Probabilistic surrogate modeling of offshore wind-turbine loads with chained Gaussian processes
Deepali Singh, Richard P. Dwight, Kasper Laugesen, Laurent Beaudet and, Axelle Vir\'e

TL;DR
This paper introduces a heteroscedastic Gaussian process surrogate model for offshore wind turbine loads, capturing variability due to stochastic environmental factors more accurately than traditional models.
Contribution
It develops a chained Gaussian process approach to model the conditional probability distribution of loads, accounting for heteroscedastic noise in offshore wind turbine data.
Findings
Heteroscedastic surrogate better captures load variability.
Model predicts response variance more accurately.
Performance comparable in mean response to standard models.
Abstract
Heteroscedastic Gaussian process regression, based on the concept of chained Gaussian processes, is used to build surrogates to predict site-specific loads on an offshore wind turbine. Stochasticity in the inflow turbulence and irregular waves results in load responses that are best represented as random variables rather than deterministic values. Moreover, the effect of these stochastic sources on the loads depends strongly on the mean environmental conditions -- for instance, at low mean wind speeds, inflow turbulence produces much less variability in loads than at high wind speeds. Statistically, this is known as heteroscedasticity. Deterministic and most stochastic surrogates do not account for the heteroscedastic noise, giving an incomplete and potentially misleading picture of the structural response. In this paper, we draw on the recent advancements in statistical inference to…
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