| IEEE Access | |
| Short-Term Electric Load Forecasting With Sparse Coding Methods | |
| Nikolaos Giamarelos1  Myron Papadimitrakis1  Elias N. Zois1  Alex Alexandridis1  Marios Stogiannos1  Nikolaos-Antonios I. Livanos2  | |
| [1] Department of Electrical and Electronic Engineering, Telecommunications, Signal Processing and Intelligent Systems Laboratory, University of West Attica, Aigaleo, Greece;EMTECH SPACE P.C., Athens, Greece; | |
| 关键词: Generative models; hierarchical dictionaries; load forecasting; power grid; sparse representation; | |
| DOI : 10.1109/ACCESS.2021.3098121 | |
| 来源: DOAJ | |
【 摘 要 】
Short-term load forecasting is a key task for planning and stability of the current and future distribution grid, as it can significantly contribute to the management of energy market for ancillary services. In this paper we introduce the beneficial properties of applications of sparse representation and corresponding dictionary learning to the net load forecasting problem on a substation level. In this context, sparse representation theory can provide parsimonial predictive models, which become attractive mainly due to their ability to successfully model the input space in a self-learning manner, by interacting between theory, algorithms, and applications. Several techniques are implemented, incorporating numerous dictionary learning and sparse decomposition algorithms, and a hierarchical structured model is proposed. The concept of sparsity in each case is embedded throughout the utilization of different regularization forms which include the
【 授权许可】
Unknown