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Seasonal and annual variability of global winds and wind
power resources
Journal: Energy & Environmental Science
Manuscript ID: EE-ART-10-2011-002906
Article Type: Paper
Date Submitted by the Author: 14-Oct-2011
Complete List of Authors: archer, cristina; University of Delaware, College of Earth, Ocean, and Environment; California State University Chico, Geological and Environmental Sciences
Energy & Environmental Science
Energy & Environmental Science
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Page 1 of 18 Energy & Environmental Science
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This journal is © The Royal Society of Chemistry [year] [journal], [year], [vol], 00–00 | 1
Seasonal and annual variability of global winds and wind power
resources
Cristina L. Archer*a and Mark Z. Jacobson
b
Received (in XXX, XXX) Xth XXXXXXXXX 20XX, Accepted Xth XXXXXXXXX 20XX
DOI: 10.1039/b000000x 5
This paper provides global and regional wind resource estimates obtained with a 3-D numerical model
that dynamically calculates the instantaneous wind power of a modern 5 MW wind turbine at its 100-m
hub height each time step. The model was run at various horizontal resolutions (4x5, 2x2.5, and 1.5x1.5
degrees of latitude and longitude) for several years. Despite differences during the first two years, global
wind power estimates from all runs effectively converged. Global delivered 100-m wind power at high-10
wind locations (≥7 m/s) over land, excluding both polar regions, including transmission, distribution, and
wind farm array losses, but not considering landuse exclusions, is estimated to be 112-120 TW. Seasonal
variations in global wind resources are significant, with 73-89 TW in June-July-August (JJA) versus 159-
167 TW in December-January-February (DJF), with minima in September and maxima in January. The
wind power over land in high-wind locations in the Northern Hemisphere (NH) is ~107 TW, over five 15
times greater than that over the Southern Hemisphere (SH) (~19 TW) on average. The shallow-water
offshore delivered wind power potential (excluding polar regions) is ~9 TW at 100 m, varying between
6.4 and 11.7 TW from JJA to DJF. The theoretical wind power over all land and ocean worldwide at all
wind speeds, considering transmission, distribution, and array losses for typical wind farms, is ~1500
TW. Providing half the world’s energy for all purposes in 2030 from wind would consume <0.5% of the 20
world’s wind power at 100 m, hardly affecting total power in the atmosphere.
1. Introduction
Wind energy is expected to play a major role in the transition
from finite and polluting energy sources - fossil and fissile fuels -
to a clean, sustainable, and perpetual renewable energy 25
infrastructure1. Although it is well known that the global wind
resource is large2,3,4,5,6, the exact magnitude of extractable wind
power available worldwide is still under debate, mainly for four
reasons: 1) the assumptions and definitions used in calculating
global wind power are often inconsistent; 2) wind speed data at 30
the hub height of modern wind turbines (~100 m) are few and
sparse; 3) global model maps evaluated against data are not
available at high resolution, either spatially or temporally; and 4)
the conversion from wind speed to wind power is often calculated
inconsistently because it requires assumptions about specific 35
turbines and their efficiencies as well as transmission and wake
losses.
First, the term “wind power potential” is not unequivocal. It
can refer to one of four different types of potential3, loosely
defined as: 40
- Theoretical potential: the average kinetic energy in the winds at
each instant at all levels in the atmosphere at all points,
regardless of land cover, technology, efficiencies, or cost. As
explained in section 3.2, a better measure of the theoretical
wind power potential may be the added kinetic energy 45
dissipation that does not introduce significant climatic effects.
- Technical potential: the fraction of the theoretical wind power
potential that can be extracted with modern technologies (thus
at hub height, over windy land and windy near-shore
locations only, including limitations due to minimum and 50
maximum wind speeds required to operate a turbine and
array, transmission, and distribution losses).
- Practical potential: the wind power potential excluding areas
with practical restrictions, such as conflicting land and water
uses or remoteness. 55
- Economical potential: the fraction of practical wind power
potential that can be harnessed after economic and financial
considerations are included.
The need for clear, unequivocal definitions of wind power
potentials has been addressed in Hoogwijk et al.3 and in GEA7. 60
Because such consistency in the definitions is still lacking in the
literature, estimates of wind power potential can vary by orders of
magnitude. Since the technical potential is possibly the most
relevant, objective, and insensitive to market fluctuations, it is the
primary focus of this study. 65
Second, the global technical wind power potential is
challenging to evaluate because worldwide wind speed data are
Page 2 of 18Energy & Environmental Science
2 | Journal Name, [year], [vol], 00–00 This journal is © The Royal Society of Chemistry [year]
not available at the hub height of modern wind turbines (~100 m).
As such, interpolation and extrapolations methods over hundreds
of meters of altitude have been proposed, such as the Least
Square Error method4,8 or the log- and power-laws9,10. These
techniques can be applied to both observational data and model 5
results, but are approximate because they are based partly on
theoretical and partly on empirical considerations10. In this study,
this limitation is overcome by using a 3-D atmospheric model
with two layers with centers very close to 100 m, allowing a
nearly precise model estimate of 100-m wind speeds. 10
In addition, global maps of the wind resource at hub height are
not available at spatial and temporal resolutions that are fine
enough to resolve significant local wind features or seasonal and
monthly fluctuations of the global wind resource. Observation-
based estimates, such as Archer and Jacobson4, are limited by the 15
sparse data in most regions of the globe. Fine-resolution maps are
available for certain regions, such as the U.S. West Coast11,12, but
not for the entire globe, due to practical computational
limitations. No study to date has addressed the seasonal and
monthly fluctuations of wind power at the global scale. This 20
study will address both issues – spatial and temporal resolution -
by providing coarse, medium, and fine resolution maps of global
wind power, season by season and month by month. A limitation
of this study is that sub-grid scale topography could not be
properly simulated at the resolutions modeled here. However, the 25
model did treat subgrid soil and land use classes and calculated
surface energy and moisture fluxes over each subgrid soil class
every time step in the model. Running global simulations at
higher-resolution than was done here was not possible given the
computational resources available for this study. 30
Finally, the inconsistent methods of converting from wind
speed to wind power is another reason for differences in wind
power estimates in the literature. Previous model-based wind
power mapping efforts estimated wind resources using
information averaged over time from offline meteorological 35
simulations, either by calculating the theoretical power available
in the wind every 6 or 12 hours13,14, applying a power curve to
offline reanalyses of wind speeds every 6 hours15, or using fitting
equations to calculate the capacity factor from wind speeds
averaged over one year11. In this paper, wind power distributions 40
were obtained by using the wind power curve of a selected wind
turbine, the 5-MW model by REPower
(http://www.repower.de/fileadmin/download/produkte/RE_PP_5
M_uk.pdf), directly in the meteorological model to calculate
instantaneous power from instantaneous wind speed each model 45
time step of 30 s in all simulations.
2. Methods
2.1 Implementation of a wind turbine power curve into the model
The model used for this study was GATOR-GCMOM, a one-50
way-nested (feeding information from coarser to finer domains)
global-regional Gas, Aerosol, Transport, Radiation, General
Circulation, Mesoscale, and Ocean Model that simulates climate,
weather, and air pollution on all scales and has been evaluated
extensively16,17,18. In this paper, we further compare ocean wind 55
speed data from the model with satellite data. The processes
within the model have also been compared with those of other
coupled climate-air pollution models in Zhang19.
For this study, only the global domain was used, but at three
horizontal resolutions. The model treated 47 vertical layers up to 60
60 km in each simulation, including 15 layers in the bottom 1 km.
The four lowest levels were centered at approximately 15, 45, 75,
and 106 m above the ground, but the heights of such centers
changed continuously in a small range since the vertical
coordinate system used was the sigma-pressure coordinate. Each 65
time step, though, all wind speeds were interpolated vertically
between two layer centers to exactly 100 m, the hub height of the
wind turbine assumed for the calculations here.
The model solves the momentum equation with the potential-
enstrophy-, vorticity-, energy-, and mass-conserving scheme of 70
Arakawa and Lamb20. Two-dimensional ocean mixed-layer
dynamics conserves the same four properties while predicting
mixed-layer velocities, heights, and energy transport21. The
model solves 3-D ocean energy and chemistry diffusion, 3-D
ocean equilibrium chemistry, and ocean-atmosphere exchange. 75
The model also treats subgrid soil classes, each with a 10-layer
soil model, and surface energy and moisture fluxes separately
over each subgrid class16.
In order to calculate wind power from the model, we first
selected a turbine, the REPower 5M wind turbine. With a 80
diameter of 126 m and a hub height of 100 m, it reaches the rated
power 5 MW at the rated speed of Vrated=12.5 m/s. Manufacturer
power output data as a function of wind speed were provided
only as a graphic curve in one-unit intervals. A third-order
polynomial fit was used to obtain wind power output P as a 85
continuous function of 100-m wind speed v:
P = av3 + bv
2 +cv+ d , (1)
where the coefficients a, b, c, and d are shown in Fig. 1. No
power can be produced at wind speeds lower than 3.5 m/s (cut-in
speed) or higher than 25 m/s (cut-off speed). Because of the 90
change in the curve concavity, different coefficients were derived
for low versus high wind speeds.
Fig. 1 Power curve of the REPower 5M wind turbine, with coefficients
valid below 10 m/s (lower polynomial, black line) and above or equal to 95
10 m/s (upper polynomial, grey line) used to interpolate the
manufacturer’s data.
The dynamical time step in the model was 30 seconds for all
model resolutions simulated. Each dynamical time step, the wind
speed at 100 m above ground level at the horizontal center of 100
Page 3 of 18 Energy & Environmental Science
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each column in the model was applied to Equation 1 to determine
the instantaneous wind power at 100 m for a single wind turbine.
Wind power at 100 m was stored so that monthly, seasonal, and
annual statistics could be obtained.
2.2 Numerical simulations 5
Three simulations were run, each with a different horizontal
resolution and start date (Table 1). Initial conditions for each
simulation were obtained with 1ox1o reanalysis fields22. To
eliminate the effect of the initial state, the model results for the
first several months of each simulation were discarded and only 10
results since March 2007 were retained.
Table 1 Details of the various simulations.
Run
name
Horizontal
resolution
(degrees)
Time step
(s)
Starting date End date
4x5 4 x 5 30 1 Jan 2006 31 Dec 2009
2x2.5 2 x 2.5 30 27 Aug 2005 31 Dec 2009
1.5x1.5 1.5 x 1.5 30 19 Feb 2006 31 Dec 2008
2.3 Assumptions for global wind power calculations
After each simulation, a maximum number of turbines in each
grid cell was determined by dividing the grid cell surface area by 15
the spacing area of a single turbine, estimated as A=7D x 4D,
where D is the turbine diameter (126 m in this case) [Masters23, p.
352]. The power output from the model per turbine for either a
month, season, or year was then multiplied by the number of
turbines in the grid cell to obtain the power available in the cell 20
before the system efficiency was accounted for. This power is
referred to as “turbine power” and is used in this paper only for
calculations of the capacity factor (in Section 3.1). Power output
accounting for system efficiency was then tabulated. This power
is referred to as “end-use power”. Except for capacity factor, all 25
power results reported in this paper are end-use power, thus
accounting for system efficiency.
The system efficiency of a wind farm ηt is the ratio of energy
delivered to raw energy produced by the turbines. It accounts for
array, transmission, and distribution losses (but not for 30
maintenance or availability losses).
Array losses are energy losses resulting from reductions in
wind speed that occur in a large wind farm when upstream
turbines extract energy from the wind, reducing the wind speed
for downstream turbines. Upstream turbines also create vortices 35
or ripples (turbulence) in their wakes that can interfere with
downwind turbines. The greater the spacing between wind
turbines, the lower the array losses due to loss of energy in the
wind, vortices, and wakes. Array losses are generally 5-20
percent23,24. 40
Transmission and distribution losses are losses that occur
between the power source and end users of electricity.
Transmission losses are losses of energy that occur along a
transmission line due to resistance. Distribution losses occur due
to step-up transformers, which increase voltage from an energy 45
source to a high-voltage transmission line and decrease voltage
from the high-voltage transmission line to the local distribution
line. The average transmission plus distribution losses in the U.S.
in 2007 were 6.5 percent25.
The overall system efficiency of a wind farm, accounting for 50
array, transmission, and distribution losses typically ranges from
0.85 to 0.9; here we assumed an average ηt=0.875, corresponding
to a system loss of 12.5 percent.
3. Results
3.1 Mapping the global wind resource at various 55
resolutions
Fig. 2 provides global wind speeds from the three simulations
during the northern hemisphere (NH) winter. Additional maps for
the entire simulation period are available at
http://suntans.stanford.edu/~lozej/mark_model. The strongest 60
winds are in the NH, especially over the waters in the northern
Pacific and Atlantic oceans, where the Aleutian and the Icelandic
low-pressure systems cause storms and strong winds near the
surface. Whereas all runs are consistent with each other in the
NH, some differences are found in the SH. For example, the 65
annular structure of strong winds over the Southern Ocean
appears continuous at 2x2.5 degrees, but somewhat discontinuous
at 1.5x1.5 degrees. Also, a secondary wind speed maximum
appears to the west of northern Australia in the 1.5x1.5 run only.
Overall, however, the runs are in agreement with each other 70
during DJF, although the 2x2.5 run shows generally higher wind
speeds in the SH than does the 1.5x1.5 run.
Fig. 3 shows the 100-m wind speed distribution during the NH
summer (JJA). The runs are in good qualitative agreement, with
the 2x2.5 again producing slightly higher and more continuous 75
winds over the Southern Ocean. The localized wind speed
maximum offshore of California is a persistent feature in the
northern Pacific during the NH summer13,11,12 and it represents
possibly the greatest summertime offshore wind resource in
North America during the season with the highest electric load. 80
Although there is a second maximum offshore of Japan in JJA,
the summer wind speed maximum offshore of California is
predicted correctly by this model at all resolutions, with the least
accuracy at 4x5 degree resolution.
85
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(a)
(b)
(c)
Fig. 2 Average wind speed at 100 m during December-January-February from model runs: 4x5 (a); 2x2.5 (b); and 1.5x1.5 (c).
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(a)
(b)
(c)
Fig. 3 Average wind speed at 100 m during June-July-August from model runs: 4x5 (a); 2x2.5 (b); and 1.5x1.5 (c).
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The capacity factor (CF) of a turbine is the ratio of the actual
power generated by the turbine to its rated power. The capacity
factor in this definition does not account for the system
efficiency, only the turbine efficiency and the variability of the
wind, thus is a gross CF. Modern wind turbines installed in areas 5
with average 100-m wind speeds greater than 7 m/s can achieve a
gross CF>40%. By contrast, wind turbines exposed to average
wind speeds lower than 7 m/s are less likely to be economically
feasible26, although recent progress in the development of low
wind speed turbines may reduce this threshold from 7 to 6.5 m/s 10
in the near future. The rest of this analysis focuses on “windy”
areas, defined as those with yearly-average wind speeds at 100 m
≥7 m/s.
Fig. 4 shows the average gross capacity factor in January 2008
obtained with the REPower 5M wind turbine for all grid points 15
over windy land and windy shallow (≤200 m) waters only,
without considering land or water use restrictions. The figure was
obtained by masking out wind speeds lower than 7 m/s and then
overlapping the resulting map with wind power divided by the
rated power of the benchmark turbine (5000 kW). Areas with 20
high CF (>0.3) in Fig. 4 are the most economical for wind power
development over land. Aside from the mid-latitude areas in both
NH continents, noticeable is the vast area in the Sahara and Sahel
deserts with a CF~0.5.
As mentioned in the introduction, the horizontal resolution of 25
these simulations is not fine enough to properly resolve some
meso- and fine-scale features, such as steep topography or sudden
surface roughness or landuse horizontal variations, which can
cause localized high winds. This somewhat coarse resolution,
however, is likely to result in an under-estimate, rather than an 30
over-estimate, of wind speeds and wind power. For example, Fig.
4 shows little potential in Spain and Portugal, whereas both
countries have installed over 30 GW of wind capacity in 2010
alone [need ref].
3.2 The global wind power potential: top-down methods 35
The global wind power potential can be estimated in at least three
ways: from theoretical calculations, from observations, and from
numerical modeling. The first is a top-down approach, the others
are bottom-up.
40
Theoretical calculations rely on the basic equations of motion in
the atmosphere, but require the use of simplifying assumptions
(e.g., hydrostatic equilibrium, quasi-geostrophic balance,
horizontal homogeneity) and spatially- and temporally-averaged
values of physical variables (e.g., albedo, latent heat release, solar 45
radiation, surface roughness) to solve them. Because of these
limitations, the order of magnitude of these estimates, not their
exact values, should be considered valid at most.
A distinction must first be made between the kinetic energy of
the atmosphere (KE), measured either in units of joules (J, for the 50
entire Earth) or J/m2 (joules per square meter of Earth’s surface),
and the so-called KE dissipation rate D expressed either in units
of power (W) or power per unit area (W/m2), which represents
the rate at which kinetic energy naturally drains out of the
atmospheric motion field due to molecular viscous (or frictional) 55
processes, occurring both in the mean flow (~9.5%) and in the
unresolved scales from turbulent stresses (~90.5%)27.
Page 7 of 18 Energy & Environmental Science
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Fig. 4 Average wind turbine capacity factor in all seasons during 2007-2008 over land and offshore locations with yearly-average 100-m wind speed
>7 m/s (excluding both Polar regions) using the REPower 5 MW wind turbine from run 1.5x1.5. The turbine capacity factor shown does not account for
system efficiency losses, which are ~10-15%.
An expression for D is obtained by taking the scalar product of 5
the momentum equation with the velocity vector rv , then
integrating over the entire volume of the atmosphere V with
density ρ:
(2)
where rF is friction per unit mass in m/s2 [Holt28, p. 340], which 10
is expressed as ν∇2rv (or ν
∂2ui
∂x j
2 with the Einstein notation) for
incompressible flows, and ν is the air kinematic viscosity in m2/s.
Note that the volume integral in Eq. (2) can be calculated over
smaller volumes than the entire atmosphere, such as over a region
or in the wake of a turbine. When mechanical or thermal 15
Page 8 of 18Energy & Environmental Science
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turbulence is considered, then D is the sum of a mean ( ) and a
perturbation (D’) component as follows:
(3)
(4)
where ui indicates a mean and ′u
i a turbulent component of the 5
velocity vector and the bar indicates a time or an ensemble
average [Holt28, p. 340; Peixoto and Oort27, p. 376-377; AMS29].
Dividing Eqs. 2-4 by the Earth’s surface area gives D in units of
W/m2. Note that the term “dissipation rate” often refers to the
expressions inside the integral in Eq. 4 (without the air density) as 10
follows:
ε =ν∂ ′ui
∂x j
2
(5)
which has units of m2/s3 [AMS, 2000] and is always
parameterized in models.
Regardless of the formulation used, the KE dissipation rate D 15
is not a good proxy for wind speed or wind power because it is
either the product of wind speed and friction (Eq. 2 and 3) or the
square of turbulent stresses (Eq. 4). As such, knowing D alone is
not sufficient to reconstruct wind speed.
Whereas the atmosphere has a large reservoir of KE (~11.8 x 20
105 J/m2, Peixoto and Oort27, p. 385), the dissipative term D is
often negligible, except near the Earth’s surface, in regions of
strong wind shear (e.g., the jet streams and in convective clouds)
and of breaking gravity waves; it is also responsible for ocean
surface currents. Because the friction vector always points 25
opposite from the velocity vector, D is always negative (from Eq.
2) and therefore represents a sink, never a source, of KE.
Dissipation D ultimately converts KE to internal energy (IE) via
heating [Lorenz30, p.14]. Part of internal energy itself converts
back to potential energy (PE) through, for example, buoyant 30
convection, and gradients of PE reproduce KE. Treating energy
exchange in the atmosphere involves treating not only PE, KE,
and IE, but also solar and infrared radiation, latent heat,
conduction, and geothermal heat.
The ratio of natural KE dissipation D to the globally- and 35
annually-averaged downward solar radiation at the top of the
atmosphere (~350 W/m2) is the atmospheric efficiency30 η. This
efficiency represents the fraction of the incoming energy that is
fed into the atmosphere to maintain the global circulation against
dissipation. Lorenz30 estimated that η is at most 2% and thus D is 40
~7 W/m2 or 3600 TW for the whole Earth (assuming a surface
area of 5.12 x 1014 m2). King Hubbert31 later estimated a value of
D that was 10x lower: ~370 TW (~0.72 W/m2,) or η ~0.2%.
Subsequent studies indicated that this value was too low. Peixoto
and Oort27,32,33 estimated D ~1.88-2 W/m2, corresponding to 45
~962-1024 TW; Li et al.34 calculated D ~2.06-2.55 W/m2 from
global reanalyses (~1054-1306 TW); and Stacey and Davis35 used
the length of day variations to obtain an estimate for D of 434 TW
(~0.85 W/m2). Sorensen36 [p. 86] states that the few available
direct estimates of dissipation are 4-10 W/m2 (2000-5100 TW), 50
much higher than previous estimates, which are derived indirectly
to ensure consistency with estimates of sources of energy,
suggesting the dissipation is tuned, not calculated from first
principles. In summary, the literature indicates that even the order
of magnitude of dissipation is unclear, with possible values in the 55
450-3800 TW range.
Regardless of its exact value, the KE dissipation rate D is
relevant to wind energy because wind turbines locally increase
atmospheric KE dissipation D by increasing surface friction,
turbulent kinetic energy (TKE) dissipation, and direct conversion 60
to heat. First, just like any mountain, tree, building, or obstacle in
the path of wind, wind turbines increase surface roughness and
therefore increase via increased surface friction. Second,
some KE is converted to turbulent KE (TKE) in the wake (thus
increasing the TKE production term ′ui′u j
∂ui
∂x j
) and then some of 65
this TKE is converted to heat via molecular viscous effects (thus
increasing D’). Third, wind turbines also have another unique
dissipative effect: they force the atmosphere to perform work
(rotating the blades) to generate electricity and thus directly
remove KE from the wind flow (decreasing the wind speed). 70
Since electricity cannot be stored and is almost immediately
converted to heat added back to the atmosphere by end users
dispersed widely, wind turbines result in heat addition back to the
atmosphere over a larger area than a building or tree. The relative
magnitudes of these three effects are currently not known 75
precisely, but some initial parameterizations have been
proposed37.
The third effect, KE conversion to electricity, is at most equal
to 16/27 of the impinging KE (at the Betz limit). The remaining
KE (at least 11/27) is in part converted to TKE (as described 80
above) and in part remains in the mean flow since the mean wind
speed past a wind turbine is reduced but not zero. The exact
distribution of the remaining KE between mean flow and
turbulent wake past the turbine is not known, nor is the fraction
of TKE in the wake that is actually dissipated to heat via 85
molecular viscous processes. In summary, wind turbines can be
considered as converters of atmospheric KE to IE, some of which
is converted back to PE.
Whereas it is accepted that wind turbines increase KE
dissipation locally, the effect of wind turbines on the overall KE 90
dissipation of the atmosphere is yet to be understood. Several
studies suggest that the atmosphere will maintain its current
dissipation rate regardless of the number of obstacles, whether
buildings or wind turbines, that are added at the surface38,39,40,41.
The theoretical justification for this view is that the efficiency of 95
the atmosphere as a heat engine is already nearly maximized and
therefore no additional work can be performed by the atmosphere
given its IE (or thermal) inputs and outputs. This implies that, if
KE dissipation is increased at one location by adding a wind
turbine, KE dissipation must decrease equally somewhere else to 100
keep total dissipation constant. The only way to decrease KE
dissipation away from the turbine is to decrease wind speeds,
which was argued to occur not only in the wake but also at other
locations with simplified numerical simulations40,41. With this
approach, the natural KE dissipation rate D would represent the 105
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maximum theoretical limit to wind power extraction.
There are several inconsistencies with this view. First, if KE
dissipation and the thermal inputs and outputs of the atmosphere
remain constant, KE should also stay constant, whereas the
addition of wind turbines decreases KE and local wind speeds. 5
Second, KE cannot decrease without IE increasing (and vice
versa), but this conversion is not possible without increasing KE-
to-IE conversion (or decreasing IE-to-KE conversions), which
cannot happen if D is constant. Third, if 100% of the KE
dissipation were “extracted” via wind turbines, then the near-10
surface wind speeds would be zero everywhere except where the
turbines are. Instead, Young et al.42 found that observed near-
surface wind speeds have been increasing, not decreasing, over
the oceans during the past 20 years despite the addition of dozens
of gigawatts of installed wind power worldwide. These 15
inconsistencies suggest that another explanation is needed.
Other studies cite potential climate effects of extracting wind
energy. For example, Miller et al.41 claim that the climate effects
of extracting 18-68 TW of wind power are equivalent to doubling
carbon dioxide. However, their study first ignores the fact that 20
wind power results in no net additional heat to the air since it
replaces thermal power plants (coal, nuclear, natural gas), all of
which directly add the same or more heat to the air than wind
power directly through combustion or nuclear reaction. These
other sources, including nuclear, also add carbon dioxide during 25
the processing or use of their fuel, which wind energy does not
do. Second, even if wind turbines did not replace thermal power
plants, the actual heat resulting from converting 18-68 TW of
wind power to electricity, which then gets converted to heat, is
0.035�0.13 W/m2. The radiative heating due to doubling of CO2 30
is 3.7 W/m2, a factor of 28-106 higher. As such, even if 18-68
TW of wind power were extracted, it would affect temperatures
by 28-106 times less than doubling carbon dioxide, not by the
same amount. However, since wind displaces thermal power
plants, its net heat added to the atmosphere is effectively zero. 35
We propose here that KE dissipation is not constant for the
Earth. Any increase in the number of obstacles increases
dissipation, and any increase in KE dissipation causes an equal
increase in IE generation rate (via heat) and therefore a change in
the energy balance, but an overall conservation of energy. This is 40
consistent with KE dissipation being a transfer of energy from the
KE to the IE reservoir30. To compensate for this additional IE
generation, the atmosphere must therefore increase the transfer of
a portion of energy from the IE back to the KE reservoir, via an
increase in the Potential Energy (PE) generation first and then an 45
increase in the PE-to-KE conversion via adiabatic processes. At
equilibrium, this KE generation must offset KE dissipation43. KE
decreases initially when turbines are installed and the KE
dissipation rate is increased (output > input), consistent with
findings by Santa Maria and Jacobson44. At equilibrium, 50
however, this lower KE is maintained (output = input), and so is
the higher IE. As such, altering KE dissipation can feed back to
the Earth’s climate, albeit by an uncertain quantity. However, we
do know that the building of all cities and infrastructure for
human civilization to date have had little effect on global climate 55
through the change in the KE dissipation rate relative to changes
in evapotranspiration, albedo, and specific heat (e.g., the urban
heat island effect) and changes in precipitation due to urban areas.
If this proposed theory is correct, then is there an upper limit to
the human extraction rate of kinetic energy via wind turbines 60
such that significant impacts on the global circulation would not
occur? This value would be the limit to wind power extraction.
Archer and Caldeira14 showed with a modified climate model
(inclusive of KE dissipation to heat by idealized airborne wind
turbines scattered uniformly in the entire atmosphere) that, for 65
KE extraction of the same order of magnitude as human energy
consumption in 2005 (~18 TW, ~1% of natural D), climatic
effects are negligible; however, for KE extractions of 840 and
2010 TW (50 times and 100 times the current human energy
consumption, respectively, or 50% and 100% of natural D), 70
larger, non-linear changes to the climate can occur, such as cooler
surface temperatures and increased polar sea ice extent. Thus,
their findings support indirectly that an upper limit to additional
dissipation from wind turbines lies between 1% and 50% of the
current D. 75
Regardless of the actual maximum value of KE dissipation,
even if all human demand for energy were met with wind power,
the current KE dissipation would only be increased by ~1%, with
negligible climatic effects14. Also, because wind generation
would replace other larger sources of heat such as coal, natural 80
gas, or nuclear power plants, which were not accounted for by
Archer and Caldeira14, the net heat input is expected to be even
smaller and thus the climatic impact reduced43.
As discussed, the order of magnitude of the natural dissipation
rate of kinetic energy by winds is still under debate, with 85
estimates ranging from 450 to 3800 TW. Using 1200 TW as an
intermediate (~2.2 W/m2) and 10% as a intermediate between 1%
and 50% for the maximum additional KE dissipation by wind
turbines, an estimate of the theoretical maximum wind power
extractable with little climate impact is 0.10 x 1200 TW = 120 90
TW.
World end-use power demand in 2008 for all purposes was
approximately 12.5 TW and is expected to grow to 16.9 TW by
2030. Electrification and conversion to electrolytic hydrogen of
the transportation, energy, and industrial sectors would reduce 95
2030 end-use power demand to 11.5 TW1. Jacobson and
DeLucchi1 suggested a feasible target of 50 percent (5.75 TW) of
this power supplied by wind. Thus, if half the world’s power for
all purposes were to be supplied by wind, and assuming previous
literature estimates of world wind resources, only 0.1-1% of the 100
world’s all-wind-speed wind power at 100 m would be needed,
with negligible climatic impacts. In other words, the world wind
resource is 100-1000 times what the world needs in terms of wind
power.
3.3 The global wind power potential: bottom-up 105
methods
Whereas theoretical calculations represent a top-down approach
to the evaluation of the global wind power potential, observation-
and model-based estimates are bottom-up approaches in which
the total potential is determined from the combined output of 110
individual wind turbines scattered over the Earth.
All bottom-up methods share one common implicit
assumption: each additional wind turbine alters the atmospheric
circulation only within the wake volume downwind of the
turbine. Within this volume, wind speeds first decrease then 115
increase, eventually converging to the background wind speed.
Page 10 of 18Energy & Environmental Science
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As wind speeds first decrease within a wake, the vertical gradient
in wind speed increases, increasing the downward turbulent flux
of faster winds from aloft to hub height and decreasing the
downward turbulent flux of winds at hub height to the surface,
ultimately replenishing winds some distance downwind of each 5
turbine. Similarly, the horizontal pressure gradient force
continuously acts on the winds at a given height and contributes
to regenerating winds. Whether full regeneration in the wake
occurs depends on the distance between turbines in the direction
of the wind and on the pressure gradient force and the rate of 10
turbulent diffusion. In wind turbine arrays, additional interactions
between wakes can occur24, 45.
Fig. 5 shows evidence of wind regeneration in an array. The
data, from Frandsen24, indicate that, despite wind speed
reductions and incomplete regeneration past turbine rows 1 and 2, 15
wind speeds in subsequent turbine rows stayed constant or
increased compared with row 3. This could occur only with the
regeneration mechanisms discussed. The overall reduction in
wind speed between rows 1 and 7 is only ~8% with diameter
spacing of 6D between rows. This represents an array efficiency 20
of 92%. Similarly, Barthelmie et al.45 found that, after an initial
decrease in wind power output between the first and the second
row at two large offshore wind farms in Denmark, wind power
output in subsequent rows either stayed constant or slightly
increased. Greater spacing results in greater array efficiency [e.g., 25
Masters23].
Fig. 5 Measured ratio of wind speed at the given turbine row to that
at the first turbine row from Norrekoer Enge II wind farm for four cases
of initial upstream wind speed U (m/s). Wind speeds were derived from 30
power output from an average of six 300-kW turbines in each of seven
rows spaced 7D to 8D within rows and 6D between rows. The solid line is
the result of a wake model. Reproduced with permission from Frandsen24.
Fig. 5 and results from similar studies provide support for the
contention that turbine energy lost in a wake volume substantially 35
regenerate by the end of the wake for remaining turbines.
However, energy lost within the wake volume does reduce the
instantaneous total kinetic energy in the atmosphere. Santa Maria
and Jacobson44 quantified the net reduction in the globally-
averaged kinetic energy in the boundary layer due to wake-40
volume losses if the entire world’s energy supply were powered
by wind and found the total loss to be small. Their study did not
account for the conversion of electrical energy back to heat then
potential energy then kinetic energy again, which would make the
losses smaller, nor did it calculate the actual wake volumes, 45
which could be larger or smaller than assumed. Nevertheless,
even a factor of 100 underestimate of energy loss would not
change the conclusion that powering the entire world with wind
would not reduce beyond 1 percent the energy in the atmosphere.
This result justifies the use of the bottom-up method of summing 50
power output from individual wind farms to determine global
wind power potential.
Archer and Jacobson4 used a network of 446 sounding and
7753 surface stations to calculate the technical wind power
potential at 80 m above the ground over land and near-shore from 55
observations as ~72 TW. They estimated that ~13% of the global
land (excluding Antarctica but including near-shore ocean areas)
could be covered with wind turbines, with no landuse restrictions,
to extract this power. A spacing of 7D x 4D (D is the diameter of
the swept area, or twice the blade length) between 1.5 MW wind 60
turbines was assumed23 to account for the loss and regeneration
of winds in the wake volume downwind of each turbine. If 20-
40% of 72 TW could be extracted after landuse and other
restrictions were accounted for, the resulting practical wind
power from Archer and Jacobson4 would be 0.2-0.4 x 72 TW = 65
14.4-28.8 TW, much more than needed to power the world’s
energy for all purposes in 2030.
Hoogwijk et al.3 used the bottom-up method too with surface
observed wind speed data (interpolated onto a 0.5x0.5 degree
grid) and several landuse, altitude, and wind regime constraints to 70
estimate that 96 PWh could be extracted from winds at 69 m each
year over land (or ~11 TW) via turbines. This estimate of the
practical wind power potential is lower than the 14-28 TW
derived above from Archer and Jacobson4 due to their use of
empirical profiles rather than actual sounding data to provide 75
vertical profiles, their use of a lower hub height (69 vs. 80 m),
and lower density of wind turbines (4 vs. 9 MW/km2).
Wind observations can also be derived from satellite products.
For example, wind speeds derived from space-based
scatterometer on QuikSCAT (at 12.5 km horizontal resolution) 80
were used by Li et al.34 to evaluate the wind power distribution
over the ocean. However, no global wind power output at near-
shore locations were provided. Capps and Zender46 utilized 7
years of QuikSCAT 10-m wind speed data over the oceans (at
0.25ox0.25o horizontal resolution) and extrapolated them to 100 85
m using Monin-Obukhov similarity theory. With high-resolution
bathymetry data (one arc-minute), they calculated that up to 39
TW of wind power are available at shallow (≤ 200 m) offshore
locations worldwide, without including water-use restrictions.
Lu et al.5 used a new reanalysis dataset, the Goddard Earth 90
Observing System Data Assimilation System version 5 (GEOS-
5), at a horizontal resolution of 2/3º longitude by 1/2º latitude and
a time resolution of 6 hr, with 2.5 MW wind turbines over land
(excluding forested, urban, permanently ice covered, and inland
water regions) and 3.6 MW turbines deployed offshore 95
(excluding depths >200 m and distances from shore >93 km),
both with 100-m hub heights, to estimate the global technical
wind power potential as ~840 PWh, or 96 TW, over land and
near-shore areas with capacity factor greater than 20% and
accounting for exclusions over forested land and some other 100
types of land use. Without limiting the capacity factor, their
practical global potential (on- and off-shore) was 1300 PWh, or
148 TW. Because the GEOS-5 reanalyses include both model
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This journal is © The Royal Society of Chemistry [year] Journal Name, [year], [vol], 00–00 | 11
results (for meteorological fields, not wind power output) and
observations, this is both a model- and observation-based
estimate.
3.4 Seasonality and geographic distribution of the global wind power potential 5
Globally-integrated wind power is calculated here with a bottom-
up approach by summing the area-weighted hourly wind power in
all grid cells over land (excluding regions poleward of 66.56
degrees North and 60 South) that exhibited a yearly-average wind
speed at 100 m above ground greater than 7 m/s. The turbine 10
density is 106 m2/(7Dx4D)23,16 = 2.25 turbines/km2, where D is
the diameter of the REPower 5M turbine (126 m). This
corresponds to an installed capacity density of 11.25 MW/km2.
Wind turbines are assumed to affect circulation in their wake
volumes only, thus interactions among wakes are neglected. The 15
monthly totals for the three runs 4x5, 2x2.5, and 1.5x1.5 for the
later years of the simulations are shown in Fig. 6.
Fig. 6 Globally-integrated monthly wind power at 100 m above
ground over land (excluding polar regions and including system losses) in 20
locations where the mean wind speed exceeds 7 m/s for the three
simulations: 4x5, 2x2.5, and 1.5x1.5.
The results are quite remarkable. First, the three runs give very
similar results, generally varying within ±14.5% from one
another. As expected, the coarse-resolution run (4x4.5) gives 25
slightly lower wind power than both the intermediate (2x2.5) and
the fine (1.5x1.5) resolution runs (-6% and -5% respectively),
which are very similar to one another (~6% difference on
average). Because of this similarity, the fine-resolution run was
stopped in December 2008, due to its high computer time and 30
storage requirements. As such, the intermediate-resolution run
(2x2.5) will be used as the benchmark for further analyses in the
rest of this paper.
Second, wind energy at the global scale is neither constant
throughout the seasons, as one might expect from the 35
complementarity of the seasons in the two hemispheres, nor bi-
modal, as the generally-stronger winter winds in both
hemispheres might suggest. The monthly pattern of wind power
over land is dominated by the seasons in the Northern
Hemisphere (NH), with maxima in DJF and minima in 40
September. Global wind power over land during the NH winter
(DJF) is ~2x greater than that during the NH summer (JJA),
consistent with the higher intensity of the NH energy cycle in
January than in July observed by Oort and Peixoto32 [p. 2715].
Furthermore, Fig. 7 shows that wind power over land in the 45
NH (114 TW on average, dark green shade) is about 2x greater
than that in the SH (60 TW on average, light green shade) on
average, and up to 7x during the NH winter, even when
Antarctica is included in the SH land. This can be explained by
the difference in the land areas of the two hemispheres, because 50
the land area in the NH is ~2.5x the land area in the SH. If both
polar regions are excluded, then the ratio of wind power over
windy land in the NH to that in the SH is >5 on average (107 vs.
19 TW), reaching >10 in December (185 vs. 17 TW). This is
because the area of windy land in the NH is ~5 times larger than 55
that in the SH (30,632,880 vs. 6,704,187 km2) if the polar regions
are excluded.
Fig. 7 Stacked-area plot of total wind power from areas with yearly-60
average wind speed >7 m/s over land and over ocean in the Northern and
Southern hemispheres (NH and SH respectively), including the polar
regions and including system losses. Total wind power from all areas with
monthly-average wind speed >0 m/s is shown with a black solid line. The
total wind power over ocean is purely hypothetical and is only shown for 65
comparison purposes.
Further insights into the wind power resources over land in the
two hemispheres can be provided by area-averaged wind speeds.
Fig. 8 shows that area-averaged monthly 100-m wind speeds over
land (excluding regions poleward of 60 degrees North and South) 70
are higher in the NH (6.25 m/s) than in the SH (5.40 m/s). The
opposite is true over the oceans (at all latitudes), where winds
speeds are higher in the SH (8.79 m/s) than in the NH (6.53 m/s).
This suggests that the two hemispheres have different wind
resources. The SH is generally more energetic (average wind 75
speed is 7.91 m/s in the SH and 6.35 m/s in the NH) and its
seasonal cycles are driven by the oceans. The latter is due to the
large fraction of SH covered by oceans (78%), and the former is
due to a combination of two factors: first, the lower surface
roughness of the ocean compared to that of land, and, second, the 80
absence of any land barrier to the westerly winds around
Antarctica causes the highest wind speeds on the planet to be
observed in the Southern Ocean. On the other hand, 60% of the
NH is covered by land, thus it is generally less energetic than the
SH, but its wind speed over land is higher than in the SH. 85
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Fig. 8 Area-averaged 100-m wind speed from run 2x2.5 over land
(excluding polar regions) and over oceans in each hemisphere and
globally.
In order to put the wind power estimates over land in context, 5
Fig. 7 also shows the wind power over the oceans in both
hemispheres from run 2x2.5, calculated with the same wind
power curve used over land (Fig. 1) at grid cells with monthly-
average wind speeds ≥7 m/s. These ocean totals are hypothetical
and do not represent a feasible near-term potential due to the 10
great distance from shore of most locations and the current
difficulty of installing turbines in deep water or on floating
platforms.
The wind power resource at wind speeds ≥ 7 m/s over the
oceans is ~6x larger than that over land on average (1010 TW vs. 15
174 TW). Whereas wind power over land is higher in the NH
than in the SH (114 vs 60 TW), the opposite is true for wind
power over the oceans: 751 TW in the SH and 255 TW in the NH
on average (~3x), and up to 7x at most.
Because Fig. 7 is a stacked-area plot, the global wind power 20
potential, defined as the wind power from land and ocean areas in
both hemispheres with monthly-average 100-m wind speed ≥7
m/s, is given by the total shaded area, including all colors. On
average, it is ~1180 TW. This global wind power at high speeds
is not constant throughout a year, but it is the result of the wind 25
power cycles over land (dominated by the NH) and over oceans
(dominated by the SH). Because the SH oceans represent the
largest fraction, the global wind power is generally higher during
the NH summer. At the end of the NH summer, winds over the
SH decrease faster than the increase in NH winds, and therefore it 30
is during the NH fall that the global wind power resource is at its
lowest.
If wind power were harnessed hypothetically at all grid points,
including the remote oceans, the coastal areas, the polar regions,
and at all wind speeds, then another ~370 TW would be added to 35
the previous total, to give an average of ~1550 TW (black line in
Fig. 7). This number represents an estimate of the global wind
power at all wind speeds over land and ocean, accounting for
transmission, distribution, and array losses from typical wind
farms. In reality, most of the ocean power is not readily 40
accessible. The wind power over land and ocean at all wind
speeds are 320 TW and 1220 TW, respectively. Thus, the wind
power at wind speeds ≥ 7 m/s is approximately 53%, 82%, and
76% of the wind power at all speeds over land, ocean, and
globally, respectively. 45
3.5 On- and off-shore wind power resources by regions
Bathymetry data48 at 0.0167 degree resolution and MODIS-
derived land use data at 0.01 degree resolution were used to
calculate on- and off-shore wind power potentials (without land-
and water-use restrictions) for each of the 19 IPCC regions shown 50
in Fig. 9, in which grid cells with bathymetry <200 m are shaded
in gray.
Fig. 9 Map of the 19 regions used in this study and location of
offshore grid points (shaded in grey) with bathymetry <200 m and soil 55
fraction ≥1% from run 1.5x1.5 (excluding both Polar regions). Only a
subset of these offshore locations have yearly-average 100-m wind speeds
>7 m/s.
The DJF, JJA, and annual on- and off-shore averages from run
1.5x1.5 during 2007-2008, from areas with annual 100-m wind 60
speeds greater than 7 m/s and including system losses, are
summarized in Table 2. Minor inconsistencies between the values
in Table 2 and those in the rest of the paper are due to the
remapping of the region definition data to the model grid. To our
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This journal is © The Royal Society of Chemistry [year] Journal Name, [year], [vol], 00–00 | 13
knowledge, this is the first comprehensive table of such wind
potentials obtained with the same model for on- and off-shore
resources. Since not even the finest run 1.5x1.5 can resolve well
the sharp thermal contrast between ocean and land along
coastlines, our maps may be missing some narrow windy offshore 5
locations, such as along the California coast13,12,11. Because of
this lack of resolution, the actual wind resources may be higher
than in Table 2.
Our results are consistent with those by Greenblatt49, with the
Americas and Europe offering the largest offshore potentials and 10
Africa/Middle East the lowest. Our findings show a greater
resource than that found by Greenblatt49 in North America (1.39
vs 1.26 TW), Africa/Middle East (0.54 vs 0.21 TW), and Oceania
(0.82 vs 0.58 TW), but lower resources in Europe (1.02 vs. 1.36
TW) and Asia (0.63 vs 0.94 TW). Because of differences in 15
region definitions, the abundant resource in Regions 11 and 18,
missing in Greenblatt49, and other differences in the calculations
of the capacity factors, the global offshore potential in this study,
excluding polar regions, is 9.2 TW, about a factor of 2 greater
than that in Greenblatt49, 5.63 TW. 20
NREL47 calculated an annual-average wind power over land in
the US with gross CF>30% of 7.39 TW if conflicting landuses
are not excluded (5.35 TW if excluded). Since NREL assumed an
installed nameplate capacity of 5 MW/km2, a factor of 2.25 lower
than that in this study (11.25 MW/km2), which is based on a 5-25
MW turbine with a D=126-m rotor and spacing of 4Dx7D, our
estimated 14.17 TW is consistent with NREL’s estimate when
their assumption of low turbine spacing is accounted for. In
practice, wind farms with both coarse and fine spacing exist
worldwide. 30
For offshore wind in the US, our estimate of 0.83 TW (Table
2) is very close to the high-resolution model studies for the west
coast (up to 0.1 TW before exclusions)12 and east coast (up to
0.25 TW before exclusions) by Dvorak et al.51, which were both
evaluated heavily against data. Those studies assumed spacing of 35
10D x 10D. Converting that spacing to the spacing assumed here
(7D x 4D) gives their total potential as ~1.25 TW.
Table 2 Wind power potential over windy land (mean annual wind speed at 100 m ≥ 7 m/s) and offshore by region and season (in TW) from run
1.5x1.5 in 2007-2008, including system losses. 40
Region n. Region name DJF JJA Year
Windy land Offshore Total Windy land Offshore Total Windy land Offshore Total
1 Canada 13.08 0.85 13.94 2.13 0.23 2.36 7.67 0.56 8.23
2 USA 20.93 1.24 22.17 7.21 0.35 7.55 14.17 0.83 15.00
3 Central America 0.67 0.17 0.84 0.29 0.07 0.36 0.46 0.12 0.58
4 South America 3.98 0.89 4.88 7.46 1.60 9.05 5.47 1.16 6.64
5 Northern Africa 15.66 0.40 16.06 12.00 0.35 12.36 13.81 0.36 14.17
6 Western Africa 24.39 0.13 24.52 14.91 0.07 14.97 18.40 0.10 18.50
7 Eastern Africa 10.20 0.03 10.23 10.38 0.04 10.42 8.99 0.03 9.01
8 Southern Africa 1.27 <0.01 1.27 2.35 <0.01 2.35 1.67 <0.01 1.67
9 OECD Europe 6.57 1.73 8.31 1.30 0.33 1.63 3.69 1.02 4.71
10 Eastern Europe 2.72 <0.01 2.72 0.68 0.00 0.68 1.55 <0.01 1.55
11 Former USSR 34.15 3.11 37.27 11.56 1.13 12.69 22.14 2.22 24.36
12 Middle East 1.04 0.06 1.10 0.84 0.08 0.93 0.89 0.06 0.95
13 South Asia 2.99 0.11 3.11 3.12 0.15 3.27 2.77 0.11 2.88
14 East Asia 28.87 0.72 29.59 10.91 0.25 11.16 18.71 0.51 19.22
15 Southeast Asia 1.41 0.02 1.43 0.27 0.00 0.27 0.85 0.01 0.86
16 Oceania 16.29 0.86 17.16 16.91 0.88 17.79 16.39 0.82 17.22
17 Japan <0.01 <0.01 <0.01 <0.01 <0.01 <0.01 <0.01 <0.01 <0.01
18 Greenland 5.95 0.14 6.08 1.71 0.05 1.76 3.79 0.09 3.88
19 Antarctica 32.97 1.40 34.37 60.06 1.94 62.01 45.84 1.62 47.46
World 224.0 13.97 238.0 164.7 8.70 173.4 187.9 11.30 199.2
World (no polar regions) 183.9 11.7 195.5 102.5 6.43 108.9 137.5 9.02 146.5
4. Validation
Fig. 10 compares the modeled 2006 15-m wind speed at 2x2.5
degree resolution with 10-m Quikscat data at 1.5x1.5 degree
resolution over the ocean for the same year. Despite the coarser 45
resolution of the model and the slightly different height (15 vs. 10
m above ground), the comparison indicates general qualitative
agreement, especially in the regions of the strongest winds. The
model matched the magnitude and location of the “roaring 40s”
in the Southern Hemisphere (SH) and locations of the Northern-50
Hemisphere (NH) midlatitude westerlies. The magnitudes of the
westerlies were slightly underpredicted, suggesting that wind
power estimates over the ocean there could be slightly
underpredicted. The model also generally underestimated wind
speeds along the tropics, in the middle latitudes in both 55
hemispheres, and along some coastal regions (north-eastern
South America, western Africa, southeast Asia, off the coast of
Somalia). It is therefore unlikely that the modeled wind speed
magnitudes here are overpredicted relative to the data. As such,
our wind power estimates may be conservative. 60
(a)
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(b)
Fig. 10 Modeled 2006 15-m wind speed at 2x2.5 degree resolution (a)
versus Quikscat 10-m data at 1.5x1.5 degree resolution (b) for the same
year.
Modeled wind speeds at the lowest vertical level (15 m) were
also compared with observations at the lowest available vertical 5
level (10 m) at all sounding stations worldwide (Table 3), a total
of about 600 stations. Because the lowest model level (~15 m)
was above the level of the observations, the bias was generally
positive, for both the medium- and the high-resolution runs. Bias
and Normalized Gross Error (NGE) were both lower in the high-10
resolution run for all months in 2008, the most recent complete
year of high-resolution model results. This confirms that more
accurate results can be obtained by running the model at finer
resolutions. The months with the lowest NGEs were MAM, and
those with the highest NGEs were DJF. The average bias for the 15
2x2.5 (1.5x1.5) run was 0.32 (0.14) m/s and the average NGE
was 61% (59%).
Table 3 Statistical evaluation of modeled 15-m wind speed (runs 2x2.5 and 1.5x1.5) versus 10-m observed wind speed at all sounding locations
worldwide (with at least 10 valid readings per month) in 2008. 20
N. of
sites
Average
(m/s)
Standard deviation
(m/s)
Bias
(m/s)
RMSE
(m/s)
NGE
Obs
(10 m)
2x2.5
(15 m)
1.5x1.5
(15 m)
Obs
(10 m)
2x2.5
(15 m)
1.5x1.5
(15 m)
2x2.5 1.5x1.5 2x2.5 1.5x1.5 2x2.5 1.5x1.5
January 653 3.58 4.06 3.93 1.99 1.50 1.45 0.48 0.34 1.95 1.96 0.76 0.73
February 653 3.57 3.99 3.71 2.03 1.44 1.27 0.42 0.14 1.90 1.84 0.71 0.62
March 639 3.63 3.95 3.66 1.93 1.45 1.35 0.32 0.03 1.61 1.57 0.52 0.48
April 623 3.55 3.74 3.56 1.85 1.36 1.24 0.19 0.01 1.53 1.56 0.48 0.47
May 629 3.38 3.61 3.39 1.67 1.37 1.38 0.22 0.01 1.42 1.51 0.50 0.51
June 619 3.32 3.53 3.25 1.71 1.51 1.48 0.21 -0.08 1.54 1.59 0.52 0.53
July 598 3.24 3.49 3.37 1.72 1.57 1.51 0.25 0.14 1.65 1.66 0.56 0.55
August 618 3.21 3.46 3.29 1.68 1.49 1.46 0.24 0.08 1.48 1.55 0.55 0.54
September 634 3.18 3.42 3.26 1.74 1.36 1.38 0.24 0.08 1.41 1.43 0.60 0.56
October 646 3.30 3.67 3.48 1.95 1.38 1.32 0.37 0.18 1.60 1.66 0.74 0.72
November 655 3.38 3.79 3.78 1.89 1.38 1.40 0.41 0.40 1.65 1.78 0.69 0.72
December 656 3.45 3.96 3.85 1.86 1.38 1.41 0.51 0.40 1.80 1.87 0.72 0.69
The geographic distribution of model versus observed wind
speeds at the lowest available levels (15 m and 10 m respectively)
is shown in Fig. 11 for the month with the lowest (a, May) and
the highest (b, November) bias for run 1.5x1.5. The model 25
slightly underpredicted wind speeds at most places, but exhibited
a larger bias at a few specific locations, such as India and eastern
China, thus causing the overall bias to be slightly positive.
Overall, the model results are satisfactory both qualitatively
(from Quickscat) and quantitatively (from sounding data). 30
(a)
Page 15 of 18 Energy & Environmental Science
This journal is © The Royal Society of Chemistry [year] Journal Name, [year], [vol], 00–00 | 15
(b)
Fig. 11 Observed 10-m wind speed at sounding locations worldwide (filled circles) and simulated 15-m wind speed from run feb06 (filled contours) in
2008 for the month with the (a) best and (b) worst bias (see Table 3 for the other months).
5. Implications and conclusions
The wind resource analysis here suggests that world power in
fast-wind locations (≥ 7 m/s in the annual average at 100 m above 5
the topographical surface) over land and near shore, outside of
polar areas, could theoretically supply all energy worldwide in
2030 (11.5 TW), converted to electricity and electrolytic
hydrogen, 6-10 times over, or 50% of energy 12-28 times over.
Providing half the world’s energy needs in 2030 from wind 10
would consume <0.5% of the world’s wind power at 100 m,
hardly affecting total power in the atmosphere. Practical barriers
exist to realize this potential, including transmission, zoning, and
political issues. Nevertheless, resource analysis is an important
step in determining the optimal locations for wind farms, as it 15
provides information for planning the efficient placement of wind
farms and necessary transmission infrastructure.
In addition to the above, important findings of this paper are as
follows:
- The global technical wind power potential, defined as the 20
fraction of the theoretical wind power potential deliverable
from 100-m winds over windy land and windy near-shore
areas outside of the polar areas, including system losses but
not including land and water use restrictions, is about 110-
120 TW. 25
- The global technical wind power potential is not constant but
varies significantly with season and hemisphere. During DJF
(JJA), the global wind resource is ~160 (80) TW. The NH
wind potential is over five times higher than that in the SH on
average (107 vs. 17 TW); in December, the NH wind power 30
over land is up to 10 times greater than that in the SH.
- The near offshore (< 200 m water depth) technical wind power
potential is ~9 TW at 100 m, varying between 6 and 12 TW
from JJA to DJF. Offshore potential would increase
significantly with the large-scale development of floating 35
wind turbines that would allow access to wind in deeper
water.
- The theoretical wind power over all land and ocean worldwide
at all wind speeds, considering transmission, distribution, and
array losses for typical wind farms, is ~1500 TW. 40
- High-wind locations, defined as over-land and near-shore areas
outside of polar regions with yearly-average wind speeds at
100 m ≥ 7 m/s, are ubiquitous, covering ~30% of all land and
near-shore areas outside of polar regions.
Finally, we propose here that the addition of wind turbines (or 45
other obstacles) increases kinetic energy (KE) dissipation in the
atmosphere, rather than competing with natural processes to
maintain KE dissipation constant, as has previously been
assumed. Conservation of energy requires that the lost KE
convert to internal energy (IE). An increase in IE creates 50
buoyancy, causing air to rise and some IE to transfer to potential
energy (PE). An increase in PE increases the PE-to-KE
conversion rate via adiabatic processes. In equilibrium the total
KE of the atmosphere is lower with wind turbines than without,
whereas IE, PE, and KE dissipation (=generation) rates are higher 55
than prior to the addition of wind turbines. An energy-conserving
climate model, inclusive of a parameterization of the conversion
of KE to IE via heat due to wind turbines and of the consequent
IE-to-PE-to-KE conversions, is needed to understand fully the
complex interactions between winds and the Earth climate and 60
energy systems.
6. Acknowledgements
We would like to thank Mike Dvorak and Dan Whitt for
extracting the Quikscat data for this study. Simulations for this
study were performed on the NASA High-End Computing 65
Program. Dr. Archer conducted most of the work for this paper as
an assistant professor at California State University, Chico. This
work was supported by U.S. Environmental Protection Agency
Page 16 of 18Energy & Environmental Science
16 | Journal Name, [year], [vol], 00–00 This journal is © The Royal Society of Chemistry [year]
grant RD-83337101-O, NASA grant NX07AN25G, and the
National Science Foundation.
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