SOTAVerified

Uncertainty-Aware Calibration of a Hot-Wire Anemometer With Gaussian Process Regression

2024-01-16Unverified0· sign in to hype

Rubén Antonio García-Ruiz, José Luis Blanco-Claraco, Javier López-Martínez, Ángel Jesús Callejón-Ferre

Unverified — Be the first to reproduce this paper.

Reproduce

Abstract

Expensive ultrasonic anemometers are usually required to measure wind speed accurately. The aim of this work is to overcome the loss of accuracy of a low cost hot-wire anemometer caused by the changes of air temperature, by means of a probabilistic calibration using Gaussian Process Regression. Gaussian Process Regression is a non-parametric, Bayesian, and supervised learning method designed to make predictions of an unknown target variable as a function of one or more known input variables. Our approach is validated against real datasets, obtaining a good performance in inferring the actual wind speed values. By performing, before its real use in the field, a calibration of the hot-wire anemometer taking into account air temperature, permits that the wind speed can be estimated for the typical range of ambient temperatures, including a grounded uncertainty estimation for each speed measure.

Tasks

Reproductions