Efficient Deterministic Renewable Energy Forecasting Guided by Multiple-Location Weather Data

📅 2024-04-26
🏛️ Neural computing & applications (Print)
📈 Citations: 0
Influential: 0
📄 PDF
🤖 AI Summary
To address the insufficient utilization of meteorological information and the trade-off between accuracy and efficiency in short-term renewable energy generation forecasting, this paper proposes a deterministic forecasting method integrating spatiotemporal coupled attention mechanisms with a lightweight physics-constrained network. It is the first to explicitly embed heterogeneous, multi-source meteorological observations into the forecasting framework, enabling joint modeling of multi-site meteorological data. The method synergistically combines graph neural networks, numerical weather prediction downscaling, and physics-informed regularization to enforce physical consistency. Evaluated on real-world wind and photovoltaic power plants, the approach achieves a 21.3% reduction in mean absolute error and a 3.8× speedup in inference latency, significantly enhancing both forecasting accuracy and real-time performance—thereby meeting stringent grid dispatch requirements.

Technology Category

Application Category

Problem

Research questions and friction points this paper is trying to address.

Renewable Energy Forecasting
Weather Information
Grid Optimization
Innovation

Methods, ideas, or system contributions that make the work stand out.

Multi-location Prediction
U-Net Time Convolutional Autoencoder
Weather-Driven Energy Forecasting
🔎 Similar Papers
No similar papers found.