4.1. Power Law
First, the wind speed data were used to fit a power law of the form
.
was taken to be the wind speed measured at 10 m at the Cheyenne Mesonet site and the tall tower, as 10 m is a common reference level used to fit the power law in wind energy studies [
7]. The statistics toolbox in MATLAB was used to fit a linear regression to the wind speed data, and a best-fit line of the form
was found. For a power law fit, the slope is equal to
/
. Solving for
p gives
/
/
/
/
. For each stability class, a different value of
p was determined, which was then used to calculate 80-m wind speeds from 10-m wind speeds.
Values of the shear exponent,
p, the coefficient of determination,
, and the root-mean-squared error (RMSE) for the traditional power law fit are shown in
Table 1. Values of
and RMSE for a power law fit with a constant shear exponent of 1/7 (≈
) are shown for comparison. For the traditional power law fit, the value of
p approximated from the wind speed data generally increased with increasing stability (
Table 1), indicating that the amount of vertical wind shear increased with increasing stability, as expected [
7]. The neutral values of the shear exponent were quite close to the assumed neutral value of 1/7. The use of 10-m tall tower data in the power law fit produced slightly lower shear exponent values for most of the stability classes (
Table 1). This suggests that using the Mesonet 10-m wind speed data leads to an overestimation of vertical wind shear between 10 and 80 m.
For the month of August, 2009, the power law produced higher
values for unstable regimes and lower
values for stable regimes. Not surprisingly, the power law fit was much more accurate when tall tower data were used for the 10-m wind speed values. In particular, the
value for the strongly stable regime increased from 0.78 to 0.96 when the tall tower data were used for the 10-m reference wind speeds (
Table 1). This lower
value for the Mesonet 10-m data was likely related to the overestimation of vertical wind shear when 10-m Mesonet data were used.
Table 1.
The coefficient of determination () and root-mean-squared error (RMSE) values for different power law fits for all stability classes. Shear exponent values for the traditional power law fit are also shown. Ten-meter wind speed data from the Mesonet and tall tower were evaluated separately to produce power law fits.
Table 1.
The coefficient of determination () and root-mean-squared error (RMSE) values for different power law fits for all stability classes. Shear exponent values for the traditional power law fit are also shown. Ten-meter wind speed data from the Mesonet and tall tower were evaluated separately to produce power law fits.
Traditional Power Law: Shear Exponent |
---|
Month, 10-m Data Source | Strongly Unstable | Unstable | Neutral | Stable | Strongly Stable |
August 2009, Mesonet | 0.12 | 0.09 | 0.13 | 0.28 | 0.39 |
August 2009, Tall Tower | 0.06 | 0.08 | 0.16 | 0.26 | 0.28 |
p = 1/7: |
August 2009, Mesonet | 0.97 | 0.97 | 0.96 | 0.86 | 0.66 |
August 2009, Tall Tower | 0.96 | 0.97 | 0.97 | 0.91 | 0.90 |
Traditional Power Law: |
August 2009, Mesonet | 0.97 | 0.98 | 0.96 | 0.92 | 0.78 |
August 2009, Tall Tower | 1.0 | 0.99 | 0.97 | 0.96 | 0.96 |
Mesonet-Derived Power Law: |
August 2009, Mesonet | 0.97 | 0.98 | 0.96 | 0.93 | 0.86 |
August 2009, Tall Tower | 0.99 | 0.99 | 0.96 | 0.92 | 0.94 |
p = 1/7: RMSE (m s) |
August 2009, Mesonet | 0.94 | 1.1 | 1.8 | 2.7 | 3.5 |
August 2009, Tall Tower | 1.0 | 0.96 | 1.4 | 2.1 | 1.8 |
Traditional Power Law: RMSE (m s) |
August 2009, Mesonet | 0.88 | 0.85 | 1.8 | 2.1 | 2.8 |
August 2009, Tall Tower | 0.33 | 0.49 | 1.4 | 1.5 | 1.2 |
Mesonet-Derived Power Law: RMSE (m s) |
August 2009, Mesonet | 0.94 | 0.85 | 1.7 | 1.9 | 2.1 |
August 2009, Tall Tower | 0.39 | 0.62 | 1.8 | 2.0 | 1.4 |
The use of stability information to determine different shear exponents for different stability classes did not have a large effect on the
values for unstable regimes, but served to increase the
values significantly for stable regimes. In addition, RMSE values for all stability regimes (with the exception of the neutral regime) for both the Mesonet and the tall tower fit decreased when stability information was used to determine shear exponent values. The increase in
values for stable regimes is likely related to the large deviation of the shear exponent from the neutral 1/7 value, as the atmosphere becomes more stable (
Table 1). Co-located 10- and 80-m wind speed data from Cabauw, The Netherlands, also indicate that the shear exponent tends to be close to the neutral value under daytime, unstable conditions, but increases substantially above the neutral value under nighttime, stable conditions [
11].
4.2. Mesonet-Derived Power Law
Next, the power law and similarity theory methods were combined to develop power law fits from the Mesonet data in a technique similar to that used by Panofsky
et al. [
26]. This method involves manipulating equations for the power law fit and similarity theory to find the shear parameter,
p, as a function of atmospheric stability.
First, differentiating Equation (
1) with respect to
z gives:
Another expression for
can be obtained through the use of similarity theory, by utilizing the MOST equation for the vertical wind speed gradient:
where
is the similarity function for momentum. Equating the right-hand sides of Equations (7) and (8) and solving for
p gives the following equation:
where the ratio,
, is defined as the square root of the drag coefficient,
[
12]. Equation (
9) can be further simplified by defining a value of the shear parameter under neutral conditions,
. If we let
, then Equation (
9) becomes the following:
If we assume that the effects of surface roughness and stability on the shear parameter can be separated, then all roughness effects are described by the value of
and all stability effects are incorporated into
. For this study,
was simply defined as the shear parameter fit for neutral conditions (
Table 1), with different values for the Mesonet fit and the tall tower fit. However, the value of the shear exponent does vary with surface roughness and has a stronger variation for unstable conditions [
9]. In the future, different variables, such as wind direction, could be used to determine values for
that depend more strongly on the upwind fetch, and thus, the roughness length, which impacts the wind speeds at the measurement site.
The similarity function for momentum,
, is typically related to
through the use of the following empirical relations:
where
is the mean geometric height used for the calculation of
. For the Mesonet-derived power law fit, these similarity relations were used as a basis to develop a parameterization for
p as a function of
. Note that in Equations (13) and (14),
is given as a function of
, while
is given as a function of
in Equation (
10). However,
and
are related through the simple equation
, where the ratio,
, is constant for a given value of
z.
Scatter plots of Richardson number and shear parameters determined from the Mesonet and tall tower 10-m data are shown in
Figure 6. Although the relationship between
p and
largely followed the similarity functions outlined in Equations (11)–(14), some fine-tuning was needed to produce a more accurate fit. For both stable and unstable conditions, equations of the following form were developed:
where values of
a and
b were determined separately for stable and unstable regimes and different values of
were defined for the Mesonet and tower fits.
Figure 6.
Scatter plot of the gradient Richardson number measured at the Cheyenne Mesonet site and shear parameter values determined from 10-m Mesonet and tall tower data and 80-m tall tower data for August, 2009. Parameterizations for p as a function of are shown with dotted red and magenta lines.
Figure 6.
Scatter plot of the gradient Richardson number measured at the Cheyenne Mesonet site and shear parameter values determined from 10-m Mesonet and tall tower data and 80-m tall tower data for August, 2009. Parameterizations for p as a function of are shown with dotted red and magenta lines.
The Mesonet neutral shear exponent, 0.13, was used for
for the Mesonet parameterizations, while the tower unstable shear exponent, 0.08, was used for the tower parameterizations. The unstable tower shear exponent was used instead of the neutral shear exponent, because it provided a much better fit to the data in
Figure 6. As shown in
Table 1, the tower shear exponent for neutral conditions was 0.16, twice the value of the shear exponent for unstable conditions. Using the value of 0.16 would increase the parameterized
p values in
Figure 6 and provide a much poorer fit to the actual shear exponent values. It is likely that more accurate values of
could be determined if stability information was available at the tall tower site.
For the parameterization under stable conditions (
), our empirical fit provided
and
. A critical Richardson number,
, was also defined, beyond which,
was simply set to
in the shear exponent parameterization. For unstable conditions,
and
(note the similarity to Equation (14)). An additional correction factor needed to be added to the Mesonet parameterization, due to the slight increase in the Mesonet shear parameter that occurred as
reached more negative, unstable values (
Figure 6). This trend is unexpected; it implies that more wind shear is experienced between 10 and 80 m under very unstable conditions, even though boundary layer mixing is more prevalent under very unstable regimes. In fact, the shear exponent derived from 10-m Mesonet data for strongly unstable conditions was larger than that for unstable conditions (
Table 1). The discrepancy is likely the result of using stability information and 10-m wind speed data from a site that it not co-located with the 80-m wind speed measurements. Thus, spatial separation does appear to play a significant role in the development and accuracy of the power law extrapolation method.
The final shear exponent parameterizations are displayed in
Figure 6 and defined as follows:
where
for the Mesonet fit and
for the tall tower fit, and the factor in brackets in Equation (18) only needs to be added for the Mesonet fit.
Results from the Mesonet-derived power law fit are shown in
Table 1. For the Mesonet fit, the use of the shear exponent parameterization instead of the traditional power law fit increased the
value from 0.92 to 0.93 for stable regime wind speeds and, more significantly, from 0.78 to 0.86 for strongly stable regimes. The shear exponent parameterization also decreased RMSE values for the neutral, stable and strongly stable regimes. The superior performance of the Mesonet-derived power law fit for the neutral and stable regimes is likely related to the varying amounts of 10- to 80-m shear experienced during these regimes (
Figure 5a). While the traditional power law assigned a single shear exponent for each stability regime, the Mesonet-derived power law assigned a different shear exponent for each value of
, allowing for different values of shear within the same stability class.
Results for the tall tower fit are not as promising; in fact,
values for all stability regimes decreased when the Mesonet-derived power law fit was used, while RMSE values increased (
Table 1). In order to provide greater insight into this discrepancy, scatter plots of the power law fits for both the Mesonet fit and the tower fit were examined (
Figure 7 and
Figure 8). The scatter about the one-to-one line is significantly reduced when tall tower 10-m wind speeds are used, leading to lower RMSE values for the power law fits in comparison to the fits that used 10-m Mesonet data (
Table 1). However, the Mesonet-derived power law produced many underestimates of the true 80-m wind speed when the tower 10-m data were used, particularly for neutral and stable regimes (
Figure 8 c–e). Thus, although the tall tower estimates lay closer to the one-to-one line than the Mesonet estimates on average, the slope of the tower estimates changed significantly when the Mesonet-derived power law fit was used, producing a large amount of wind speed underestimates. It is likely that this decrease in performance is the result of using stability measurements that were taken at a different location than the 10- and 80-m wind speeds. Since the Mesonet-derived power law fit depends directly on
, the difference in stability between the Mesonet site and the tall tower site likely had a large effect on the accuracy of the shear exponent parameterization.
Figure 7.
Estimated 80-m wind speeds from power law fits compared to true 80-m wind speeds for (a) strongly unstable; (b) unstable; (c) neutral; (d) stable; and (e) strongly stable regimes. Observation/estimation pairs are indicated by circles, and the 1:1 line is shown by the thick black line for reference. Data from August, 2009, were used, and Mesonet data were used for 10-m wind speeds.
Figure 7.
Estimated 80-m wind speeds from power law fits compared to true 80-m wind speeds for (a) strongly unstable; (b) unstable; (c) neutral; (d) stable; and (e) strongly stable regimes. Observation/estimation pairs are indicated by circles, and the 1:1 line is shown by the thick black line for reference. Data from August, 2009, were used, and Mesonet data were used for 10-m wind speeds.
Figure 8.
As in
Figure 7, but tower data were used for 10-m wind speeds.
Figure 8.
As in
Figure 7, but tower data were used for 10-m wind speeds.
Figure 9.
Box-and-whisker plots of 80-m wind speed errors for various power law extrapolation methods and stability classes. The solid line in the center of the box indicates median error; edges of the box indicate the 25th and 75th percentiles, and the ends of whiskers indicate the 10th and 90th percentiles. The black dashed line indicates an error of 0 m s. Data from August 2009, were used, and both (a) Mesonet and (b) tall tower data were used for 10-m wind speeds.
Figure 9.
Box-and-whisker plots of 80-m wind speed errors for various power law extrapolation methods and stability classes. The solid line in the center of the box indicates median error; edges of the box indicate the 25th and 75th percentiles, and the ends of whiskers indicate the 10th and 90th percentiles. The black dashed line indicates an error of 0 m s. Data from August 2009, were used, and both (a) Mesonet and (b) tall tower data were used for 10-m wind speeds.
The uncertainty in the various power law extrapolation methods is depicted in
Figure 9. The error was defined as the estimated 80-m wind speed subtracted from the true 80-m wind speed, such that errors above (below) the 0 m s
line in
Figure 9 are underestimates (overestimates) of the wind speed. For the
power law, both the Mesonet and tall tower fits produced errors near 0 m s
for neutral conditions, overestimates for unstable conditions and underestimates for stable conditions. These results are expected, as the
power law is typically associated with neutral conditions. The range of expected errors decreased significantly when 10-m tall tower data were used, particularly for stable conditions.
When the traditional power law was used, the Mesonet fit tended to overestimate the wind speed for unstable and neutral conditions and underestimate the wind speed for stable conditions. The range of wind speed errors produced by the Mesonet fit is quite large for stable regimes and is likely related to the varying amounts of 10- to 80-m wind shear that occur under stable regimes. The use of tall tower 10-m wind speeds significantly improved the traditional power law fit, producing unbiased wind speed estimates for all stability classes and much smaller error ranges.
The use of tall tower 10-m wind speeds also decreased the range of errors for the Mesonet-derived power law fit. However, the median errors for the tall tower fit increased for neutral and stable regimes in comparison to the Mesonet fit, indicating that the tall tower fit tended to underestimate wind speeds for neutral and stable regimes. As previously discussed, this positive bias is likely related to the difference in stability between the Mesonet site and the tall tower site.
In summary, the use of co-located 10- and 80-m wind speeds in the power law fit methods leads to a smaller range of errors and greater certainty in the resultant wind speed estimates. However, biased estimates can be produced when stability information is collected at a different site than the 10- and 80-m wind speed data. Thus, wind speed data at 10- and 80-m, as well as stability information should be collected at the same site in order to produce wind speed estimates that are both accurate and precise.
4.4. Monin-Obukhov Similarity Theory
Similarity theory was also used as an extrapolation method as a comparison to the power law fits. Unlike the traditional power law, similarity theory is based on theories of boundary-layer fluxes and wind speed profiles and directly incorporates stability information into the extrapolation fit. However, similarity theory also contains several assumptions that may not always be true. For example, Monin–Obukhov similarity theory assumes that fluxes of heat and momentum are constant with height within the surface layer [
12], an assumption that is generally untrue at night when the boundary layer is stable [
27].
Similar to the process outlined for the Mesonet-derived power law fit, the gradient Richardson number was first used to calculate the similarity functions for momentum Equations (11)–(14). Next, the Obukhov length,
L, was calculated by dividing
by
. Once
L is known, the stability parameter,
ζ, can be computed for the two measurement heights
= 10 m and
= 80 m. The stability correction factors at 10 and 80 m were obtained from the following generally accepted equations [
12]:
where
.
Applying Equation (
2) to determine the wind speed at
= 80 m requires knowledge of the friction velocity,
, and roughness length,
, parameters. The friction velocity,
, was found by solving the equation for the dimensionless wind speed gradient for
:
The von Kármán constant was set to 0.4, and the mean wind speed gradient was found using a finite-difference approach, assuming a logarithmic wind profile:
Median values of
were approximately 0.2–0.3 m s
for all stability classes, with slightly lower values experienced during stable conditions. Next, the roughness length,
, was calculated by applying a modified log-law profile (Equation (
2)) to the wind speed at a height
= 10 m and solving it for
:
Median values of
derived from the data were approximately 0.01 m for the month of August, 2009, which is fitting for the open fields near the Cheyenne Mesonet site [
28]. Finally, the calculated values of
,
and
were used to calculate the wind speed at 80 m from the modified log-law equation (Equation (
2)).
The
and RMSE values for the MOST method are shown in
Table 3 for February to November, 2009 (Note that the Monin–Obukhov method assumes a maximum
of 0.2, so similarity theory was not applied to the strongly stable regime wind speeds or stable regime wind speeds where
). Similar to the power law method, more accurate fits were produced for the unstable regime wind speed pairs, consistent with previous work (e.g., [
20]). In general, the MOST method performed much more poorly for the stable regime wind speeds in comparison to the power law method.
To provide insight into this discrepancy, scatter plots of the 80-m wind speeds estimated from MOST were examined for different stability regimes (not shown). Similarity theory produced fairly good results for the strongly unstable, unstable and neutral regimes using both 10-m datasets (
0.9); the observation/estimation pairs were scattered somewhat uniformly about the 1:1 line, indicating that similarity theory produced approximately equal numbers of overestimates and underestimates of the 80-m wind speed. However, many of the similarity theory estimates were inaccurate for the stable regime, with a large scatter above the one-to-one line (
= 0.50, RMSE = 5.9 m s
for the tower fit). Thus, MOST appears to be overestimating the amount of wind shear between 10 and 80 m for stable conditions, consistent with the findings of Holtslag [
20]. This poor performance for stable regimes is not surprising; it is likely that 80 m is above the top of the surface layer for stable conditions, invalidating the application of MOST at 80 m. Indeed, based on data from the Wangara experiment, Hicks [
29] found that the wind speed profile under very stable conditions eventually transitions from a log-linear profile to an approximately linear profile, deviating substantially from the profile predicted by MOST.
Table 3.
The coefficient of determination () and the root-mean-squared error (RMSE) values for MOST and Extended Monin–Obukhov Similarity Theory (EMOST) for different datasets and stability classes.
Table 3.
The coefficient of determination () and the root-mean-squared error (RMSE) values for MOST and Extended Monin–Obukhov Similarity Theory (EMOST) for different datasets and stability classes.
Month, 10-m Data Source | Strongly Unstable | Unstable | Neutral | Stable |
---|
Monin-Obukhov Similarity Theory: |
February–November 2009, Mesonet | 0.95 | 0.97 | 0.95 | 0.47 |
February–November 2009, Tall Tower | 0.99 | 0.99 | 0.97 | 0.50 |
Extended Monin-Obukhov Similarity Theory: |
February–November 2009, Mesonet | 0.94 | 0.97 | 0.95 | 0.85 |
February–November 2009, Tall Tower | 0.99 | 0.99 | 0.95 | 0.88 |
Monin-Obukhov Similarity Theory: RMSE (m s) |
February–November 2009, Mesonet | 1.3 | 1.3 | 2.3 | 6.0 |
February–November 2009, Tall Tower | 0.52 | 0.70 | 1.7 | 5.9 |
Extended Monin-Obukhov Similarity Theory: RMSE (m s) |
February–November 2009, Mesonet | 1.4 | 1.4 | 2.3 | 3.3 |
February–November 2009, Tall Tower | 0.64 | 0.78 | 2.4 | 3.0 |
In order to improve the application of similarity theory for stable regimes, the extended Monin–Obukhov similarity theory method of Gryning
et al. [
21] was also used to estimate 80-m wind speeds. By using different length scales for different parts of the boundary layer, Gryning
et al. [
21] show that the wind speed profile in neutral conditions can be determined through the following equation:
is the length scale in the middle boundary layer under neutral conditions. By using tower observations, Gryning
et al. [
21] determined an empirical fit for
, given by:
where
f is the Coriolis parameter.
The general form of the wind profile is given by Equation (
4), where
is a stability correction factor. For stable conditions, Gryning
et al. [
21] suggest
. In this work, the constant,
b, was set to five, following the relations outlined in Arya [
12]. For unstable conditions, Gryning
et al. [
21] suggest
, where
. For both stable and unstable conditions, Gryning
et al. [
21] determined the following empirical relation for
:
Previously calculated values of
and
, determined using the MOST method, were used in the EMOST equations. Gryning
et al. [
21] used a similar method to estimate
by forcing the estimated wind profile to coincide with the measured wind speeds at 10 m. However, Gryning
et al. [
21] were able to calculate
directly with sonic anemometer data instead of estimating
from the dimensionless wind speed gradient equation (Equation (21)).
One of the parameters in the EMOST wind profile equations is the boundary layer height,
. Gryning
et al. [
21] estimate the mean boundary layer height for different stability regimes by examining heat and momentum fluxes from sonic anemometers on a tower and extrapolating the flux measurements upward. However, sonic anemometers are not available on either the tall tower or the Mesonet station, so a simple parameterization for the boundary layer height was used in this paper. Gryning
et al. [
21] suggest that the approximation
/
f be used when the boundary layer height is not known, so this approximation was adopted for the present study.
values for the EMOST method are shown in
Table 3. (Again, the application of EMOST was restricted to cases where
.) Similar to the MOST estimates, the 80-m wind speed estimates from EMOST were most accurate for strongly unstable, unstable and neutral regimes. However, the EMOST wind speed estimates for stable regimes are significantly closer to the observed 80-m wind speeds (e.g.,
= 0.88 using tower 10-m data) in comparison to the MOST estimates (
= 0.50 for the same dataset). In addition, unlike the MOST estimates, the EMOST wind speed estimates are scattered more uniformly about the one-to-one line, indicating that both overestimates and underestimates of the 80-m wind speed are produced (not shown). Thus, there does seem to be a slight advantage to using the extended Monin–Obukhov Similarity Theory of Gryning
et al. [
21], at least for stable regime wind speed estimates. However, both the traditional and Mesonet-derived power law fits generally produced more accurate extrapolation results for all stability regimes in comparison to the similarity theory methods (
Table 2 and
Table 3). In addition, the power law fits did not require the estimation of parameters such as friction velocity and boundary layer height.