Day-ahead electricity price forecasting using WPT, VMI, LSSVM-based self adaptive fuzzy kernel and modified HBMO algorithm
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Published:2021-08-30
Issue:1
Volume:11
Page:
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ISSN:2045-2322
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Container-title:Scientific Reports
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language:en
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Short-container-title:Sci Rep
Author:
Syah Rahmad,Rezaei Mohammad,Elveny Marischa,Majidi Nezhad Meysam,Ramdan Dadan,Nesaht Mehdi,Davarpanah Afshin
Abstract
AbstractDue to focal liberality in electricity market projection, researchers try to suggest powerful and successful price forecasting algorithms. Since, the accurate information of future makes best way for market participants so as to increases their profit using bidding strategies, here suggests an algorithm for electricity price anticipation. To cover this goal, separate an algorithm into three steps, namely; pre-processing, learning and tuning. The pre-processing part consists of Wavelet Packet Transform (WPT) to analyze price signal to high and low frequency subseries and Variational Mutual Information (VMI) to select valuable input data in order to helps the learning part and decreases the computation burden. Owing to the learning part, a new Least squares support vector machine based self-adaptive fuzzy kernel (LSSVM-SFK) is proposed to extract best map pattern from input data. A new modified HBMO is introduced to optimally set LSSVM-SFK variables such as bias, weight, etc. To improve the performances of HBMO, two modifications are proposed that has high stability in HBMO. Suggested forecasting algorithm is examined on electricity markets that has acceptable efficiency than other models.
Publisher
Springer Science and Business Media LLC
Subject
Multidisciplinary
Reference108 articles.
1. Zhang, D., Liang, Z., Yang, G., Li, Q., Li, L. & Sun, X. A robust forgery detection algorithm for object removal by exemplar-based image inpainting. Mult. Tools Appl. 77(10), 11823–11842 (2018). 2. Song, Y., Zeng, Y., Li, X., Cai, B. & Yang, G. Fast CU size decision and mode decision algorithm for intra prediction in HEVC. Mult. Tools Appl., 76(2), 2001–2017 (2017). 3. Gu, K., Wu, N., Yin, B. & Jia, W. Secure data query framework for cloud and fog computing. IEEE Trans. Net. Service Manag. 17(1), 332–345 (2019). 4. Wei, W., Yongbin, J., Yanhong, L., Ji, L., Xin, W. & Tong, Z. An advanced deep residual dense network (DRDN) approach for image super-resolution. Int. J. Comput. Intell. Syst. 12(2), 1592–1601 (2019). 5. Li, W., Xu, H., Li, H., Yang, Y., Sharma, P.K., Wang, J. & Singh, S. Complexity and algorithms for superposed data uploading problem in networks with smart devices. IEEE Int. Things J. 7(7), 5882–5891 (2019).
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