Skip to end of metadata
Go to start of metadata

You are viewing an old version of this content. View the current version.

Compare with Current View Version History

« Previous Version 9 Next »

Latest details

Machine learning algorithm details

Release Date:

2023-04-04

Algo type:

Type: A

Random Forest Regression

Training period

From March 2018 to 27th of 30th March 2023.

Hyper parameters:

No weighting across time periods. It is likely that we’ll add weighting to more recent training periods.

To be disclosed with later release stages.

Model_id:

20221129_171124_CB_1

Input variables (features)

Note that more variables are used as inputs into the model than are presented in the Model Input Chart in the Home page of pd4castr. Chart variables are representative of the key variables of the model but changes in other variables may also impact the model forecast.

Variables that imply binding interconnectors (such as limits and marginal values) are currently not included as features.

Target:

dispatchprice for each region

List of features:

Predispatchregionsum fields used (including all regions)

hours_out

rrp

dispatchableload

netinterchange

rolling_rrp

availablegeneration - uigf

dispatchablegeneration - scheduled_clearedmw

ss_solar_clearedmw

ss_solar_uigf

ss_wind_clearedmw

ss_wind_uigf

totaldemand

totalintermittentgeneration


  • No labels