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مهند عبدالرحمن خليل الحازمي

Assistant Professor

أستاذ مساعد بقسم الهندسة الكهربائية

كلية الهندسة فرع المزاحمية
College of Applied Engineering: S-087
publication
Conference Paper

Multivariate uncertainty characterization for resilience planning in electric power systems

Following substantial advancements in stochastic classes of decision-making optimization problems, scenario-based stochastic optimization, robust\ distributionally robust optimization, and chance-constrained optimization have recently gained an increasing attention. Despite the remarkable developments in probabilistic forecast of uncertainties (e.g., in renewable energies), most approaches are still being employed in a univariate framework which fails to unlock a full understanding on the underlying interdependence among uncertain variables of interest. In order to yield cost-optimal solutions with predefined probabilistic guarantees, conditional and dynamic interdependence in uncertainty forecasts should be accommodated in power systems decision-making. This becomes even more important during the emergencies where high-impact low-probability (HILP) disasters result in remarkable fluctuations in the uncertain variables. In order to model the interdependence correlation structure between different sources of uncertainty in power systems during both normal and emergency operating conditions, this paper aims to bridge the gap between the probabilistic forecasting methods and advanced optimization paradigms; in particular, perdition regions are generated in the form of ellipsoids with probabilistic guarantees. We employ a modified Khachiyan's algorithm to compute the minimum volume enclosing ellipsoids (MVEE). Application results based on two datasets on wind and photovoltaic power are used to verify the efficiency of the proposed framework.

Publisher Name
2020 IEEE/IAS 56th Industrial and Commercial Power Systems Technical Conference (I&CPS)
more of publication
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This paper presents a model predictive control (MPC)-based scheme in power distribution systems focused on protective control of distributed energy resources (DER) assuring performance resiliency…

Published in:
2019 IEEE Power & Energy Society Innovative Smart Grid Technologies Conference (ISGT)