Solution of Stochastic Economic Dispatch Problem using Modified PSO Algorithm

The main objective of the Economic Dispatch (ED) problem is to find optimal allocation of output power among the various generators available to serve the system load. It is necessary to incorporate wind and pumped storage plants in classical economic dispatch problem due to the increase in the use of renewable energy sources. The cost of power generation will be considerably reduced due to the renewable energy resources. This paper

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