Flexibility-based generation maintenance scheduling in presence of uncertain wind power plants forecasted by deep learning considering demand response programs portfolio

•A new techno-economic structure for generation maintenance scheduling based upon the flexibility index is presented.•The aim is to reduce cost and satisfy reliability and flexibility criterion by the augmented epsilon constraint method for studied system.•In this study, the optimal portfolio of var...

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Vydáno v:International journal of electrical power & energy systems Ročník 141; s. 108225
Hlavní autoři: Sharifi, Vahid, Abdollahi, Amir, Rashidinejad, Masoud
Médium: Journal Article
Jazyk:angličtina
Vydáno: Elsevier Ltd 01.10.2022
Témata:
ISSN:0142-0615, 1879-3517
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Shrnutí:•A new techno-economic structure for generation maintenance scheduling based upon the flexibility index is presented.•The aim is to reduce cost and satisfy reliability and flexibility criterion by the augmented epsilon constraint method for studied system.•In this study, the optimal portfolio of various demand response programs is implemented as flexibility provision.•The deep learning has been used to deal with the variability and uncertainty related to wind unit generation. The special characteristics of renewable energy resources, such as non-emission and low operating costs, have increased the penetration rate of renewable energy resources in the power system. However, the variability nature of renewable energy resources has led to some challenges in power system studies. Therefore, system flexibility has been taken into account, which plays a key role in dealing with renewable energy resources uncertainty. On the other hand, generation maintenance scheduling is one of the most important and effective programs for short-term studies of the power system. It seems necessary to implement a flexibility-based generation maintenance scheduling in order to achieve more flexible operation as a consequence of providing flexible resources. Here, a novel framework for flexibility-based multi-objective generation maintenance scheduling associated with a portfolio of demand response programs is introduced. Hence, a system flexibility index has been applied in this paper. Moreover, a portfolio of multifarious demand response programs as a negawatt resource has been applied as a provider of flexibility from demand-side point of view. In this paper, direct load control, real-time pricing, and emergency demand response programs are implemented as flexibility providers through comprehensive modelling of DRPs. Herein, proper modeling and forecasting of renewable energy resources production will increase the scheduling accuracy. Hence, the uncertainty of wind power plants is considered by deep learning methodology in Python. Reducing costs such as operation and maintenance costs, leveling the reserve margin and increasing flexibility index are regarded as multifarious objectives of flexibility-based generation maintenance scheduling. Due to the good handling of large-scale, non-convex and non-proportional objective functions, the augmented epsilon constraint method is utilized to evaluate flexibility-based multi-objective generation maintenance scheduling. According to the results, the system flexibility has been improved without increasing costs. Several analyses are carried out on a modified IEEE-RTS 24 bus to trace the capability of the proposed structure.
ISSN:0142-0615
1879-3517
DOI:10.1016/j.ijepes.2022.108225