DeepOKAN: Deep operator network based on Kolmogorov Arnold networks for mechanics problems

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Abstract

The modern digital engineering design often requires costly repeated simulations for different scenarios. The prediction capability of neural networks (NNs) makes them suitable surrogates for providing design insights. However, only a few NNs can efficiently handle complex engineering scenario predictions. We introduce a new version of the neural operators called DeepOKAN, which utilizes Kolmogorov Arnold networks (KANs) rather than the conventional neural network architectures. Our DeepOKAN uses Gaussian radial basis functions (RBFs) rather than the B-splines. RBFs offer good approximation properties and are typically computationally fast. The KAN architecture, combined with RBFs, allows DeepOKANs to…

Citation impact

99
total citations
FWCI
102.23
Percentile
100%
References
65
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Authors

3

Topics & keywords

Keywords
  • Operator (biology)
  • Mathematics
  • Statistical physics
  • Mathematical physics
  • Computer science
  • Physics
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