Litcius/Paper detail

Deep learning architecture for direct probability density prediction of small‐scale solar generation

Mousa Afrasiabi, Mohammad Mohammadi, Mohammad Rastegar, Shahabodin Afrasiabi

2020IET Generation Transmission & Distribution31 citationsDOI

Abstract

With the increasing penetration of photovoltaic (PV) systems, the problems posed by the inherent intermittency of small‐scale PVs are becoming more severe. To address this issue, it is critical to involve the uncertainty of PV generation in the look‐ahead periods in a comprehensive framework. To this end, a direct deep learning architecture for probabilistic forecasting of solar generation is proposed in this paper. An end‐to‐end deep learning architecture as a novel mixture density network (MDN) is designed based on the combination of a convolutional neural network and a gated recurrent unit. Furthermore, a new loss function and training process based on adversarial training is proposed to enhance the accuracy in direct contracting of the probability density function. Then, several deep and shallow networks are implemented, and the results are compared with the proposed architecture. The effectiveness of the proposed MDN in providing complete statistical information is verified through comparison with Monte Carlo dropout, non‐parametric kernel density estimation, and the proposed MDN without adversarial training.

Topics & Concepts

Computer scienceDeep learningArtificial intelligenceConvolutional neural networkProbability density functionDropout (neural networks)Machine learningProbabilistic logicPhotovoltaic systemIntermittencyKernel density estimationParametric statisticsDensity estimationArtificial neural networkNetwork architectureEngineeringMathematicsStatisticsMeteorologyElectrical engineeringPhysicsComputer securityTurbulenceEstimatorEnergy Load and Power ForecastingSolar Radiation and PhotovoltaicsPhotovoltaic System Optimization Techniques