1. Time domain modeling of cup anemometers using artificial neural networks.
- Author
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Bégin-Drolet, André, Lemay, Jean, and Ruel, Jean
- Subjects
- *
TIME-domain analysis , *MATHEMATICAL models , *ANEMOMETER , *ARTIFICIAL neural networks , *WIND speed , *FLUCTUATIONS (Physics) , *ROTORS - Abstract
Abstract: Under rapidly fluctuating wind speed, high inertia cup anemometers have a tendency to overspeed. The main objective of this article is to develop an inverse time domain model that could be used in real-time during cup anemometer operation to minimize the so-called “u-error”. A model proposed by Kristensen and an artificial neural network (ANN) direct model were first investigated to simulate the dynamic behavior of a heated cup anemometer with relatively high rotor inertia. Once the anemometer behavior was known, several virtual inputs were generated and the direct model was used to predict the instrument behavior. These models were built to emphasis the non-linear relationship between the free stream fluctuating wind and the wind speed measured by the anemometer. A semi-empirical inverse model derived from Kristensen's model was then studied and an ANN inverse model was suggested in order to minimize the so-called u-error. A methodology is proposed to gather the appropriate data to create both the direct and inverse model using an artificial neural network. The output of each model was compared with experimental data for validation and good agreement was found between the ANN models and the experimental data used for validation. [Copyright &y& Elsevier]
- Published
- 2013
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