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Optimal Allocation and Planning of Distributed Power Generation Resources in a Smart Distribution Network Using the Manta Ray Foraging Optimization Algorithm

doi: 10.3390/en14164856
In this study, optimal allocation and planning of power generation resources as distributed generation with scheduling capability (DGSC) is presented in a smart environment with the objective of reducing losses and considering enhancing the voltage profile is performed using the manta ray foraging optimization (MRFO) algorithm. The DGSC refers to resources that can be scheduled and their generation can be determined based on network requirements. The main purpose of this study is to schedule and intelligent distribution of the DGSCs in the smart and conventional distribution network to enhance its operation. First, allocation of the DGSCs is done based on weighted coefficient method and then the scheduling of the DGSCs is implemented in the 69-bus distribution network. In this study, the effect of smart network by providing real load in minimizing daily energy losses is compared with the network includes conventional load (estimated load as three-level load). The simulation results cleared that optimal allocation and planning of the DGSCs can be improved the distribution network operation with reducing the power losses and also enhancing the voltage profile. The obtained results confirmed superiority of the MRFO compared with well-known particle swarm optimization (PSO) in the DGSCs allocation. The results also showed that increasing the number of DGSCs reduces more losses and improves more the network voltage profile. The achieved results demonstrated that the energy loss in smart network is less than the network with conventional load. In other words, any error in forecasting load demand leads to non-optimal operating point and more energy losses.
- University of Sistan and Baluchestan Iran (Islamic Republic of)
- China Automotive Technology and Research Center China (People's Republic of)
- Prince Sattam Bin Abdulaziz University Saudi Arabia
- China Automotive Technology and Research Center China (People's Republic of)
- Vrije Universiteit Brussel Belgium
smart distribution network, Technology, distributed generation with scheduling capability, power generation resources, T, smart distribution network; distributed generation with scheduling capability; power generation resources; manta ray foraging optimization algorithm, manta ray foraging optimization algorithm
smart distribution network, Technology, distributed generation with scheduling capability, power generation resources, T, smart distribution network; distributed generation with scheduling capability; power generation resources; manta ray foraging optimization algorithm, manta ray foraging optimization algorithm
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