Publication | Open Access
Multifidelity deep neural operators for efficient learning of partial differential equations with application to fast inverse design of nanoscale heat transport
139
Citations
29
References
2022
Year
Artificial IntelligenceEngineeringMachine LearningAutoencodersNanoscale Heat TransportPde-constrained OptimizationData SciencePhysic Aware Machine LearningSparse Neural NetworkNumerical SimulationMachine Learning ModelPartial Differential EquationsInverse ProblemsComputer ScienceNeural OperatorsDeep LearningInverse DesignNeural Architecture SearchNumerical Method For Partial Differential EquationDeep Neural OperatorsNatural SciencesApplied PhysicsMultifidelity DeeponetMultiscale Modeling
Deep neural operators can learn operators mapping between infinite-dimensional function spaces via deep neural networks and have become an emerging paradigm of scientific machine learning. However, training neural operators usually requires a large amount of high-fidelity data, which is often difficult to obtain in real engineering problems. Here we address this challenge by using multifidelity learning, i.e., learning from multifidelity data sets. We develop a multifidelity neural operator based on a deep operator network (DeepONet). A multifidelity DeepONet includes two standard DeepONets coupled by residual learning and input augmentation. Multifidelity DeepONet significantly reduces the required amount of high-fidelity data and achieves one order of magnitude smaller error when using the same amount of high-fidelity data. We apply a multifidelity DeepONet to learn the phonon Boltzmann transport equation (BTE), a framework to compute nanoscale heat transport. By combining a trained multifidelity DeepONet with genetic algorithm or topology optimization, we demonstrate a fast solver for the inverse design of BTE problems.
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