Uncertainties are the most significant challenges in the smart power system, necessitating the use of precise techniques to deal with them properly. Such problems could be effectively solved using a probabilistic optimization strategy. It is further divided into stochastic, robust, distributionally robust, and chance-constrained optimizations. The topics of probabilistic optimization in smart power systems are covered in this review paper. In order to account for uncertainty in optimization processes, stochastic optimization is essential. Robust optimization is the most advanced approach to optimize a system under uncertainty, in which a deterministic, set-based uncertainty model is used instead of a stochastic one. The computational comple...
This dissertation is dedicated to implementing data-driven nonparametric joint chance constraints (J...
Distributed generation (DG) has been rapidly integrated into microgrids. However, uncertain power ge...
This paper focuses on the energy optimal operation problem of microgrids (MGs) under stochastic envi...
Uncertainties are the most significant challenges in the smart power system, necessitating the use o...
Decisions are often made in an uncertain environment. For example, in power system operations, decis...
This study is motivated by the fact that uncertainties from deepening penetration of renewable energ...
A key subject in the study of smart grids is to accommodate uncertainty in various contexts, includi...
This paper reviews the current techniques used in energy management systems to optimize energy sched...
Today's power systems are large scale systems consisting of multiple generating stations, load zones...
Electric power systems and the companies and customers that interact with them are experiencing incr...
In order to protect the environment and address fossil fuel scarcity, renewable energy is increasing...
In light of a reliable and resilient power system under extreme weather and natural disasters, netwo...
Uncertainty is a major factor in power system operations. In recent years, with the emergence of the...
Power system planning and operation offers multitudinous opportunities for optimization methods. In ...
High levels of clean renewable energy are being integrated into the power systems as a result of rec...
This dissertation is dedicated to implementing data-driven nonparametric joint chance constraints (J...
Distributed generation (DG) has been rapidly integrated into microgrids. However, uncertain power ge...
This paper focuses on the energy optimal operation problem of microgrids (MGs) under stochastic envi...
Uncertainties are the most significant challenges in the smart power system, necessitating the use o...
Decisions are often made in an uncertain environment. For example, in power system operations, decis...
This study is motivated by the fact that uncertainties from deepening penetration of renewable energ...
A key subject in the study of smart grids is to accommodate uncertainty in various contexts, includi...
This paper reviews the current techniques used in energy management systems to optimize energy sched...
Today's power systems are large scale systems consisting of multiple generating stations, load zones...
Electric power systems and the companies and customers that interact with them are experiencing incr...
In order to protect the environment and address fossil fuel scarcity, renewable energy is increasing...
In light of a reliable and resilient power system under extreme weather and natural disasters, netwo...
Uncertainty is a major factor in power system operations. In recent years, with the emergence of the...
Power system planning and operation offers multitudinous opportunities for optimization methods. In ...
High levels of clean renewable energy are being integrated into the power systems as a result of rec...
This dissertation is dedicated to implementing data-driven nonparametric joint chance constraints (J...
Distributed generation (DG) has been rapidly integrated into microgrids. However, uncertain power ge...
This paper focuses on the energy optimal operation problem of microgrids (MGs) under stochastic envi...