Search engine for discovering works of Art, research articles, and books related to Art and Culture
ShareThis
Javascript must be enabled to continue!

ProPower: A new tool to assess the value of probabilistic forecasts in power systems management

View through CrossRef
Objective and BackgroundEnsemble weather forecasts have been promoted by meteorologists for use due to their inherent capability of quantifying forecast uncertainty. Despite this advantage over deterministic forecasts, their application is still limited since many processes to manage power systems are not ready to deal with uncertain information. The probabilistic power forecast evaluation tool ProPower has been developed at DLR to demonstrate possible applications of probabilistic forecasts in power systems. Furthermore, ProPower is used to assess the value of probabilistic forecasts for PV and wind power systems compared to the usage of deterministic forecasts, but also to compare the value of different probabilistic forecasts. This includes post-processing of ensemble forecast, e.g. calibration.MethodUsual approaches to derive the cost-optimal power dispatch within a market zone considering power constraints (e.g. grid capacities, ramp rates) do not account for potential balancing costs arising from errors in wind and solar forecasts. Following [1] DLR has designed a stochastic market clearing model. In this model, expected balancing costs are estimated from a set of scenarios of renewables feed-in that are equivalent to ensemble members. Lately, a second market clearing based on updated forecasts of higher skills has been implemented in ProPower and is thoroughly tested. Currently, we use ECMWF ensemble forecasts [2] for the day-ahead market clearing and the intraday market clearing. However, in the research project WindRamp the benefit of shortest-term Lidar forecasts [3] of an offshore wind farm is tested in a sample power system. In this context the Lidar forecasts got calibrated with the EMOS method suggested by Thorarinsdottir, T., and T. Gneiting [2010].Principal FindingsWe found a positive impact of stochastic market clearing to reduce total power system compared to the deterministic market clearing. The use of Lidar forecasts as forecast updates in an intraday market is beneficial compared with NWP forecasts. Persistence forecasts (+15 min) can be outperformed in unstable atmospheric conditions.Conclusion The ProPower tool is capable to translate probabilistic forecast skill into benefits for sample power systems. ProPower has the potential to analyze which forecasts errors are most expensive to balance and how valuable skillful uncertainty information from different sources (e.g. Lidar shortest-term forecast) is.References[1] Morales, J.M., Zugno, M., Pineda, S., and Pinson, P. (2014): Electricity Market Clearing with Improved Scheduling of Stochastic Production, European Journal of Operational Research[2] Leutbecher, M., and Palmer, T.N. (2007): Ensemble forecasting[3] Theuer, F., Rott, A., Schneemann, J., von Bremen, L., and Kühn, M.: Observer-based power forecast of individual and aggregated offshore wind turbines, Wind Energy Science[4] Thorarinsdottir, T., and T. Gneiting, 2010: Probabilistic forecasts of wind speed: Ensemble model output statistics by using heteroscedastic censored regression. J. Roy. Stat. Soc.
Title: ProPower: A new tool to assess the value of probabilistic forecasts in power systems management
Description:
Objective and BackgroundEnsemble weather forecasts have been promoted by meteorologists for use due to their inherent capability of quantifying forecast uncertainty.
Despite this advantage over deterministic forecasts, their application is still limited since many processes to manage power systems are not ready to deal with uncertain information.
The probabilistic power forecast evaluation tool ProPower has been developed at DLR to demonstrate possible applications of probabilistic forecasts in power systems.
Furthermore, ProPower is used to assess the value of probabilistic forecasts for PV and wind power systems compared to the usage of deterministic forecasts, but also to compare the value of different probabilistic forecasts.
This includes post-processing of ensemble forecast, e.
g.
calibration.
MethodUsual approaches to derive the cost-optimal power dispatch within a market zone considering power constraints (e.
g.
grid capacities, ramp rates) do not account for potential balancing costs arising from errors in wind and solar forecasts.
Following [1] DLR has designed a stochastic market clearing model.
In this model, expected balancing costs are estimated from a set of scenarios of renewables feed-in that are equivalent to ensemble members.
Lately, a second market clearing based on updated forecasts of higher skills has been implemented in ProPower and is thoroughly tested.
Currently, we use ECMWF ensemble forecasts [2] for the day-ahead market clearing and the intraday market clearing.
However, in the research project WindRamp the benefit of shortest-term Lidar forecasts [3] of an offshore wind farm is tested in a sample power system.
In this context the Lidar forecasts got calibrated with the EMOS method suggested by Thorarinsdottir, T.
, and T.
Gneiting [2010].
Principal FindingsWe found a positive impact of stochastic market clearing to reduce total power system compared to the deterministic market clearing.
The use of Lidar forecasts as forecast updates in an intraday market is beneficial compared with NWP forecasts.
Persistence forecasts (+15 min) can be outperformed in unstable atmospheric conditions.
Conclusion The ProPower tool is capable to translate probabilistic forecast skill into benefits for sample power systems.
ProPower has the potential to analyze which forecasts errors are most expensive to balance and how valuable skillful uncertainty information from different sources (e.
g.
Lidar shortest-term forecast) is.
References[1] Morales, J.
M.
, Zugno, M.
, Pineda, S.
, and Pinson, P.
(2014): Electricity Market Clearing with Improved Scheduling of Stochastic Production, European Journal of Operational Research[2] Leutbecher, M.
, and Palmer, T.
N.
(2007): Ensemble forecasting[3] Theuer, F.
, Rott, A.
, Schneemann, J.
, von Bremen, L.
, and Kühn, M.
: Observer-based power forecast of individual and aggregated offshore wind turbines, Wind Energy Science[4] Thorarinsdottir, T.
, and T.
Gneiting, 2010: Probabilistic forecasts of wind speed: Ensemble model output statistics by using heteroscedastic censored regression.
J.
Roy.
Stat.
Soc.

Related Results

Inventory and pricing management in probabilistic selling
Inventory and pricing management in probabilistic selling
Context: Probabilistic selling is the strategy that the seller creates an additional probabilistic product using existing products. The exact information is unknown to customers u...
Optimising tool wear and workpiece condition monitoring via cyber-physical systems for smart manufacturing
Optimising tool wear and workpiece condition monitoring via cyber-physical systems for smart manufacturing
Smart manufacturing has been developed since the introduction of Industry 4.0. It consists of resource sharing and networking, predictive engineering, and material and data analyti...
A Set of New Tools to Measure the Effective Value of Probabilistic Forecasts of Continuous Variables
A Set of New Tools to Measure the Effective Value of Probabilistic Forecasts of Continuous Variables
In recent years, the prominence of probabilistic forecasting has risen among numerous research fields (finance, meteorology, banking, etc.). Best practices on using such forecasts ...
Improving hydrological forecasts through temporal hierarchal reconciliation
Improving hydrological forecasts through temporal hierarchal reconciliation
<p>Hydrological forecasts at different horizons are often made using different models. These forecasts are usually temporally inconsistent (e.g., monthly forecasts ma...
Evaluating ensemble post-processing for probabilistic energy prediction
Evaluating ensemble post-processing for probabilistic energy prediction
Probabilistic forecasts based on ensemble simulations of numerical weather prediction models have become a standard tool in weather forecasting and various application areas. Howev...
Communicating Probability Forecasts – will people understand?
Communicating Probability Forecasts – will people understand?
Executive Summary “People don’t understand probabilities” – or do they? Weather forecasting science has long been developing ensemble forecasts as a way to improve forecast capabil...
Machine learning-based parametric post-processing of solar irradiance ensemble forecasts
Machine learning-based parametric post-processing of solar irradiance ensemble forecasts
By the end of 2022, the renewable energy share of the global electricity capacity reached 40.3% and the new installations were dominated by solar energy, showing a global increase ...
Calibration of wind speed ensemble forecasts for power generation
Calibration of wind speed ensemble forecasts for power generation
<p>In 2020, 36.6 % of the total electricity demand of the world was covered by renewable sources, whereas in the EU (UK included) this share reached 49.3 %. A substan...

Back to Top