IEEE Access | |
Spatio-Temporal Resolution of Irradiance Samples in Machine Learning Approaches for Irradiance Forecasting | |
Guillermo Yepes1  Annette Eschenbach1  Christian Tenllado1  Luis Pinuel1  Jose I. Gomez-Perez1  Stefan Wilbert2  Luis F. Zarzalejo3  | |
[1] Computer Architecture and System Engineering Department, Universidad Complutense de Madrid, Madrid, Spain;DLR, Institute of Solar Research, Tabernas, Spain;Energy Department, CIEMAT, Renewable Energy Division, Madrid, Spain; | |
关键词: Machine learning; forecasting; spatial resolution; solar irradiance; global horizontal irradiance; | |
DOI : 10.1109/ACCESS.2020.2980775 | |
来源: DOAJ |
【 摘 要 】
Improving short term solar irradiance forecasting is crucial to increase the market share of the solar energy production. This paper analyzes the impact of using spatially distributed irradiance sensors as inputs to four machine learning algorithms: ARX, NN, RRF and RT. We used data from two different sensor networks for our experiments, the NREL dataset that includes data from 17 sensors that cover a 1 km2 area and the InfoRiego dataset which includes data from 50 sensors that cover an area of 94Km2. Several studies have been published that use these datasets individually, to the author knowledge this is the first work that evaluates the influence of the spatially distributed data across a range from 0.5 to 17 sensors per km2. We show that all of algorithms evaluated are able to take advantage of the data from the surroundings, from the very short forecast horizons of 10s up to a few hours, and that the wind direction and intensity plays an important role in the optimal distribution of the network and its density. We show that these machine learning methods are more effective on the short horizons when data is obtained from a dense enough network to capture the cloud movements in the prediction interval, and that in those cases complex non-linear models give better results. On the other hand, if only a sparse network is available, the simpler linear models give better results. The skills obtained with the models under test range from 13% to 70%, depending on the sensor network density, time resolution and lead time.
【 授权许可】
Unknown