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Optimal Design of Microgrids in Autonomous and Grid-Connected Modes Using Particle Swarm Optimization

机译:基于粒子群算法的自治和并网模式下的微电网优化设计

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The dynamic nature of the distribution network challenges the stability and control effectiveness of the microgrids in both grid-connected and autonomous modes. In this paper, linear and nonlinear models of microgrids operating in different modes are presented. Optimal design of LC filter, controller parameters, and damping resistance is carried out in case of grid-connected mode. On the other hand, controller parameters and power sharing coefficients are optimized in case of autonomous mode. The control problem has been formulated as an optimization problem where particle swarm optimization is employed to search for optimal settings of the optimized parameters in each mode. In addition, nonlinear time-domain-based as well as eigenvalue-based objective functions are proposed to minimize the error in the measured power and to enhance the damping characteristics, respectively. Finally, the nonlinear time-domain simulation has been carried out to assess the effectiveness of the proposed controllers under different disturbances and loading conditions. The results show satisfactory performance with efficient damping characteristics of the microgrid considered in this study. Additionally, the effectiveness of the proposed approach for optimizing different parameters and its robustness have been confirmed through the eigenvalue analysis and nonlinear time-domain simulations.
机译:配电网络的动态性质挑战了并网和自主模式下微电网的稳定性和控制有效性。本文提出了在不同模式下运行的微电网的线性和非线性模型。在并网模式下,LC滤波器,控制器参数和阻尼电阻的优化设计。另一方面,在自主模式下,控制器参数和功率分配系数得到了优化。控制问题已被表述为优化问题,其中采用粒子群优化来搜索每种模式下优化参数的最佳设置。此外,提出了基于非线性时域和基于特征值的目标函数,以分别最小化测量功率的误差并增强阻尼特性。最后,进行了非线性时域仿真,以评估所提出的控制器在不同干扰和负载条件下的有效性。结果表明,在这项研究中,微电网具有有效的阻尼特性,具有令人满意的性能。另外,通过特征值分析和非线性时域仿真已经证实了所提出的方法用于优化不同参数的有效性及其鲁棒性。

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