNatural SciencesSimulation InfrastructureNumerical MethodsMultiscale Modeling
A template-based generic programming approach was presented in Part I of this series of papers [Sci. Program. 20 (2012), 197–219] that separates the development effort of programming a physical model from that of computing additional quantities, such as derivatives, needed for embedded analysis algorithms. In this paper, we describe the implementation details for using the template-based generic programming approach for simulation and analysis of partial differential equations (PDEs). We detail several of the hurdles that we have encountered, and some of the software infrastructure developed to overcome them. We end with a demonstration where we present shape optimization and uncertainty quantification results for a 3D PDE application.
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