Data-driven alternating current optimal power flow: A Lagrange multiplier based approach
- Resource Type
- article
- Authors
- Xingyu Lei; Juan Yu; Habaer Aini; Wencui Wu
- Source
- Energy Reports, Vol 8, Iss , Pp 748-755 (2022)
- Subject
- Alternating current optimal power flow
Data-driven
Lagrange multipliers
Stacked extreme learning machine
Electrical engineering. Electronics. Nuclear engineering
TK1-9971
- Language
- English
- ISSN
- 2352-4847
This paper proposes a data-driven Alternating Current Optimal Power Flow (AC-OPF) method assisted by Lagrange multipliers. Stacked Extreme Learning Machine (SELM) is introduced for AC-OPF learning to avoid the time-consuming training and hyperparameter adjustment process of deep neural networks. Instead of incorporating the prior physical information into the neural networks algorithm, we developed a new neural network structure for the SELM learning based on the Lagrange multipliers of the AC-OPF problem. Case studies of several IEEE benchmark systems demonstrate that the AC-OPF learning performance is improved by introducing additional Lagrange multipliers information, while the proposed method outperforms other alternatives with almost 99% learning accuracy and fast computation.