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Efficient optimization technique for multiple DG allocation in distribution networks

机译:有效优化技术在分发网络中多DG分配

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In the last few decades, interest in the integration of Distributed Generators (DGs) into distribution networks has been increased due to their benefits such as enhance power system reliability, reduce the power losses and improve the voltage profile. These benefits can be increased by determining the optimal DGs allocation (location and size) into distribution networks. This paper proposes an efficient optimization technique to optimally allocate the multiple DG units in distribution networks. This technique is based on Sine Cosine Algorithm (SCA) and chaos map theory. As any random search-based optimization algorithm, SCA faces some issues such as low convergence rate and trapping in local solutions during the exploration and exploitation phases. This issue can be addressed by developing Chaotic SCA (CSCA). CSCA is mainly based on the iterative chaotic map which used to update the random parameters of SCA instead of using the random probability distribution. The iterative chaotic map is applied for single and multi-objective SCA. The proposed technique is validated using two stranded IEEE radial distribution feeders; 33 and 69-nodes. Comprehensive comparison among the proposed technique, the original SCA, and other competitive optimization techniques are carried out to prove the effectiveness of CSCA. Finally, a complete study is performed to address the impact of the intermittent nature of renewable energy resource on the distribution system. Hence, typical loads and generation (represented in PV power) profiles are applied. The result proves that the CSCA is more efficient to solve the optimal multiple DGs allocation with minimum power loss and high convergence rate. (C) 2019 Elsevier B.V. All rights reserved.
机译:在过去的几十年中,由于增强电力系统可靠性等益处,对分布式发电机(DGS)集成到分销网络的兴趣已经增加,降低功率损耗并改善电压曲线。通过将最佳DGS分配(位置和大小)确定为分发网络,可以提高这些益处。本文提出了一种有效的优化技术,以在分发网络中最佳地分配多个DG单位。该技术基于正弦余弦算法(SCA)和混沌映射理论。作为基于随机搜索的优化算法,SCA面临一些问题,例如在勘探和剥削阶段期间在本地解决方案中捕获的低收敛速度和捕获。通过开发混沌SCA(CSCA)可以解决这个问题。 CSCA主要基于迭代混沌映射,用于更新SCA的随机参数而不是使用随机概率分布。迭代混沌映射用于单个和多目标SCA。使用两个绞合的IEEE径向分配馈线验证所提出的技术; 33和69节点。进行了拟议的技术,原始SCA和其他竞争优化技术的全面比较,以证明CSCA的有效性。最后,进行完整的研究,以解决可再生能源的间歇性对分配系统的影响。因此,应用典型的负载和生成(在PV电源中表示)配置文件。结果证明,CSCA更有效地解决了最佳功率损耗和高收敛速度的最佳多个DGS分配。 (c)2019年Elsevier B.V.保留所有权利。

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