Journal article
Probabilistic load forecasting with a non-crossing sparse-group Lasso-quantile regression deep neural network
Energy (Oxford), Vol.242, p.122955
03/2022
DOI: 10.1016/j.energy.2021.122955
Abstract
In this paper, a non-crossing sparse-group Lasso-quantile regression deep neural network (SGLQRDNN) model is proposed to address electricity load forecasting. Different from the traditional deep learning for point forecasting, the SGLQRDNN model realizes the probability density forecasting of the load. SGLQRDNN modelling integrates two strategies to alleviate the dilemma of quantile crossing and structural complexity. The SGLQRDNN model mitigates the deficiency of quantile crossing by a joint estimation of non-crossing constraints. It also realizes the shrinkage of the network and the selection of critical features with the sparse-group Lasso algorithm. The proposed model is trained and tested using the residential daily electricity consumption data. The experimental results show that SGLQRDNN has advantages in interpretability, sparsity, and performance criteria. Specifically, the monotonicity of its internal quantiles is 4.18%–9.96% higher than that of the unconstrained model. Compared with three sparse regularization networks, SGLQRDNN can shrink 88.47% of the connection weights and 19.32% of neurons. Meanwhile, its performance improvement ranges from 5.76% to 18.28%. Additionally, its training speed is 2.73–7.01 times faster than the model trained on individual quantiles. Finally, two non-parametric tests verify that SGLQRDNN significantly outperforms the comparison models at the 10% level.
•The SGLQRDNN model is developed for deep learning under the framework of QR.•SGLQRDNN mitigates the deficiency of quantile crossing with non-crossing constraints.•SGLQRDNN shrinks the network with the sparse-group Lasso algorithm.•SGLQRDNNhas been applied to probabilistic forecasting for real industrial data.•The superiority of SGLQRDNN is illustrated through extensive experiments.
Details
- Title: Subtitle
- Probabilistic load forecasting with a non-crossing sparse-group Lasso-quantile regression deep neural network
- Creators
- Shixiang Lu - Hefei University of TechnologyQifa Xu - Hefei University of TechnologyCuixia Jiang - Hefei University of TechnologyYezheng Liu - Hefei University of TechnologyAndrew Kusiak - University of Iowa
- Resource Type
- Journal article
- Publication Details
- Energy (Oxford), Vol.242, p.122955
- Publisher
- Elsevier Ltd
- DOI
- 10.1016/j.energy.2021.122955
- ISSN
- 0360-5442
- Grant note
- DOI: 10.13039/501100012165, name: Key Technologies Research and Development Program, award: 202004a05020020; DOI: 10.13039/501100001809, name: National Natural Science Foundation of China, award: 2019LD05, 71 671 056, 91 846 201
- Language
- English
- Date published
- 03/2022
- Academic Unit
- Nursing; Industrial and Systems Engineering
- Record Identifier
- 9984204108402771
Metrics
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