






Vol.1 , No. 2, Publication Date: Jul. 7, 2014, Page: 21-25
[1] | AK M Kamrul Hasan, Institute of Automotive System Engineering (FAST), Karlsruhe Institute of Technology (KIT), Karlsruhe, Germany. |
[2] | Mohd. Azfar Nazim, Fraunhofer Institute for Solar Energy Systems (ISE), Freiburg, Germany. |
[3] | Syed Shaheer Uddin Ahmed, Dept of Renewable Energies, Instituto Superior Technico, Lisbon, Portugal. |
[4] | Md.Saifur Rahman Chowdhury, Dept of Energy Technology (ENTECH), Karlsruhe Institute of Technology (KIT), Germany. |
Renewable Energy Resources (RES) are best practices possible today to stand against increasingly risk of climate changes and global warming of the world and the most important sources of such types of resources of energies can be Wind and Solar energies which are most the efficient relatively. These clean power resources are used as in Distributed Generation (DGs) units technology to be defined as newer sources of power, Since most of the renewable energy sources are intermittent in nature therefore it becomes a challenging task to integrate RES into the power grid infrastructure. In this paper we’ll discuss on work flows of power forecast for renewable energy.
Keywords
Numerical Weather Prediction (NWP), Renewable Energy Resources (RES), Distributed Generation (DGs), Betz Equation, MATLAB
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