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Development of a sky imager for cloud cover assessment

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TLDR
An in-house sky imager system for the purpose of cloud cover estimation and characterization is developed and the classification algorithm is validated on two levels: image level, using the cloud observations included in the METAR register performed at the closest meteorological station, and pixel level, determining whether the final classification is correct.
Abstract
Based on a CCD camera, we have developed an in-house sky imager system for the purpose of cloud cover estimation and characterization. The system captures a multispectral image every 5 min, and the analysis is done with a method based on an optimized neural network classification procedure and a genetic algorithm. The method discriminates between clear sky and two cloud classes: opaque and thin clouds. It also divides the image into sectors and finds the percentage of clouds in those different regions. We have validated the classification algorithm on two levels: image level, using the cloud observations included in the METAR register performed at the closest meteorological station, and pixel level, determining whether the final classification is correct.

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Journal ArticleDOI

Solar forecasting methods for renewable energy integration

TL;DR: In this article, the authors review the theory behind these forecasting methodologies, and a number of successful applications of solar forecasting methods for both the solar resource and the power output of solar plants at the utility scale level.
Journal ArticleDOI

Intra-hour forecasting with a total sky imager at the UC San Diego solar energy testbed

TL;DR: In this paper, a method for intra-hour, sub-kilometer cloud forecasting and irradiance nowcasting using a ground-based sky imager at the University of California, San Diego is presented.
Journal ArticleDOI

Automatic cloud classification of whole sky images

TL;DR: An automatic cloud classification algorithm is presented, based on a set of mainly statistical features describing the color as well as the texture of an image, using the k-nearest-neighbour classifier to achieve an accuracy of about 97%.
Journal ArticleDOI

A Hybrid Thresholding Algorithm for Cloud Detection on Ground-Based Color Images

TL;DR: An effective cloud detection approach, the Hybrid Thresholding Algorithm (HYTA) that fully exploits the benefits of the combination of fixed and adaptive thresholding methods is put forward.
Journal ArticleDOI

Cloud detection and classification with the use of whole-sky ground-based images

TL;DR: A multi color criterion is applied on sky images, in order to improve the accuracy in detection of broken and overcast clouds under large solar zenith angles, and the performance of the cloud detection algorithm is successfully compared with ground based weather observations.
References
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Book

Genetic Algorithms + Data Structures = Evolution Programs

TL;DR: GAs and Evolution Programs for Various Discrete Problems, a Hierarchy of Evolution Programs and Heuristics, and Conclusions.
Journal ArticleDOI

An introduction to computing with neural nets

TL;DR: This paper provides an introduction to the field of artificial neural nets by reviewing six important neural net models that can be used for pattern classification and exploring how some existing classification and clustering algorithms can be performed using simple neuron-like components.
Proceedings ArticleDOI

A direct adaptive method for faster backpropagation learning: the RPROP algorithm

TL;DR: A learning algorithm for multilayer feedforward networks, RPROP (resilient propagation), is proposed that performs a local adaptation of the weight-updates according to the behavior of the error function to overcome the inherent disadvantages of pure gradient-descent.
Journal ArticleDOI

Principles of neurodynamics. perceptrons and the theory of brain mechanisms

TL;DR: The background, basic sources of data, concepts, and methodology to be employed in the study of perceptrons are reviewed, and some of the notation to be used in later sections are presented.
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