Randomized prior wavelet neural operator for uncertainty quantification
In this paper, we propose a novel data-driven operator learning framework referred to as the \textit{Randomized Prior Wavelet Neural Operator} (RP-WNO). The proposed RP-WNO is an extension of the recently proposed wavelet neural operator, which boasts excellent generalizing capabilities but cannot e...
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Zusammenfassung: | In this paper, we propose a novel data-driven operator learning framework
referred to as the \textit{Randomized Prior Wavelet Neural Operator} (RP-WNO).
The proposed RP-WNO is an extension of the recently proposed wavelet neural
operator, which boasts excellent generalizing capabilities but cannot estimate
the uncertainty associated with its predictions. RP-WNO, unlike the vanilla
WNO, comes with inherent uncertainty quantification module and hence, is
expected to be extremely useful for scientists and engineers alike. RP-WNO
utilizes randomized prior networks, which can account for prior information and
is easier to implement for large, complex deep-learning architectures than its
Bayesian counterpart. Four examples have been solved to test the proposed
framework, and the results produced advocate favorably for the efficacy of the
proposed framework. |
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DOI: | 10.48550/arxiv.2302.01051 |