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Missing-Insensitive Short-Term Load Forecasting Leveraging Autoencoder and LSTM

Authors :
Kyungnam Park
Jaeik Jeong
Dongjoo Kim
Hongseok Kim
Source :
IEEE Access, Vol 8, Pp 206039-206048 (2020)
Publication Year :
2020
Publisher :
IEEE, 2020.

Abstract

In most deep learning-based load forecasting, an intact dataset is required. Since many real-world datasets contain missing values for various reasons, missing imputation using deep learning is actively studied. However, missing imputation and load forecasting have been considered independently so far. In this article, we provide a deep learning framework that jointly considers missing imputation and load forecasting. We consider a family of autoencoder/long short-term memory (LSTM) combined models for missing-insensitive load forecasting. Specifically, autoencoder (AE), denoising autoencoder (DAE), convolutional autoencoder (CAE), and denoising convolutional autoencoder (DCAE) are considered for extracting features, of which the encoded outputs are fed into the input of LSTM. Our experiments show that the proposed DCAE/LSTM combined model significantly improves forecasting accuracy no matter what missing rate or type (random missing, consecutive block missing) occurs compared to the baseline LSTM.

Details

Language :
English
ISSN :
21693536 and 91304385
Volume :
8
Database :
Directory of Open Access Journals
Journal :
IEEE Access
Publication Type :
Academic Journal
Accession number :
edsdoj.3af8c82c91304385bf1b87ff7ad0640c
Document Type :
article
Full Text :
https://doi.org/10.1109/ACCESS.2020.3036885