Proper planning of multiple distributed generation sources using heuristic approach

M. AlRashidi, M. F. AlHajri
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引用次数: 4

Abstract

An enhanced particle swarm optimization algorithm (PSO) is presented in this paper to solve the optimal planning of multiple distributed generation sources (DG) in distribution networks. This problem can be divided into two sub-problems: The DG optimal size and location that would minimize the network real power losses. The proposed approach addresses the optimal size and location problems simultaneously by enhanced PSO algorithm that is capable of handling multiple DG planning in a single run. It treats the problem constraints differently by adopting a radial power flow algorithm to satisfy the equality constraints, i.e. power flows in distribution networks, while the inequality constraints are handled by making use of some of the PSO intrinsic features. To demonstrate its robustness and flexibility in accommodating different scenarios, the proposed algorithm was tested on the standard 69-bus power distribution system. Different test cases were considered to validate the proposed approach.
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采用启发式方法对多个分布式发电源进行合理规划
针对配电网中多个分布式发电源的优化规划问题,提出了一种改进的粒子群优化算法(PSO)。该问题可分为两个子问题:DG的最优大小和位置,使网络实际功率损耗最小。该方法通过改进的粒子群算法同时解决了最优规模和位置问题,该算法能够在一次运行中处理多个DG规划。采用径向潮流算法来满足等式约束,即配电网中的潮流,而利用粒子群算法的一些固有特征来处理不等式约束。为了证明该算法在不同场景下的鲁棒性和灵活性,在标准的69总线配电系统上进行了测试。考虑了不同的测试用例来验证所提出的方法。
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