T.C.
McCandless, S.E. Haupt, G.S. Young, L. Hinkleman, 2016
Regime-Dependent
Short-Range Solar Irradiance Forecasting
Journal
of Applied Meteorology and Climatology, 55, 1599-1613
Abstract
This paper describes the development and testing of a
cloud-regime-dependent short-range solar irradiance forecasting system for
predictions of 15-min-average clearness index (global horizontal irradiance).
This regime-dependent artificial neural network (RD-ANN) system classifies
cloud regimes with a k-means algorithm on the basis of a combination of surface
weather observations, irradiance observations, and GOES-East satellite data.
The ANNs are then trained on each cloud regime to predict the clearness index.
This RD-ANN system improves over the mean absolute error of the baseline clearness-index
persistence predictions by 1.0%, 21.0%, 26.4%, and 27.4% at the 15-, 60-, 120-,
and 180-min forecast lead times, respectively. In addition, a version of this
method configured to predict the irradiance variability predicts irradiance
variability more accurately than does a smart persistence technique.