ANN Modeling and Optimization of Power output from Horizontal Axis Wind Turbine
Date
2019
Authors
Rashmi
Journal Title
Journal ISSN
Volume Title
Publisher
National Institute of Technology Karnataka, Surathkal
Abstract
Integration of wind energy with energy with existing power sources has been restricted due to its intermittent and stochastic nature. Hence, there is a great need to
develop an accurate and reliable site-specific prediction model. Forecasting of wind
speed which is an important parameter affecting turbine power output, will help the
wind energy industry in proper planning, scheduling and controlling. Artificial Neural
Network (ANN) has proved its capability in mapping such complex non-linear inputoutput relations. The main objective of the wind energy industry, is to reduce the cost
and increase the power generation by optimizing the controllable parameters affecting
the turbine power output. The metaheuristic optimization algorithms, which are robust
to dynamic changes are proved to be successful in solving such complex real-world
problems.
This research work has been carried out in three different phases namely wind power
prediction, wind power optimization and wind speed forecasting (WSF).The data for
this research work has been collected from the Supervisory Control and Data Acquisition System (SCADA) of 1.5 MW, pitch regulated, three bladed, horizontal axis wind
turbine, located in a large wind farm present in central dry zone of Karnataka, India.
In the present study, different conventional and ANN models have been used to
predict the power output of a turbine. ANN models have been developed based on
batch learning and Online Sequential Extreme Learning Machine (OSELM) algorithms,
by considering carefully selected variables affecting power output, namely wind speed,
wind direction, blade pitch angle, density and rotor speed. Maximizing the power output
of the wind turbine by optimizing the only controllable parameter namely blade pitch
angle has been achieved using three different metaheuristic optimization algorithms. A
vihybrid ANN multistep WSF model, which is a combination of OSELM, Cuckoo Search
(CS) and Optimized Variational Mode Decomposition (OVMD) method, hence named
OVMD-CS-OSELM has been proposed in the present study. The performance of this
hybrid model has been then compared with the benchmark models.
From this study it has been found that, the models based on Extreme Learning
Machine (ELM) converge extremely faster with better generalization performance and
generate a compact network structure compared to Backpropagation learning. Out of
the fifteen models based on batch learning, the fully optimized RBF model with ELM
learning resulted in good performance with Root Mean Square Error (RMSE) value
of 1.73%. The detailed study of OSELM algorithm showed a RMSE value of 1.96%,
which is slightly higher than the fully optimized RBF model. However,for the present
application due to the online nature of the wind data, OSELM algorithm is highly preferable.
CS optimization algorithm is found to be suitable in optimizing the blade pitch
angle of the turbine and accordingly the optimization of the power output, due to its
fast convergence and a highest Mean relative PG value of 17.329%.
In comparison with benchmark models, the proposed WSF model showed clear benefits of OSELM over ELM, OVMD over Emperical Mode Decomposition and CS over
Partial Autocorrelation function for modeling, data pre-processing and input feature selection, with percentage improvements in Mean Absolute Percentage Error (MAPE) of
3.35%, 48.19% and 12.05% respectively for 1-step ahead forecasting. The proposed
model has been validated using a standard database, which is from a meteorological
station located in Portugal, thereby establishing its use in WSF.
This research work thus proposes efficient models based on ANN for wind power
prediction, optimization and WSF, which is useful in proper planning, integration and
scheduling in the wind energy industry, thereby making it more competitive and a promising renewable energy source.
Description
Keywords
Department of Mechanical Engineering