david-salac / Fast-SZA-and-SAA-computationLinks
The implementation of the fast algorithm for computation of the Solar Zenith Angle (aka SZA) and Solar Azimut Angle (aka SAA) based on the logic proposed by Roberto Grena in 2012 (https://doi.org/10.1016/j.solener.2012.01.024). The precision of the algorithm is 0.3 degrees for the SZA and 0.5 degrees for the SAA (mean-average error).
☆15Updated 5 years ago
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