SPIN: Simplifying Polar Invariance for Neural networks Application to vision-based irradiance forecasting
Quentin Paletta, Anthony Hu, Guillaume Arbod, Philippe Blanc, Joan, Lasenby

TL;DR
This paper introduces SPIN, a polar coordinate transformation method that simplifies rotational invariance in neural networks, improving vision-based irradiance forecasting accuracy and training efficiency.
Contribution
The paper proposes a polar coordinate preprocessing step that enhances rotational invariance and reduces training time in neural networks for solar irradiance prediction.
Findings
Significantly improves prediction accuracy.
Reduces training time by a factor of 4.
Enhances short-term irradiance forecasting.
Abstract
Translational invariance induced by pooling operations is an inherent property of convolutional neural networks, which facilitates numerous computer vision tasks such as classification. Yet to leverage rotational invariant tasks, convolutional architectures require specific rotational invariant layers or extensive data augmentation to learn from diverse rotated versions of a given spatial configuration. Unwrapping the image into its polar coordinates provides a more explicit representation to train a convolutional architecture as the rotational invariance becomes translational, hence the visually distinct but otherwise equivalent rotated versions of a given scene can be learnt from a single image. We show with two common vision-based solar irradiance forecasting challenges (i.e. using ground-taken sky images or satellite images), that this preprocessing step significantly improves…
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Taxonomy
TopicsSolar Radiation and Photovoltaics · Solar and Space Plasma Dynamics
