Day-ahead regional solar power forecasting with hierarchical temporal convolutional neural networks using historical power generation and weather data
Maneesha Perera, Julian De Hoog, Kasun Bandara, Damith Senanayake,, Saman Halgamuge

TL;DR
This paper introduces hierarchical temporal convolutional neural networks for regional solar power forecasting, effectively combining aggregated and location-specific data to improve accuracy and reduce model complexity.
Contribution
The study proposes novel HTCNN architectures and strategies for regional solar forecasting that leverage both aggregated and individual site data, outperforming existing methods.
Findings
Achieved a 40.2% forecast skill score.
Reduced error by 6.5% compared to best existing methods.
Used data from 101 locations in Western Australia.
Abstract
Regional solar power forecasting, which involves predicting the total power generation from all rooftop photovoltaic systems in a region holds significant importance for various stakeholders in the energy sector. However, the vast amount of solar power generation and weather time series from geographically dispersed locations that need to be considered in the forecasting process makes accurate regional forecasting challenging. Therefore, previous work has limited the focus to either forecasting a single time series (i.e., aggregated time series) which is the addition of all solar generation time series in a region, disregarding the location-specific weather effects or forecasting solar generation time series of each PV site (i.e., individual time series) independently using location-specific weather data, resulting in a large number of forecasting models. In this work, we propose two…
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Taxonomy
TopicsEnergy Load and Power Forecasting
MethodsFocus
