Physics-Informed State Space Models for Reliable Solar Irradiance Forecasting in Off-Grid Systems
Mohammed Ezzaldin Babiker Abdullah
TLDR
This paper introduces a physics-informed state space model, the Thermodynamic Liquid Manifold Network, for accurate solar forecasting without nocturnal errors or phase lags.
Key contributions
- Introduces Thermodynamic Liquid Manifold Network (TLMN) for physics-informed solar forecasting.
- Projects 15 variables into a Koopman-linearized Riemannian manifold for complex climatic dynamics.
- Integrates Spectral Calibration and Alpha-Gate to enforce celestial geometry, eliminating nocturnal errors.
- Achieves zero-lag synchronization during weather shifts and high accuracy with an ultra-lightweight design.
Why it matters
Current solar forecasting models suffer from nocturnal power generation and temporal phase lags. This paper introduces a physics-informed model that resolves these issues, ensuring reliable solar irradiance predictions for off-grid systems. Its lightweight design is ideal for edge-deployable microgrid controllers.
Original Abstract
The stable operation of autonomous off-grid photovoltaic systems dictates reliance on solar forecasting algorithms that respect atmospheric thermodynamics. Contemporary deep learning models consistently exhibit critical anomalies, primarily severe temporal phase lags during cloud transients and physically impossible nocturnal power generation. To resolve this divergence between data-driven modeling and deterministic celestial mechanics, this research introduces the Thermodynamic Liquid Manifold Network. The proposed methodology projects 15 meteorological and geometric variables into a Koopman-linearized Riemannian manifold to systematically map complex climatic dynamics. The architecture integrates a Spectral Calibration unit and a multiplicative Thermodynamic Alpha-Gate. This system synthesizes real-time atmospheric opacity with theoretical clear-sky boundary models, structurally enforcing strict celestial geometry compliance. This completely neutralizes phantom nocturnal generation while maintaining zero-lag synchronization during rapid weather shifts. Validated against a rigorous five-year testing horizon in a severe semi-arid climate, the framework achieves an RMSE of 18.31 Wh/m2 and a Pearson correlation of 0.988. The model strictly maintains a zero-magnitude nocturnal error across all 1826 testing days and exhibits a sub-30-minute phase response during high-frequency transients. Comprising exactly 63,458 trainable parameters, this ultra-lightweight design establishes a robust, thermodynamically consistent standard for edge-deployable microgrid controllers.
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