CVIVSep 18, 2024

Computational Imaging for Long-Term Prediction of Solar Irradiance

arXiv:2409.12016v11 citationsh-index: 56
Originality Incremental advance
AI Analysis

This addresses the uncertainty in solar power generation for grid-connected photovoltaic systems, though it is incremental with a novel imaging system and algorithm.

The paper tackled the problem of predicting solar irradiance by improving cloud detection and velocity estimation near the horizon, achieving an order of magnitude improvement in prediction time to tens of minutes compared to prior work.

The occlusion of the sun by clouds is one of the primary sources of uncertainties in solar power generation, and is a factor that affects the wide-spread use of solar power as a primary energy source. Real-time forecasting of cloud movement and, as a result, solar irradiance is necessary to schedule and allocate energy across grid-connected photovoltaic systems. Previous works monitored cloud movement using wide-angle field of view imagery of the sky. However, such images have poor resolution for clouds that appear near the horizon, which reduces their effectiveness for long term prediction of solar occlusion. Specifically, to be able to predict occlusion of the sun over long time periods, clouds that are near the horizon need to be detected, and their velocities estimated precisely. To enable such a system, we design and deploy a catadioptric system that delivers wide-angle imagery with uniform spatial resolution of the sky over its field of view. To enable prediction over a longer time horizon, we design an algorithm that uses carefully selected spatio-temporal slices of the imagery using estimated wind direction and velocity as inputs. Using ray-tracing simulations as well as a real testbed deployed outdoors, we show that the system is capable of predicting solar occlusion as well as irradiance for tens of minutes in the future, which is an order of magnitude improvement over prior work.

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