SPLGMay 31, 2020

Two-stage short-term wind power forecasting algorithm using different feature-learning models

arXiv:2006.00413v311 citations
Originality Incremental advance
AI Analysis

This work provides an incremental improvement in wind power forecasting for energy grid management, focusing on domain-specific enhancements.

The paper tackled short-term wind power forecasting by developing a two-stage deep learning algorithm that addresses input-output structures and model extrapolation, resulting in improved accuracy and stability compared to existing models, with specific gains demonstrated at three wind farms.

Two-stage ensemble-based forecasting methods have been studied extensively in the wind power forecasting field. However, deep learning-based wind power forecasting studies have not investigated two aspects. In the first stage, different learning structures considering multiple inputs and multiple outputs have not been discussed. In the second stage, the model extrapolation issue has not been investigated. Therefore, we develop four deep neural networks for the first stage to learn data features considering the input-and-output structure. We then explore the model extrapolation issue in the second stage using different modeling methods. Considering the overfitting issue, we propose a new moving window-based algorithm using a validation set in the first stage to update the training data in both stages with two different moving window processes.Experiments were conducted at three wind farms, and the results demonstrate that the model with single input multiple output structure obtains better forecasting accuracy compared to existing models. In addition, the ridge regression method results in a better ensemble model that can further improve forecasting accuracy compared to existing machine learning methods. Finally, the proposed two-stage forecasting algorithm can generate more accurate and stable results than existing algorithms.

Foundations

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