Title: H. Madsen, J.Tastu*, P.Pinson
1Multivariate Conditional Parametric models for
aspatio-temporal analysis of short-term wind
power forecasterrors
- H. Madsen, J.Tastu, P.Pinson
Informatics and Mathematical Modelling, Technical
University of Denmark jvl_at_imm.dtu.dk
2The spatio-temporal effects
- An error made at a certain point in space and
time will propagate both spatially and
temporally, conditional to the weather conditions - The objective is to improve wind power forecasts
over the region by accounting for such
spatio-temporal effects - to provide corrected point forecasts
- accompanied with the estimates of the associated
uncertainty level (probabilistic forecasts)
Improving wind power forecasts by considering
spatio-temporal effects -Slide 2 / 12
3Outline
- Energinet.dk dataset
- Correcting point forecasts based on
spatio-temporal aspects - Vector AutoRegressive model (VAR)
- Conditional Parametric-VAR model (CP-VAR)
- Application results and comments
- Probabilistic forecasts
- Parametric approach based on truncated
multivariate normal distribution - Assessment of the probabilistic forecasts
- Application results and comments
Improving wind power forecasts by considering
spatio-temporal effects -Slide 3 / 12
4The Energinet dataset
- 23 months (2006-2007)
- 15 onshore groups
- wind power forecasts (WPPT) and
- measurements
- meteorological forecasts
- Focus here on 1-hour-ahead forecast errors
- for more details on WPPT see www.enfor.dk
Improving wind power forecasts by considering
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5Point forecasts. Proposed models
- For revealing a linear spatio-temporal
inter-dependence structure without accounting for
the effects of the meteorological data a VAR
model can be employed - where wt is a vector of the dimension m 1
showing wind power forecast errors at m groups
of wind farms obtained for time t, ?t term is
assumed to be distributed multivariate with zero
mean, A is a coefficient matrix to be estimated
from the data. - The effect of wind direction may be captured with
a CP-VAR model - which translates to replace the Ai coefficients
in VAR model by coefficient functions. The model
can be fitted to data with zt being an average
forecasted wind direction for - time t.
Improving wind power forecasts by considering
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6Application Results 1/2
- Results in terms or RMSE of the 1-hour-ahead
forecasts, and related improvement of the RMSE (?
RMSE) as a result of the overall forecast
correction methodology
Improving wind power forecasts by considering
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7Application Results 2/2
- Predictive performance of the CP-VAR model in
terms of a percentage reduction in the RMSE of
the forecast errors. - The larger improvements correspond to the eastern
part of the region. This is in line with the fact
that in Denmark the prevailing wind direction is
westerly, so the easterly located groups are
usually situated "down-wind" from the rest of the
region. - A new EU project NORSEWInD will include the data
from the North Sea which can potentially result
in better improvements for all Denmark area.
Produced using http//maps.google.com/
Improving wind power forecasts by considering
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8Probabilistic forecasts
- The main objective is to estimate the uncertainty
associated with the previously presented point
forecasts by providing the probability density
function of the corresponding random variable - Parametric approach based on truncated
MultiVariate Normal (MVN) distribution - where the mean of the distribution is assumed to
be equal to the point forecast of the wind power
forecast errors obtained from the CP-VAR model. - b(ppt) and a(ppt) are vectors denoting upper and
lower truncation limits of the distribution. Here
ppt denotes a vector of power predictions for
time t. - ? is a covariance matrix of the distribution
(conditional on the meteo forecast zt) to be
estimated from the data
Improving wind power forecasts by considering
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9Assessment of the probabilistic forecasts
- Making probabilistic forecasts for each group
individually, based on the corresponding
univariate marginals of the estimated MVN density - Reliability assessment for a multidimensional
forecast is more complex and requires additional
research (future work)
Improving wind power forecasts by considering
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10Application results
- Episodes with forecasts and measurements
corresponding to a one-week period from 4 a.m.
2007-08-03 to 4 a.m. 2007-08-10 for Group 5.
The width of the prediction intervals changes in
time the larger is the variation in the WPPT
errors, the wider are the prediction intervals.
The actual value depends on historical values and
forecasted wind direction.
Improving wind power forecasts by considering
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11Conclusions
- Spatio-temporal effects can be employed for
improving wind power forecasts over the Denmark
area - CP-VAR models have been tested and evaluated. The
correspondingly corrected 1-hour-ahead forecasts
when evaluated on the test case of western
Denmark result in a reduction of prediction
errors up to 18.46 in terms of RMSE. - The forecast error depends on a number of
factors - Most recent errors
- Forecasted wind direction
- Predictive densities are modelled as truncated
multivariate normal distribution. This results in
reliable univariate probabilistic forecasts for
each individual group. - In the future, explanatory variables from the
North Sea region should also be integrated in the
proposed methodologies - Forecast correction will then be extended to
further look-ahead times
Improving wind power forecasts by considering
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12Thank you for your attention!
Contact information Julija Tastu PhD
student Informatics and Mathematical Modelling,
Technical University of Denmark Email to
jvl_at_imm.dtu.dk
Improving wind power forecasts by considering
spatio-temporal effects -Slide 12 / 12