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Multifidelity deep neural operators for efficient learning of partial differential equations with application to fast inverse design of nanoscale heat transport

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Multifidelity DeepONet

The data and code for the paper L. Lu, R. Pestourie, S. G. Johnson, & G. Romano. Multifidelity deep neural operators for efficient learning of partial differential equations with application to fast inverse design of nanoscale heat transport. Physical Review Research, 4(2), 023210, 2022.

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If you use this data or code for academic research, you are encouraged to cite the following paper:

@article{PhysRevResearch.4.023210,
  title   = {Multifidelity deep neural operators for efficient learning of partial differential equations with application to fast inverse design of nanoscale heat transport},
  author  = {Lu, Lu and Pestourie, Rapha\"el and Johnson, Steven G. and Romano, Giuseppe},
  journal = {Phys. Rev. Research},
  volume  = {4},
  issue   = {2},
  pages   = {023210},
  year    = {2022},
  doi     = {10.1103/PhysRevResearch.4.023210}
}

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Multifidelity deep neural operators for efficient learning of partial differential equations with application to fast inverse design of nanoscale heat transport

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