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OPTIMIZATION OF LOCATION AND SIZE VALUE OF DGs IN POWER NETWORK USING BEE’S ALGORITHM

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Abstract (2. Language): 
Distributed generators or DGs are new technology that emerged in last decades. These technologies can place close to final consumer and therefore reduce the power loss in all networks. The most problem in DG placement is that these units must be located in optimum locations. The problem of optimum placement of DG units in network is nonlinear and complicated optimization problem. Thus powerful and robust optimization algorithm is needed to solve this problem. In last year’s numerous nature based optimization algorithm have been proposed. Bee’s algorithm or BA is one of the most new and rapid of these algorithms. This optimization algorithm is based on behavior of honey bee in nature. In the propose method BA is used to find the optimum location and size of DG units in power network. This procedure led to efficient power network with good profile voltage and low real power loss. The proposed system is tested on real standard IEEE system and obtained computer simulation results show that the introduced method has excellent performance and can enhance the power quality in power network. All programming of proposed method is done in MATLAB software.
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