Development of a High-Performance, FPGA-Based Virtual Anemometer for Model-Based MPPT of Wind Generators
Academic Article
Publication Date:
2020
abstract:
Model-based maximum power point tracking (MPPT) of wind generators (WGs) eliminates dead times and increases energy yield with respect to iterative MPPT techniques. However, it requires
the measurement of wind speed. Under this premise, this paper describes the implementation of a high-performance virtual anemometer on a field programmable gate array (FPGA) platform.
Said anemometer is based on a growing neural gas artificial neural network that learns and inverts the mechanical characteristics of the wind turbine, estimating wind speed. The use of this device in
place of a conventional anemometer to perform model-based MPPT of WGs leads to higher reliability, reduced volume/weight, and lower cost. The device was conceived as a coprocessor with a slave
serial peripheral interface (SPI) to communicate with the main microprocessor/digital signal processor (DSP), on which the control system of the WG was implemented. The best compromise between
resource occupation and speed was achieved through suitable hardware optimizations. The resulting design is able to exchange data up to a 100 kHz rate; thus, it is suitable for high-performance control
of WGs. The device was implemented on a low-cost FPGA, and its validation was performed using input profiles that were experimentally acquired during the operation of two different WGs.
Iris type:
01.01 Articolo in rivista
Keywords:
virtual sensors; anemometer; maximum power point tracking; wind generator; field-programmable gate array; growing neural gas; artificial neural network
List of contributors:
DI PIAZZA, MARIA CARMELA; Pucci, Marcello; Luna, Massimiliano; Accetta, Angelo; LA TONA, Giuseppe
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