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Wind Field Reconstruction with Adaptive Random Fourier Features

4 February 2021
Jonas Kiessling
Emanuel Ström
Raúl Tempone
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Abstract

We investigate the use of spatial interpolation methods for reconstructing the horizontal near-surface wind field given a sparse set of measurements. In particular, random Fourier features is compared to a set of benchmark methods including Kriging and Inverse distance weighting. Random Fourier features is a linear model β(x)=∑k=1Kβkeiωkx\beta(\pmb x) = \sum_{k=1}^K \beta_k e^{i\omega_k \pmb x}β(x)=∑k=1K​βk​eiωk​x approximating the velocity field, with frequencies ωk\omega_kωk​ randomly sampled and amplitudes βk\beta_kβk​ trained to minimize a loss function. We include a physically motivated divergence penalty term ∣∇⋅β(x)∣2|\nabla \cdot \beta(\pmb x)|^2∣∇⋅β(x)∣2, as well as a penalty on the Sobolev norm. We derive a bound on the generalization error and derive a sampling density that minimizes the bound. Following (arXiv:2007.10683 [math.NA]), we devise an adaptive Metropolis-Hastings algorithm for sampling the frequencies of the optimal distribution. In our experiments, our random Fourier features model outperforms the benchmark models.

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