In most studies related to wind energy, the quantity of the air density is consid-ered constant, but actually, we know that it is variable and depending on others natural factors. We present a new procedure to estimate the wind density power energy by simulating the components of the air density. The procedure uses the copula theory and demonstrates that the estimated power energy is higher if the air density is not constant.
Cite this paper
Bahraoui, Z. , Bahraoui, F. and Bahraoui, M. A. (2018). Modeling Wind Energy Using Copula. Open Access Library Journal, 5, e4984. doi: http://dx.doi.org/10.4236/oalib.1104984.
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