Article prediction of solar irradiance and photovoltaic solar energy product based on cloud coverage estimation using machine learning methods

Seongha Park*, Yongho Kim, Nicola J. Ferrier, Scott M. Collis, Rajesh Sankaran, Pete H. Beckman

*Corresponding author for this work

Research output: Contribution to journalArticlepeer-review

63 Scopus citations

Abstract

Cloud cover estimation from images taken by sky-facing cameras can be an important input for analyzing current weather conditions and estimating photovoltaic power generation. The constant change in position, shape, and density of clouds, however, makes the development of a robust computational method for cloud cover estimation challenging. Accurately determining the edge of clouds and hence the separation between clouds and clear sky is difficult and often impossible. Toward determining cloud cover for estimating photovoltaic output, we propose using machine learning methods for cloud segmentation. We compare several methods including a classical regression model, deep learning methods, and boosting methods that combine results from the other machine learning models. To train each of the machine learning models with various sky conditions, we supplemented the existing Singapore whole sky imaging segmentation database with hazy and overcast images collected by a camera-equipped Waggle sensor node. We found that the U-Net architecture, one of the deep neural networks we utilized, segmented cloud pixels most accurately. However, the accuracy of segmenting cloud pixels did not guarantee high accuracy of estimating solar irradiance. We confirmed that the cloud cover ratio is directly related to solar irradiance. Additionally, we confirmed that solar irradiance and solar power output are closely related; hence, by predicting solar irradiance, we can estimate solar power output. This study demonstrates that sky-facing cameras with machine learning methods can be used to estimate solar power output. This ground-based approach provides an inexpensive way to understand solar irradiance and estimate production from photovoltaic solar facilities.

Original languageEnglish (US)
Article number395
JournalATMOSPHERE
Volume12
Issue number3
DOIs
StatePublished - Mar 2021

Funding

Funding: The Waggle platform design was supported through Argonne National Laboratory\u2019s Laboratory-Directed Research and Development program, LDRD: 2014-160-N0. The SAGE project is funded through the U.S. National Science Foundation\u2019s Mid-Scale Research Infrastructure program, NSF-OAC-1935984 [42]. This material is based upon work supported in part by U.S. Department of Energy, Office of Science, under contract DE-AC02-06CHI1357, and analysis work was supported by Exelon Corporation through CRADA T03-PH01-PT1397.

Keywords

  • Cloud cover estimation
  • Deep learning
  • Ensemble
  • Machine learning
  • Solar irradiance estimation
  • Solar power product estimation

ASJC Scopus subject areas

  • Environmental Science (miscellaneous)

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