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ProPower: Evaluating the impact of weather forecast uncertainty in power systems management
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Objective and Background
Probabilistic forecasts have been promoted by meteorologists for years. However, the use of probabilistic forecasts in the energy sector is still limited. One reason for that is that many real-world decision processes and applications to manage the power system are not designed to integrate uncertain information.
The objective of this presentation is to introduce ProPower, the Probabilistic Power Forecast Evaluation Tool developed at DLR. The main purpose of ProPower is to assess the value of probabilistic power forecasts for PV and wind power systems compared to the usage of deterministic forecasts that do not contain any uncertainty information. Different sources of probabilistic forecasts may be ranked and tested. Finally, a robust analysis on how the value of wind and solar forecasts depends on the power system infrastructure and the power markets considered will be conducted.
Method
Usual approaches to derive the cost-optimal power dispatch within a market region and where power constraints (e.g. grid capacities) are fully considered do not account for the potential balancing costs arising from forecast errors in wind and solar. Dispatch decisions based on pure deterministic forecasts lead to sub-optimal market clearing as shown by Morales et al. [2014] for a simplistic network. To overcome this issue they proposed a stochastic market clearing model. In this model, average balancing costs are estimated from a set of scenarios of renewables feed-in that are equivalent to ensemble members from an ensemble prediction system. The ProPower tool is capable of simulating more complex power systems being mainly restricted by the computational expenses of the optimization problem. A second market clearing based on updated forecasts of higher skills has been implemented and tested. Currently, we use ECMWF ensemble forecasts [Leutbecher and Palmer, 2007] for the day-ahead market clearing and the intraday market clearing. The amount of required balancing is determined by the deviation of forecasted renewables feed-in to feed-in computed from ERA5 reanalysis.
Principal Findings
We found that stochastic market clearing reduces total power system cost by saving balancing power compared to the conventional market clearing even for more complex networks. Furthermore, the use of forecast updates in an intraday market is beneficial as extreme day-ahead forecasts errors do not need to be balanced with more expensive balancing energy at the time of power delivery.
Conclusion
The ProPower tool is capable to translate probabilistic forecast skill into benefits for the power system respecting important characteristics of the real-world power system (i.e. network constraints and layouts, varying costs for different producers, flexibility options). ProPower has the potential to analyze which forecasts errors are most expensive to balance and how valuable skillful uncertainty information from different sources is.
Title: ProPower: Evaluating the impact of weather forecast uncertainty in power systems management
Description:
Objective and Background
Probabilistic forecasts have been promoted by meteorologists for years.
However, the use of probabilistic forecasts in the energy sector is still limited.
One reason for that is that many real-world decision processes and applications to manage the power system are not designed to integrate uncertain information.
The objective of this presentation is to introduce ProPower, the Probabilistic Power Forecast Evaluation Tool developed at DLR.
The main purpose of ProPower is to assess the value of probabilistic power forecasts for PV and wind power systems compared to the usage of deterministic forecasts that do not contain any uncertainty information.
Different sources of probabilistic forecasts may be ranked and tested.
Finally, a robust analysis on how the value of wind and solar forecasts depends on the power system infrastructure and the power markets considered will be conducted.
Method
Usual approaches to derive the cost-optimal power dispatch within a market region and where power constraints (e.
g.
grid capacities) are fully considered do not account for the potential balancing costs arising from forecast errors in wind and solar.
Dispatch decisions based on pure deterministic forecasts lead to sub-optimal market clearing as shown by Morales et al.
[2014] for a simplistic network.
To overcome this issue they proposed a stochastic market clearing model.
In this model, average balancing costs are estimated from a set of scenarios of renewables feed-in that are equivalent to ensemble members from an ensemble prediction system.
The ProPower tool is capable of simulating more complex power systems being mainly restricted by the computational expenses of the optimization problem.
A second market clearing based on updated forecasts of higher skills has been implemented and tested.
Currently, we use ECMWF ensemble forecasts [Leutbecher and Palmer, 2007] for the day-ahead market clearing and the intraday market clearing.
The amount of required balancing is determined by the deviation of forecasted renewables feed-in to feed-in computed from ERA5 reanalysis.
Principal Findings
We found that stochastic market clearing reduces total power system cost by saving balancing power compared to the conventional market clearing even for more complex networks.
Furthermore, the use of forecast updates in an intraday market is beneficial as extreme day-ahead forecasts errors do not need to be balanced with more expensive balancing energy at the time of power delivery.
Conclusion
The ProPower tool is capable to translate probabilistic forecast skill into benefits for the power system respecting important characteristics of the real-world power system (i.
e.
network constraints and layouts, varying costs for different producers, flexibility options).
ProPower has the potential to analyze which forecasts errors are most expensive to balance and how valuable skillful uncertainty information from different sources is.
Related Results
ProPower: A new tool to assess the value of probabilistic forecasts in power systems management
ProPower: A new tool to assess the value of probabilistic forecasts in power systems management
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