AutoPV: Automated photovoltaic forecasts with limited information using an ensemble of pre-trained models
Stefan Meisenbacher, Benedikt Heidrich, Tim Martin, Ralf Mikut, Veit, Hagenmeyer

TL;DR
AutoPV is an ensemble forecasting method that adapts to missing mounting configuration data and limited historical data, improving day-ahead PV power forecasts for smart grids.
Contribution
It introduces a weighted ensemble approach that implicitly captures mounting configurations and addresses cold-start issues using adaptive weighting during operation.
Findings
AutoPV achieves accuracy comparable to long-term models with limited data.
It outperforms incrementally trained models on real-world PV data.
The method scales efficiently to large PV plant networks.
Abstract
Accurate PhotoVoltaic (PV) power generation forecasting is vital for the efficient operation of Smart Grids. The automated design of such accurate forecasting models for individual PV plants includes two challenges: First, information about the PV mounting configuration (i.e. inclination and azimuth angles) is often missing. Second, for new PV plants, the amount of historical data available to train a forecasting model is limited (cold-start problem). We address these two challenges by proposing a new method for day-ahead PV power generation forecasts called AutoPV. AutoPV is a weighted ensemble of forecasting models that represent different PV mounting configurations. This representation is achieved by pre-training each forecasting model on a separate PV plant and by scaling the model's output with the peak power rating of the corresponding PV plant. To tackle the cold-start problem,…
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Taxonomy
TopicsSolar Radiation and Photovoltaics · Energy Load and Power Forecasting · Atmospheric and Environmental Gas Dynamics
