Calculating the Effect of Dispersion Wind Power Plants in the Electrical Network Reliability

Demand for renewable energy in electric power systems is growing as fast. Reasons, including the desire of countries to increase production capacity of wind power are the great advantages of this method production of electrical energy. Because wind energy is many, renewable and clean. The high penetration of renewable energy can reduce fuel costs, but can affect the electrical system reliability. Using probabilistic methods, and estimates can be combined to achieve high reliability in the electrical system is combined with new energy. In this article, the reliability of power delivery is calculated and reduced network load caused a definite increase in the dispersion of wind power plants has been studied using Monte Carlo simulation method. In this paper, collect data on wind speed of wind sites in Binalood and Manjil areas in Iran have a minute, and over the years have been doing. Simulations based on Monte Carlo method and frequency, and is performed using softwares Matlab and Excel. And reliability indices and algorithms based on the calculated reliability indices LOLE and LOEE are performed.

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