DOI:​10.15388/INFORMATICA.2015.60
Corpus ID: 43955703
Sensorless Estimation of Wind Speed by Soft Computing Methodologies: A Comparative Study
D. Petkovic, Muhammad Arif, +2 authors Davood Kiakojoori
Published 2015
Mathematics, Computer Science

Informatica
This paper shows a few novel calculations for wind speed estimation, which is focused around soft computing. The inputs of to the estimators are picked as the wind turbine power coeffi- cient… Expand
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14 Citations
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Figures, Tables, and Topics from this paper
Table 1
Figure 1
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Figure 4
Figure 5
Soft computing
Adaptive neuro fuzzy inference system
Support vector machine
Radial basis function
Pitch (music)
Coefficient
Polynomial
System identification
Generalization error
Neuro-fuzzy
Radial (radio)
Mean squared error
R.O.T.O.R.
Standard Business Reporting
Algorithm
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