Wind Power Forecasting
A wind power forecast corresponds to an estimate of the
expected production of one or more wind turbines (referred to as a wind
farm) in the near future. By production is often meant available power
for wind farm considered (with units kW or MW depending on the wind
farm nominal capacity). Forecasts can also be expressed in terms of
energy, by integrating power production over each time interval.
Forecasting of the wind power generation may be considered at different
time scales, depending on the intended application:
• from milliseconds up to a few minutes, forecasts can be used for
the turbine active control. Such type of forecasts are usually referred
to as very short-term forecasts
• for the following 48-72 hours, forecasts are needed for the power
system management or energy trading. They may serve for deciding on the
use of conventional power plants (unit commitment) and for the
optimization of the scheduling of these plants (economic dispatch).
Regarding the trading application, bids are usually required during the
morning of day d for day d+1 from midnight to midnight. These forecasts
are called short-term forecasts
• for longer time scales (up to 5-7 days ahead), forecasts may be
considered for planning the maintenance of wind farms, or conventional
power plants or transmission lines. For the specific case of offshore
wind farms maintenance costs may be prohibitive, and thus an optimal
planning of maintenance operations is of particular importance.
For the last two possibilities, the temporal resolution of wind power
predictions ranges between 10 minutes and few hours (depending on the
forecast length). Lately, most of the works for improving wind power
forecasting solutions have focused on using more and more data as input
to the models involved, or alternatively on the providing of reliable
uncertainty estimates along with the traditionally provided predictions.
Reason for wind power forecasts
In the electricity grid at any moment balance must be maintained
between electricity consumption and generation - otherwise disturbances
in power quality or supply may occur. Wind generation is a direct
function of wind speed and, in contrast to conventional generation
systems, is not easily dispatchable. Fluctuations of wind generation
thus receive a great amount of attention. Variability of wind
generation can be regarded at various time scales. First, wind power
production is subject to seasonal variations, i.e. it may be higher in
winter in Northern Europe due to low-pressure meteorological systems or
it may be higher in summer in the Mediterranean regions owing to strong
summer breezes. There are also diurnal cycles, which may be substantial
or not, mainly due to thermal effects. Finally, fluctuations are
observed at the very short-term scale (at the minute or intra-minute
scale). The variations are not of the same order for these three
different timescales. Managing the variability of wind generation is
the key aspect associated to the optimal integration of that renewable
energy into electricity grids.
The challenges to face when wind generation is injected in a power
system depend on the share of that renewable energy. It is a basic
concept, the wind penetration which allows one to describe the share of
wind generation in the electricity mix of a given power system. For
Denmark, which is one of the country with the highest share of wind
power in the electricity mix, the average wind power penetration over
the year is of 16-20% (meaning that 16-20% of the electricity
consumption is met wind energy), while the instantaneous penetration
(that is, the instantaneous wind power production compared to the
consumption to be met at a given time) may be above 100%!
The Transmission System Operator
(TSO) is responsible for managing the electricity balance on the grid:
at any time, electricity production has to match consumption.
Therefore, the use of production means is scheduled in advance in order
to respond to load profiles. The load corresponds to the total
electricity consumption over the area of interest. Load profiles are
usually given by load forecasts which are of high accuracy. For making
up the daily schedule, TSOs may consider their own power production
means, if they have any, and/or they can purchase power generation from
Independent Power Producers (IPPs) and utilities,
via bilateral contracts or electricity pools. In the context of
deregulation, more and more players appear on the market, thus breaking
the traditional situation of vertically-integrated utilities with quasi
local monopolies. Two main mechanisms compose electricity markets. The
first one is the spot market where participants propose quantities of
energy for the following day at a given production cost. An auction
system permits to settle the electricity spot price for the various
periods depending on the different bids. The second mechanism is the
balancing of power generation, which is coordinated by the TSO.
Depending on the energy lacks and surplus (e.g. due to power plant
failures or to intermittence in the case of wind power installations),
the TSO determines the penalties that will be paid by IPPs who missed
in their obligations. In some cases, an intra-day market is also
present, in order to take corrective actions.
In order to illustrate this electricity market mechanism, let us consider the Dutch electricity market.
Market participants, referred to as Program Responsible Parties (PRPs),
submit their price-quantity bids before 11am for the delivery period
covering the following day from midnight to midnight. The Program Time
Unit (PTU) on the balancing market is of 15 minutes. Balancing of the
15-minute averaged power is required from all electrical producers and
consumers connected to the grid, who for this purpose may be organised
in sub-sets. Since these sub-sets are referred to as Programmes,
balancing on the 15-minute scale is referred to as Programme Balance.
Programme Balance now is maintained by using the production schedules
issued the day before delivery and measurement reports (distributed the
day after delivery). When the measured power is not equal to the
scheduled power, there is so-called Programme Imbalance:
Programme Imbalance
is
Realised sum of production and consumption
minus
Forecasted sum of production and consumption.
Programme Imbalance is settled by the System Operator, with
different tariffs for negative Programme Imbalance and positive
Programme Imbalance. What therefore counts is the absolute value of the
Programme Imbalance.
If only production from wind energy is taken into account, Programme Imbalance reduces to:
Programme imbalance by wind energy
is
Realised wind production
minus
Forecasted wind production.
In the case of a positive Programme Imbalance by wind energy the
realised wind production is bigger than the forecasted wind production.
And vice versa, in the case of a negative Programme Imbalance by wind
energy.
If all other strategies to control Programme Imbalance are not considered, Programme Imbalance due to wind energy boils down to:
Programme imbalance by wind energy
is
Wind production forecast error.
Note that the costs for positive and negative imbalances may be
asymmetric, depending on the balancing market mechanism. In general,
wind power producers are penalized by such market system since a great
part of their production may be subject to penalties.
In parallel to be used for market participation, wind power
forecasts may be used for the optimal combined operation of wind and
conventional generation, wind and hydro-power generation, or wind in
combination with some energy storage devices. They also serve as a
basis for quantifying the reserve needs for compensating the eventual
lacks of wind production.
General methodology
There exists today a wealth of methods for short-term prediction of
wind generation. The simplest ones are based on climatology or averages
of past production values. They may be considered as reference
forecasting methods since they are easy to implement, as well as
benchmark when evaluating more advanced approaches. The most popular of
these reference methods is certainly persistence. This naive
predictor — commonly referred to as ‘what you see is what you get’ —
states that the future wind generation will be the same as the last
measured value. Despite its apparent simplicity, this naive method
might be hard to beat for look-ahead times up to 4-6 hours ahead
Advanced approaches for short-term wind power forecasting
necessitate predictions of meteorological variables as input. Then,
they differ in the way predictions of meteorological variables are
converted to predictions of wind power production, through the
so-called power curve. Such advanced methods are traditionally
divided into two groups. The first group, referred to as physical
approach, focuses on the description of the wind flow around and inside
the wind farm, and use the manufacturer's power curve, for proposing an
estimation of the wind power output. In parallel the second group,
referred to as statistical approach, concentrates on capturing the
relation between meteorological predictions (and possibly historical
measurements) and power output through statistical models whose
parameters have to be estimated from data, without making any
assumption on the physical phenomena.
Prediction of meteorological variables
Wind power generation is directly linked to weather conditions and
thus the first aspect of wind power forecasting is the prediction of
future values of the necessary weather variables at the level of the
wind farm. This is done by using Numerical Weather Prediction (NWP)
models. Such models are based on equations governing the motions and
forces affecting motion of fluids. From the knowledge of the actual
state of the atmosphere, the system of equations allows to estimate
what the evolution of state variables, e.g. temperature, velocity,
humidity and pressure, will be at a series of grid points. The
meteorological variables that are needed as input for wind power
prediction obviously include wind speed and direction, but also
possibly temperature, pressure and humidity. The distance between grid
points is called the spatial resolution of the NWPs. The mesh typically
has spacing that varies between few kilometers and up to 50 kilometers
for mesoscale models. Regarding the time axis, the forecast length of
most of the operational models today is between 48 and 172 hours ahead,
which is in adequacy with the requirements for the wind power
application. The temporal resolution is usually between 1 and 3 hours.
NWP models impose their temporal resolution to short-term wind power
forecasting methods since they are used as a direct input.
Predictions of meteorological variables are provided by
meteorological institutes. Meteorologists employ atmospheric models for
weather forecasts on short and medium term periods. An atmospheric
model is a numerical approximation of the physical description of the
state of the atmosphere in the near future, and usually is run on a
supercomputer. Each computation starts with initial conditions
originating from recent measurements. The output consists of the
expected average value of physical quantities at various vertical
levels in a horizontal grid and stepping in time up to several hours
after initiation. There are several reasons why atmospheric models only
approximate reality. First of all, not all relevant atmospheric
processes are included in the model. Also, the initial conditions may
contain errors (which in a worse case propagate), and the output is
only available for discrete points in space (horizontal as well as
vertical) and time. Finally, the initial conditions age with time -
they are already old when the computation starts let alone when the
output is published. Predictions of meteorological variables are issued
several times per day (commonly between 2 and 4 times per day), and are
available few hours after the beginning of the forecast period. This is
because some time is needed for acquiring and analyzing the wealth of
measurements used as input to NWP models, then run the model and check
and distribute the output forecast series. This gap is a blind spot in
the forecasts from an atmospheric model. As an example in the
Netherlands, KNMI publishes 4 times per day expected values of wind
speed, wind direction, temperature and pressure for the period the
between 0 and 48 hours after initialization of the atmospheric model
Hirlam with measured data, and then the period before forecast delivery
is of 4 hours.
Many different atmospheric models are available, ranging from
academic research tools to fully operational instruments. Besides for
the very nature of the model (physical processes or numerical schemes)
there are some clear distinctive differences between them: time domain
(from several hours to 6 days ahead), area (several 10.000 km² to an
area covering half the planet), horizontal resolution (1 km to 100 km)
and temporal resolution (1 hour to several hours).
One of the atmospheric models is the High Resolution Limited Area
Model, abbreviated HiRLAM, which is frequently used in Europe. HiRLAM
comes in many versions, that’s why it is better to speak about "a"
HiRLAM rather than "the" HiRLAM. Each version is maintained by a
national institute such as the Dutch KNMI, the Danish DMI or Finnish
FMI. And each institute has several versions under her wing, divided
into categories such as: operational, pre-operational, semi operational
and for research purposes.
Other atmospheric models are UKMO in the UK, Lokalmodell in Germany,
Alladin in France (Alladin and Lokalmodell are also used by some other
country’s within Europe), and MM5 in the USA.
Physical approach to wind power forecasting
Meteorological forecasts are given at specific nodes of a grid
covering an area. Since wind farms are not situated on these nodes, it
is then needed to extrapolate these forecasts at the desired location
and at turbine hub height. Physical-based forecasting methods consist
of several sub-models which altogether deliver the translation from the
wind forecast at a certain grid point and model level, to power
forecast at the site considered. Every sub-model contains the
mathematical description of the physical processes relevant to the
translation. Knowledge of all relevant processes is therefore crucial
when developing a purely physical prediction method (such as the early
versions of the Danish Prediktor). The core idea of physical approaches
is to refine the NWPs by using physical considerations about the
terrain such as the roughness, orography and obstacles, and by modeling
the local wind profile possibly accounting for atmospheric stability.
The two main alternatives to do so are: (i) to combine the
modeling of the wind profile (with a logarithmic assumption in most of
the cases) and the geostrophic drag law for obtaining surface winds; (ii)
to use a CFD (Computational Fluid Dynamics) code that allows one to
accurately compute the wind field that the farm will see, considering a
full description of the terrain.
When the wind at the level of the wind farm and at hub height is
known, the second step consists in converting wind speed to power.
Usually, that task is carried out with theoretical power curves.
However, since several studies have shown the interest of using
empirically derived power curve instead of theoretical ones,
theoretical power curves are less and less considered. When applying a
physical methodology, the modeling of the function which gives the wind
generation from NWPs at given locations around the wind farm is done
once for all. Then, the estimated transfer function is consequently
applied to the available weather predictions at a given moment. In
order to account for systematic forecasting errors that may be due to
the NWP model or to their modeling approach, physical modelers often
integrate Model Output Statistics (MOS) for post-processing power
forecasts.
Statistical approach to wind power forecasting
Statistical prediction methods are based on one or several models
that establish the relation between historical values of power, as well
as historical and forecast values of meteorological variables, and wind
power measurements. The physical phenomena are not decomposed and
accounted for, even if expertise of the problem is crucial for choosing
the right meteorological variables and designing suitable models. Model
parameters are estimated from a set of past available data, and they
are regularly updated during online operation by accounting for any
newly available information (i.e. meteorological forecasts and power
measurements).
Statistical models include linear and non-linear models, but also
structural and black-box types of models. Structural models rely on the
analyst’s expertise on the phenomenon of interest while black-box
models require little subject-matter knowledge and are constructed from
data in a fairly mechanical way. Concerning wind power forecasting,
structural models would be those that include a modeling of the diurnal
wind speed variations, or an explicit function of meteorological
variable predictions. Black-box models include most of the
artificial-intelligence-based models such as Neural-Networks (NNs) and
Support Vector Machines (SVMs). However, some models are ‘in-between’
the two extremes of being completely black-box or structural. This is
the case of expert systems, which learn from experience (from a
dataset), and for which prior knowledge can be injected. We then talk
about grey-box modeling. Statistical models are usually composed by an
autoregressive part, for seizing the persistent behavior of the wind,
and by a ‘meteorological’ part, which consists in the nonlinear
transformation of meteorological variable forecasts. The autoregressive
part permits to significantly enhance forecast accuracy for horizons up
to 6-10 hours ahead, i.e. over a period during which the sole use of
meteorological forecast information may not be sufficient for
outperforming persistence.
Today, major developments of statistical approaches to wind power
prediction concentrate on the use of multiple meteorological forecasts
(from different meteorological offices) as input and forecast
combination, as well as on the optimal use of spatially distributed
measurement data for prediction error correction, or alternatively for
issuing warnings on potentially large uncertainty.
Uncertainty of wind power forecasts
Predictions of wind power output are traditionally provided in the
form of point forecasts, i.e. a single value for each look-ahead time,
which corresponds to the expectation or most-likely outcome. They have
the advantage of being easily understandable because this single value
is expected to tell everything about future power generation. Today, a
major part of the research efforts on wind power forecasting still
focuses on point prediction only, with the aim of assimilating more and
more observations in the models or refining the resolution of physical
models for better representing wind fields at the very local scale for
instance. These efforts may lead to a significant decrease of the level
of prediction error.
However, even by better understanding and modeling both the
meteorological and power conversion processes, there will always be an
inherent and irreducible uncertainty in every prediction. This
epistemic uncertainty corresponds to the incomplete knowledge one has
of the processes that influence future events. Therefore, in complement
to point forecasts of wind generation for the coming hours or days, of
major importance is to provide means for assessing online the accuracy
of these predictions. In practice today, uncertainty is expressed in
the form of probabilistic forecasts or with risk indices provided along
with the traditional point predictions. It can be shown that any
decision related to wind power management and trading cannot be optimal
without accounting for prediction uncertainty. For the example of the
trading application, studies have shown that reliable estimation of
prediction uncertainty allows wind power producer to significantly
increase their income in comparison to the sole use of an advanced
point forecasting method. Other studies of this type deal with optimal
dynamic quantification of reserve requirements, optimal operation of
combined systems including wind, or multi-area multi-stage regulation.
More and more research efforts are expected on prediction uncertainty
and related topics.
References
E.ON Netz. Wind Report 2004, Wind Report 2005
R. Doherty and M. O’Malley. A new approach to quantify reserve demand in systems with significant installed wind capacity. IEEE Transactions on Power Systems 20(2), pp. 587-595, 2005
G. Giebel, R. Brownsword, and G. Kariniotakis. State of the art on short-term wind power prediction, ANEMOS Report D1.1, available online: http://anemos.cma.fr, 2003
M. Lange and U. Focken. Physical approach to short-term wind power forecast, Springer, ISBN 3-540-25662-8, 2005
L. Landberg, G. Giebel, H.Aa. Nielsen, T.S. Nielsen, H. Madsen. Short-term prediction - An overview, Wind Energy 6(3), pp. 273-280, 2003
H. Madsen, P. Pinson, H.Aa. Nielsen, T.S. Nielsen and G.
Kariniotakis. Standardizing the performance evaluation of short-term
wind power prediction models, Wind Engineering 29(6), pp. 475–489, 2005
P. Pinson, C. Chevallier and G. Kariniotakis. Trading wind generation with short-term probabilistic forecasts of wind power, IEEE Transactions on Power Systems 22(3), pp. 1148-1156, 2007
P. Pinson, S. Lozano, I. Marti, G. Kariniotakis and G. Giebel.
ViLab: a Virtual Laboratory for collaborative research on wind power
forecasting, Wind Engineering 31(2), pp. 117-121, 2007
P. Pinson, H.Aa. Nielsen, J.K. Møller, H. Madsen and G.
Kariniotakis. Nonparametric probabilistic forecasts of wind power:
required properties and evaluation, Wind Energy, in press, 2007
External links
Weather prediction models
Electricity market
Wind power forecasting methods
This article is licensed under the GNU Free Documentation License. It uses material from Wikipedia Encyclopedia article "Wind Power Forecasting"
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