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Short-term Wind Power Forecasting Using Interval A2-C1 Type-2 TSK FLS Method with Extended Kalman Filter Algorithm

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摘要 For short-term wind power forecasting,an interval A2-C1 type-2(IT2)Takagi-Sugeno-Kang(TSK)fuzzy logic system(FLS)method(“A”means antecedent and“C”consequent)based on an extended Kalman filter(EKF)optimization algorithm is proposed.Compared with the type-1(T1)FLS model,the IT2 TSK FLS method can simultaneously model both intra-and inter-individual uncertainty and further optimize the antecedent and consequent parameters using the EKF to improve forecasting performance further.The proposed IT2 A2-C1 FLS method is applied to Mackey-Glass chaotic time series and wind power forecasting instances in a certain region,under the same conditions.It is also compared with the T1 TSK FLS and IT2 TSK FLS methods with back propagation(BP)and particle swarm optimization(PSO)algorithms,as well as IT2 A2-C0 TSK FLS methods with EKF.The experimental results confirm that the proposed IT2 A2-C1 FLS method is superior to the other FLS methods regarding performance,which demonstrates its effectiveness and application potential.
出处 《Chinese Journal of Electrical Engineering》 2025年第3期191-215,共25页 中国电气工程学报(英文)
基金 Supported by the Key Project of Natural Science Foundation of Gansu Province(25JRRA150) the Gansu Provincial Natural Science Foundation(23JRRA876).
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