Feedforward Error Learning Deep Neural Networks for Multivariate Deterministic Power Forecasting
Citations

WEB OF SCIENCE

3

초록

This article proposes a deep neural network (DNN) framework for multivariate deterministic power forecasting in the context of the high penetration of variable and uncertain renewable energy sources. The deep learning model is organized based on the 1-D convolutional neural network to lessen the computational burden, typical of recurrent neural network based models, and combines WaveNet and EfficientNet to improve the forecasting accuracy. Motivated by the inefficiency that all the models conduct the same tasks in the popular ensemble approach, we also designed a feedforward error learning DNN, which computes the error of the basic model separately. We further incorporated embedded and filter methods for feature selection to enhance the model visibility and the utility of the framework. Comprehensive studies on the public load and PV datasets demonstrate that the proposed framework outperforms the conventional methods in applicability, computational efficiency, and forecasting accuracy.

키워드

Predictive modelsForecastingComputational modelingData modelsTask analysisConvolutional neural networksLoad modelingCompound scalingconvolutional neural networks (CNN)deterministic power forecastingerror learningfeature selectionmultivariate forecastingFEATURE-SELECTIONWIND
제목
Feedforward Error Learning Deep Neural Networks for Multivariate Deterministic Power Forecasting
저자
Ko, Min-SeungLee, KwangsukHur, Kyeon
DOI
10.1109/TII.2022.3160628
발행일
2022-09
유형
Article
저널명
IEEE Transactions on Industrial Informatics
18
9
페이지
6214 ~ 6223