A new study evaluates the robustness of various deep learning models, including PatchTST, GRU, N-HITS, and LightGBM, when subjected to errors in numerical weather prediction (NWP) data. The research introduces a physically constrained framework to simulate these errors and assess their impact on photovoltaic (PV) power forecasting. Findings indicate that sequence models offer superior noise filtering and temporal resilience compared to tabular models, especially under significant disturbance levels. Techniques like SHAP and Integrated Gradients reveal that models can shift their predictive reliance from corrupted future forecasts to more stable historical data and physical priors. AI
IMPACT Enhances understanding of AI model reliability in real-world, uncertain conditions, guiding selection for critical forecasting tasks.
RANK_REASON The cluster contains an academic paper detailing a new evaluation framework and analysis of existing models.
- gated recurrent unit
- Igbo
- Integrated Gradients
- LightGBM
- N-HITS
- Numerical Weather Prediction
- PatchTST
- Shap
- Shapley Additive Explanations
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