Show simple item record

AuthorElmenshawy, Mena S.
AuthorMassoud, Ahmed M.
Available date2024-10-20T10:52:00Z
Publication Date2023-01-01
Publication NameIEEE Access
Identifierhttp://dx.doi.org/10.1109/ACCESS.2023.3315591
CitationElMenshawy, M. S., & Massoud, A. M. (2023). Short-Term Load Forecasting in Active Distribution Networks using Forgetting Factor Adaptive Extended Kalman Filter. IEEE Access.‏
URIhttps://www.scopus.com/inward/record.uri?partnerID=HzOxMe3b&scp=85171570442&origin=inward
URIhttp://hdl.handle.net/10576/60253
AbstractThe intermittent non-dispatchable power produced by Renewable Energy Sources (RESs) in distribution networks caused additional challenges in load forecasting due to the introduced uncertainties. Therefore, high-quality load forecasting is essential for distribution network planning and operation. Most of the work presented in literature focusing on Short-Term Load Forecasting (STLF) has paid little consideration to the intrinsic uncertainty associated with the load dataset. A few research studies focused on developing data filtering algorithm for the load forecasting process using approaches such as Kalman filter, which has good tracking capability in the presence of noise in the data collection process. To avoid the divergence of conventional Kalman filter and improve the system stability, Adaptive Extended Kalman Filter (AEKF) is introduced through incorporating a moving-window method with the Extended Kalman Filter (EKF). Nonetheless, the moving window adds an extra computational burden. In this regard, this paper employs the concept of Forgetting Factor AEKF (FFAEKF) for STLF in distribution networks to avoid the computational burden introduced by the AEKF. The forgetting factor improves the estimation accuracy and increases the system convergence when compared with the AEKF. In this paper, the AEKF and FFAEKF are compared in terms of their performance using Maximum Absolute Error (MaxAE) and Root Mean Square Error (RMSE). Matlab/Simulink platform is used to apply the AEKF and FFAEKF algorithms on the load dataset. Results have demonstrated that the FFAEKF improves the forecasting performance through providing less MaxAE and less RMSE. In which, the FFAEKF MaxAE and RMSE are reduced by two and three times, respectively, compared to the AEKF MaxAE and RMSE.
SponsorThis work was supported in part by the Graduate Student Research Award (GSRA) through the Qatar National Research Fund (QNRF) under Grant GSRA9-L-1-0514-22014G, and in part by the Qatar National Library (Open Access Funding).
Languageen
PublisherInstitute of Electrical and Electronics Engineers Inc.
SubjectAdaptive extended Kalman filter
forgetting factor adaptive extended Kalman filter
maximum absolute error
root mean square error
short-term load forecasting
TitleShort-Term Load Forecasting in Active Distribution Networks Using Forgetting Factor Adaptive Extended Kalman Filter
TypeArticle
Volume Number11
dc.accessType Open Access


Files in this item

Thumbnail

This item appears in the following Collection(s)

Show simple item record