1. Optimal Operational Scheduling of Renewable Energy Sources Using Teaching–Learning Based Optimization Algorithm by Virtual Power Plant
- Author
-
Majid Gandomkar, Javad Nikoukar, and Mohammad Javad Kasaei
- Subjects
Engineering ,Wind power ,Optimization algorithm ,Power station ,Renewable Energy, Sustainability and the Environment ,business.industry ,020209 energy ,Mechanical Engineering ,Scheduling (production processes) ,Energy Engineering and Power Technology ,Control engineering ,02 engineering and technology ,010501 environmental sciences ,01 natural sciences ,Industrial engineering ,Energy storage ,Renewable energy ,Virtual power plant ,Fuel Technology ,Geochemistry and Petrology ,0202 electrical engineering, electronic engineering, information engineering ,business ,Teaching learning ,0105 earth and related environmental sciences - Abstract
In recent years, a large number of renewable energy sources (RESs) have been added into modern distribution systems because of their clean and renewable property. Nevertheless, the high penetration of RESs and intermittent nature of some resources such as wind power and photovoltaic (PV) cause the variable generation and uncertainty of power system. In this condition, one idea to solve problems due to the variable output of these resources is to aggregate them together. A collection of distributed generations (DGs) such as wind turbine (WT), PV panel, fuel cell (FC), and any other sources of power, energy storage systems, and controllable loads that are aggregated together and are managed by an energy management system (EMS) are called a virtual power plant (VPP). The objective of the VPP in this paper is to minimize the total operating cost for a 24-h period. To solve the problem, a metaheuristic optimization algorithm, teaching–learning based optimization (TLBO), is proposed to determine optimal management of RESs, storage battery, and load control in a real case study.
- Published
- 2017