Farm-wide virtual load monitoring for offshore wind structures via Bayesian neural networks
N. Hlaing, Pablo G. Morato, F. d. N. Santos, W. Weijtjens, C. Devriendt, P. Rigo

TL;DR
This paper introduces a Bayesian neural network-based virtual load monitoring system for offshore wind farms, enabling load predictions for turbines without full instrumentation while quantifying uncertainty.
Contribution
It presents a novel farm-wide virtual load monitoring framework using Bayesian neural networks trained on data from a fully-instrumented turbine.
Findings
BNN models effectively predict loads for non-instrumented turbines.
Uncertainty estimates help identify inaccurate load predictions.
Experimental results confirm the approach's effectiveness in real offshore wind farms.
Abstract
Offshore wind structures are subject to deterioration mechanisms throughout their operational lifetime. Even if the deterioration evolution of structural elements can be estimated through physics-based deterioration models, the uncertainties involved in the process hurdle the selection of lifecycle management decisions. In this scenario, the collection of relevant information through an efficient monitoring system enables the reduction of uncertainties, ultimately driving more optimal lifecycle decisions. However, a full monitoring instrumentation implemented on all wind turbines in a farm might become unfeasible due to practical and economical constraints. Besides, certain load monitoring systems often become defective after a few years of marine environment exposure. Addressing the aforementioned concerns, a farm-wide virtual load monitoring scheme directed by a fleet-leader wind…
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