Wind Energy Handbook. Michael Barton Graham
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Название: Wind Energy Handbook

Автор: Michael Barton Graham

Издательство: John Wiley & Sons Limited

Жанр: Физика

Серия:

isbn: 9781119451167

isbn:

СКАЧАТЬ at least 1024. The maximum wavelength used is the length of the turbulence history to be generated (i.e. the mean wind speed multiplied by duration of the required time series), and the minimum wavelength is twice the longitudinal spacing of points (which is the mean wind speed divided by the maximum frequency of interest). In the lateral and vertical directions, a much smaller number of points must be used, perhaps as low as 32, depending on available computer memory. The maximum wavelength must be significantly greater than the rotor diameter, because the solution is spatially periodic, with period equal to the maximum wavelength in each direction. The number of FFT points then determines the minimum wavelength in these directions. With a realistic number of points, the resulting turbulence spectra are deficient at the high frequency end (Veldkamp 2006). Mann (1998) suggests that this may be realistic, because it represents averaging of the turbulence over finite volumes of space, which is appropriate for practical engineering applications. However, a practical simulation tool will perform all necessary spatial averaging in any case, and so the high frequency variations are really lost. Mann (1998) does suggest a remedy for this, but in practice it is extremely intensive computationally.

      It is often useful to know the maximum gust speed that can be expected to occur in any given time interval. This is usually represented by a gust factor G, which is the ratio of the gust wind speed to the hourly mean wind speed. G is obviously a function of the turbulence intensity, and it also clearly depends on the duration of the gust – thus the gust factor for a one‐second gust will be larger than for a three‐second gust, because every three‐second gust has within it a higher one‐second gust.

Graph depicts the Gust factors calculated from Eq. (2.46).

      While it is possible to derive expressions for gust factors starting from the turbulence spectrum (Greenway 1979; ESDU 1983), an empirical expression due to Weiringa (1973) is often used because it is much simpler and agrees well with theoretical results. Accordingly, the t‐second gust factor is given by

      In addition to the foregoing descriptions of the average statistical properties of the wind, it is clearly of interest to be able to estimate the long‐term extreme wind speeds that might occur at a particular site.

      A probability distribution of hourly mean wind speeds such as the Weibull distribution will yield estimates of the probability of exceedance of any particular level of hourly mean wind speed. However, when used to estimate the probability of extreme winds, an accurate knowledge of the high wind speed tail of the distribution is required, and this will not be very reliable because almost all of the data that was used to fit the parameters of the distribution will have been recorded at lower wind speeds. Extrapolating the distribution to higher wind speeds cannot be relied upon to give an accurate result.

      (2.47)upper F left-parenthesis ModifyingAbove upper U With Ì‚ right-parenthesis equals exp left-parenthesis minus exp left-parenthesis minus a left-parenthesis ModifyingAbove upper U With Ì‚ minus upper U prime right-parenthesis right-parenthesis right-parenthesis

      as the observation period increases. U is the most likely extreme value, or the mode of the distribution, while 1/a represents the width or spread of the distribution and is termed the dispersion.

      This makes it possible to estimate the distribution of extreme values based on a fairly limited set of measured peak values, for example, a set of measurements of the highest hourly mean wind speeds ModifyingAbove upper U With Ì‚ recorded during each of N storms. The N measured extremes are ranked in ascending order, and an estimate of the cumulative probability distribution function is obtained as

      (2.48)ModifyingAbove upper F With tilde left-parenthesis ModifyingAbove upper U With Ì‚ right-parenthesis approximately-equals StartFraction m left-parenthesis ModifyingAbove upper U With Ì‚ right-parenthesis Over upper N plus 1 EndFraction

      where m(ModifyingAbove upper U With Ì‚) is the rank, or position in the sequence (starting with the lowest), of the observationModifyingAbove upper U With Ì‚. Then a plot of СКАЧАТЬ