As part of the Sandia’s PV Performance Modeling program (https://pvpmc.sandia.gov/), we are sharing our model development ideas to seek feedback based on relevance, importance, and potential impact.
Your input will help us prioritize our efforts for fiscal years 2025-2027. Any model developments from our PV Performance Modeling program will be validated, documented in peer-reviewed articles, and made available in pvlib-python. If you are already working on a similar idea, please reach out—we would love to collaborate!
Idea No 6. Improve pvlib's default clear-sky model. Depending on location, predicted annual insolation shows up to 18% difference from more sophisticated clear-sky models. Advanced clear-sky models are complex and require specialized inputs, making them only practical for expert institutions. The idea here is to develop a simple-to-use surrogate model that approximates the output of advanced models and compare to other simple clear-sky models using SURFRAD and BSRN data, to examine whether a model trained on Americas data only can be generalized to the rest of the world.
@kandersolar @cwhanse @jsstein @leliadeville