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Multi-Deployment of Dispersed Power Sources Using RBF Neural Network

机译:使用RBF神经网络的多种分散电源部署

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Multi-deployment of dispersed power sources became an important need with the rapid increase of the Distributed generation (DG) technology and smart grid applications. This paper proposes a computational tool to assess the optimal DG size and deployment for more than one unit, taking the minimum losses and voltage profile as objective functions. A technique called radial basis function (RBF) neural network has been utilized for such target. The method is only depending on the training process; so it is simple in terms of algorithm and structure and it has fast computational speed and high accuracy; therefore it is flexible and reliable to be tested in different target scenarios. The proposed method is designed to find the best solution of multi- DG sizing and deployment in 33-bus IEEE distribution system and create the suitable topology of the system in the presence of DG. Some important results for DG deployment and discussion are involved to show the effectiveness of our proposed method.
机译:随着分布式发电(DG)技术和智能电网应用的快速增长,分散部署电源的多用途成为一项重要需求。本文提出了一种计算工具,以最小的损耗和电压曲线为目标函数,可以评估一个以上单元的最佳DG大小和部署。称为径向基函数(RBF)神经网络的技术已用于这种目标。该方法仅取决于培训过程。算法和结构简单,计算速度快,精度高。因此,在不同的目标场景下进行测试是灵活而可靠的。所提出的方法旨在在33总线IEEE配电系统中找到最佳的多DG大小和部署解决方案,并在存在DG的情况下创建合适的系统拓扑。 DG部署和讨论的一些重要结果表明了我们提出的方法的有效性。

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